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p ' < C*p IM|o,p' = Cp , 1 < p < oo, which is valid at least for the smooth domain ft. Taking Wh = RhW, then (Dtp, (f) = (p, -Dup) ,V0fc - (y», V) < CA 2 || v VIIII'VV'II. gh\\2 + v\\
= A(p, w)
— A(p,w-wh)
+
B(p(s),wh)ds Jo
= A(Rhu-u,w)
+
B(p(s),wh)ds Jo
= (Di(Rhu-u),(p)+
B(p(s),wh)ds Jo
< \\RhU-u\\liP\\ip\\oiP'+C
/
H/o^lli^ll^fclli^/ds.
Jo
By t h e boundedness of Rh in W1,p
, | | ^ ^ | | i , P ' < Cp||w||i j P / < CP, we have
\\p(t)\\i,P
+ C [
\\p\\itPds.
Jo
By Gronwall lemma the desired estimate in W1,p follows. T h e derivation of t h e error estimate in Lp is similar to t h e case when p = 2. In addition, t h e following L°°-estimates ||pWI|0,oo + ^ | b ( t ) | | l , o o < C / l r - e ( | | ^ ) l | r , o o +
/ ||li(5)||r>00ds), Jo
€>0
(3.40)
3.3. Ritz—Volterra
Projection
51
VhU
and t h e L p -estimates of t h e derivatives with respect to t can also be derived. Finally a super convergence estimate between V^u and Rh,u will be useful. T h e o r e m 3 . 6 . Assume t h a t the triangulation is quasiuniform. Let a(t, x) be a n arbitrary function and B\ be an arbitrary first-order operator. Assume t h a t B can be expressed as B — a A + B\, then the super convergence estimate \\Vhu(t)
- Rhu(t)\\x
< Chr
< C [\hU(s)h Jo f
\\u(s)\\rds,
+
te
U(*)\\o)ds
J.
(3.41)
= 0 + £, 6 = Vhu-Rhu
G S^ satisfies (3.33).
JO
holds, where £ = R^u — u. P r o o f . From (3.32), Vhu-u Rewriting t h e bilinear form as
B(u, v) = A(u, av) + (u, Bxv), Denoting w — av and w^ — Ih{&v) G S^ B(H, v) = A(£, w-wh)
v G S£.
and using
+ ( £ , B l V ) < CU\U\\w
-wh\\1+
C\\t\\o\Mi
and t h e super approximation estimate for v G 5 ^ ,
Ik - «*ll?.n = E I™ - «"ill?,r < Ch2r~2 £ II^Hlt r
r
11% < C f \\6hds + C / W i l l + U\\o)ds. Jo
Jo
By Gronwall inequality t h e desired estimate follows.
Chapter 4
Semidiscrete and Fully Discrete Schemes In this chapter t h e following parabolic integrodifferential equation (
ft (uuv)
+ A(u,v)=
B(u(s),v)ds
+ (f,v),
v G #0\
/ Jo j u = 0 on dQ x J, ^ ^(0) = UQ in ft,
(4.1)
where J = (0, T ] , the coefficients of A depend on t G J and the coefficients of 5 depend on £ and s, satisfying 0 < 5 < t < T , will be discussed.
4.1
Semidiscretization
Consider the semidiscrete approximation Uh(t) G Si? satisfying
{
(u>ht,v) +A(uh,v)
= / B(uh(s),v)ds
+ (/»,
veS?,
^
^
where the initial value UQ^ G S^ is an approximation of i^o, which can take IhUo, RhUo or PhUo, b u t in each case it should have the following accuracy \\uoh - u0\\i < Chr-l\\u0\\r,
1 = 0,1.
(4.3)
Assume t h a t {(fj}ih is t h e basis of the finite element space 5 ^ . T h e semidis crete finite element approximation Uh(t) G S^ c a n be represented in the fol53
54
Chapter
4. Semidiscrete
and Fully Discrete
Schemes
lowing form Nh
h
where {ctj(t)}1
satisfies
Y^i^i^jWjit)
+ Aiifu^ajit)
at(0)=7i,
2= 1,2,.-.,^.
-
/ B{ipi, ipj)aj{s)ds] =
{f{t),(pi),
This is a first-order system of ordinary differential equations and here ji is the coefficient of (fj(x) in the representation of UQ^, i.e. UQ^ = X^?=i ljfj(x)' Due to t h e mass m a t r i x [(?i, y>j)\ is a Cramer matrix which is positive-definite and invertible, this system is uniquely solvable in Cl(J). T h e o r e m 4 . 1 . Let u(t) and Uh(t) be the solutions of (4.1) and (4.2) respectively, then we have the following error estimate K ( t ) ~ " t o l l < C/lr(||wo||r +
/
\\ut{8)\\rds),
t G J.
JO
P r o o f . According to Lin, Thomee and Wahlbin [97], choose t h e Ritz— Volterra projection Vhu(i) € 5 ^ as a comparison function and express the error as e = uh - u = (uh - Vhu) 4- (VHU - u) = 0 + p. Noting t h a t u(t) = u(0) -f J0 ut(s)ds
and Theorem 3.2, it is known t h a t
l | p ( * ) l l i < C f c r■- I ( H | | u*()*H)r| + | r + /[* t°
\\u(s)\\rd8) ds) \\u(8)\\
\\ut\\rds),
(4.4) Z = 0, 1.
/o Jo
Since 6 G Si? satisfies {0uv)+A(0,v)=
[ B(9(s),v)ds-(Puv), Jo 6(0) = UQ — RhUQ in £2,
veS?,
where ||0(O)|| < ||«0h - " 0 | | + I N - RhM
< C7l r ||tlo|| P .
(4.5)
4.1.
Semidiscretization
55
Setting v = 6 in (4.5), it becomes 1
SDtWef + upwiKcJ^Phdswmh
+ Wpt
2J
<^\\8\\l + cJ*\\e(s)\\lds + \\Pt\\\\ei /o and after eliminating the first term on the right-hand side and integrating in t, / V l l ? < f a < C F ( 0 ) | | a + C7 / ' f\\e{T)\\\drds Jo Jo Jo Applying the Gronwall inequality, it leads to P(t)f+
H0(*)ii2 + f \\n\ds < c\\m\\2+c
+ C f \\pt\\\\0\\ds. Jo
f \\Pt\\\\e\\ds
Jo
Jo
(4.6)
f\\pt\\ds) Jo
s
Letting ||0(t)||=sup||0(a)||,
0
s
and using (4.6), we have
l|0(t)|| < \\e(i)\\
[ \\Ut\\rd8), Jo
and Theorem 4.1 follows from (4.4). Note that if the Ritz-projection Rhu(t) G S% is used as a comparison function and let e = (uh — RHU) + (RHU — u) = 6 + p, then the error equation is of another form (0t, v) + A(0, v)=
[ B(6(s) + p(s), v)ds - (pu v), v € S?. Jo In this case the argument is more complicated and it was given by Thomee and Zhang [156]. If the initial value was chosen to be uoh = Rh^o 6 S^, i.e. 6(0) = 0, then by (4.6) one can derive ( / ||0||?d*)*
\\ut\\rds.
56
Chapter 4. Semidiscrete and Fully Discrete Schemes
This is a super convergence estimate for the gradient y # in L 2 . In the following we shall further improve the estimate in L°°( J; L2) and get a L°°-error estimate of 9 in two-dimensional case. Lemma 4.1. Assume that UQ^ — RHUQ, then
( Ch^ifwutWl^ds)1'2, \\uh{t)-Vhu(t)\\Hi{n)<{ r
Ch (
^
Jo
J° ||«t||?dfl) 1/2 .
Proof. Let v = 6t in (4.5), then
||0tf + ±DtA(9,9) = ±At(9,8) + DtJ B(9(s),9(t))ds -B(6(t),6{t))-
f Jo
Bt(9(s),9(t))ds-(pu9t)
< Dt j * B(9(s), 8(t))ds + \\\9tf +C\\9\\\+C
Jo
+ l\\Pt\\2
f\\9\\\ds.
Using the argument used in the proof of (4.6), it leads to \\9{t)\\\
\\Pt\\2ds,
and, by Gronwall lemma,
\\9(t)\\l
Thus the lemma follows from (4.4). Theorem 4.2. There is \\v(uh(t)-u(t))\\
+ / \\ut\\rds + ([ Jo
Wutf^ds)1/2).
Jo
Proof. From the estimate of \jp in Chapter 3 and Lemma 4.1, the theo rem follows immediately. Lemma 4.2. If 0(0) = 0, then ||flt||
Jo
||u„||r
4.1. Semidiscretization
57
Proof. Differentiating (4.5) with respect to £,
(OtUv)+A(euv)+At(e,v)=B(0(t),v)+
f Bt(6(s),v)ds-(ptuv),
v e S*,
Jo
taking v = 0U noting 6{t) = 0(0) + / 6t(s)ds and 0(0) = 0, we have Jo
\Dt\\6tf
+ Hl*t||? < c||«t||? + C(e)||0||? + C j f ||0||?da + llpttllll^H
By the same argument used in the proof of Theorem 4.1, it leads to l|et||
(4.7)
JO
Letting t=0 in (4.5), (0t(O),t;) = -(MO),tf),
«€Srh,
and using the estimate of pt in Chapter 3, we have ||0t(O)|| < C\\Pt(0)\\ < Chr(\\u0\\r + |K(0)|| r ). From the estimate of ptt and (4.7), the lemma follows. Making use of Lemmas 4.1 and 4.2, the L p -error estimate can be derived as follows. T h e o r e m 4.3 (Lin, Thomee and Wahlbin, 1991) Assume that u(t) and uh(t) are the solutions of (4.1) and (4.2) respectively, and the initial value UQh = Rhuo, then for cases where d = 1, 2 < p < o o and d = 2, 2 < p < oo, there is \ut(t)-u(t)\\Lp{n)
\\ut\\r,Pds + ( / Jo
Jo
||ut||J!ds)2 )•
In addition, for dimension d — 3 or 4, under the assumption A^, p G (1, oo), we have \\Uh(t)
- u{t)\\Lp{n)
< Cphr{\\u0\\r,p
+ |k(0)||r,p +
/ (||tit||r,p + Jo
\\Utt\\r)ds).
58
Chapter
4. Semidiscrete
and Fully Discrete
Schemes
P r o o f . Denote t h e error e = 6 + p , here p = VhU — u has been estimated in C h a p t e r 3. If d = 1, 2 < p < oo or d = 2, 2 < p < oo, by t h e following Sobolev imbedding inequality l|0(t)llLp(n)
^ CP^\\
+ IHI + / ' H*Ho,P
(4-8)
For this purpose construct w G # o ( ^ ) satisfying Au> — (^ in Q, and thus by (4.5), (6,ip) = A(9,w)
=
A(6,Rhw)
= -(6t+pt,Rhw)+
/ B(0(s),.R ft t<;)ds. Jo
By t h e assumption j4p, 1 < p < oo, a n d t h e inverse property, one can estimate B(9(a),
Rhw) = B(0(a), flhu; - «;) + (0(a), B*w)
\\Rhw\\ < C\\Rhwh,q < CHIi,,,
- <\ +K q
2
d
(the latter inequality is t h e boundedness of Ritz projection operator R^ in W1'*, 1 < q < oo) and 1
IMk
1
1
for _ < - + - , p
q
t h e n for \ + ^ > p- (i.e. 1 < d < 4), we have
HiihHI < c\\w\\2iP, < cy\\0,P., and
d
4.2. Full Discretization
59
Therefore (4.8) follows and then the proof is complete by applying Gronwall inequality in (4.8) and the estimate ||#t|| in Lemma 4.2. Remark. By using the imbedding estimate ||0|U-(n)
for 2
and the superconvergence estimate ||0||i = 0(h ), l|0||L~(n) < Ch2\ ]nn\i
for
d = 2, one can obtain d = 2.
This is a simpler and more efficient way to get the maximum norm estimate. For more refined estimates in L°°(fi), see Chapters 8 and 9.
4.2
Full Discretization
We now turn to fully discrete schemes. Let k be the step-size in time, tn = nk, n = 0,1, • • •, N = T/k. Let fn = / ( t n ) , fn~^2 = / ( t n _ 1 / 2 ) and An{u, w) = A(tn;u,w). Denote by Un G 5^ the approximate solution and by dtUn = n n l (U — U ~ )/k the backward difference quotient of Un. Two classes of fully discrete schemes are studied below. Backward Euler Scheme (BES): find Un G S? such that f (BtUn,v) + An{Un, v) = QMB{u, v)) + ( f \ v), \ U° = u0h in fi, ra= 1,2,3, ■■-,
v G# ,
u [
Q, }
*
where the left rectangular rule n-l
fny(s)ds
Qi(v) = Z > t e ) « Jo
3=0
Unn is not included in Q™. is used to discretize thee Volterra intergral term and U n C r a n k - N i c o l s o n Scheme (CNS): find U € S? such that I (dtUn,v) + An-7(Un-v,v)=Qt *(B(U,v)) + (fn-?,v), \ U° = u0h in fi, n = l , 2 , 3 , - ••, where Un
x 2
l — (Un + Un
x
(4.10) )/2 and the following trapezoidal rule is used:
n 2
~
QTHV)
h
= ky£(y(ti) + v(tJ+i))/2 + 7;y(tn-i) z
3=0 t
= o2/(*o) + k Y^y(tj) 1
v e S?,
7=1
~ / ^o
2
2/(«)rf5.
60
Chapter 4. Semidiscrete and Fully Discrete Schemes
Un is included in both An~2 and Q£~*. In addition, the second order difference scheme of second order accuracy will be discussed in Chapters 8 and 13. In order to study the error estimates of the fully discrete approximate solution, one needs some auxiliary tools. We begin with the error estimates of quadrature rules. The (Left) Rectangular Rule: n-l 3=0
Noting that the error in (tj-i,tj) f3
y{s)ds - kyfa-!)
= fJ
Jtj—i
is expressed by j
y'(T)dTds=
Jtj _ i Jtj—\
f'
(tj - T)y'(r)dT,
Jtj—i
hence the quadrature error is of first order accuracy, Qi(y) = \Qi(y) - f " y(s)ds\ < k f Jo Jo
\y'(r)\ds.
(4.11)
The Trapezoidal Rule: n-l
Ql *(y) = *X](y(M + y(*i+i))/2 + | y ( * n - i ) « / " J
Z
j=0
\{s)ds.
°
In an interval (—/,/), there is j
y{s)ds = (y(s)s - y'(s)(s2
- Z2)/2)|<_, + \ j \ s
2
-
l2)y"(s)ds
= W) + y(-0) + \ J J** - i2)y"(s)ds. Hence ftj+1 k 1 / y(s)ds - - ( y f o + i ) + y(tj)) = -
ftj+l (s - tj)(s -
and the error of trapezoidal rule is of second order accuracy,
tj+1)yn{s)ds,
4.2. Full Discretization
61
i y(s)ds\ fnf'tnh~v{s)ds\
n 92 "*(y) = Q2^(y)<£""*(») = I!<£"*(»)-
< \ j
Jo h. Jo \y"{s)\ds + ^j
< \ j
\y"{s)\ds + ^j
1.2
/"tn-i
rtri_\
^\y'{s)\ds
~*\V\8)\d8
f {\y'(s)\ + \y"(s)\)ds. \y"(s)\)ds.
(4.12)
Jo Jo
'
T h e Simpson's Rule: — 7 n 11
pt-i /"£2
B Q3 (l/) = -»»5E (>»f( *o2)i ) + 44^(%+i) l / ( ^ + l ) ++» (w(*«+2))« *2i+2))« / QT(y)
""»(*)<**• y(fi)^-
Denote the error in a typical interval (-&, fc) by £(3/) and let P2(t) be the quadratic interpolant of y(t) such that e = y(t) - i^(t) = 0 at t = -fc,0,fc, then e(y) = f / c(y)
V(s)ds - |(y(fc) + 4y(0) + y(-fc)) V(s)da
e(t)dt= -k
/ e(i)dt+ / JO
e(i)dt e(t)dt.
J—k
Using integration by parts and choosing the appropriate constants, we have €{y) €{y)
= =
[" » £ _ 2 + 1 fc2)dt + / ° e " (t)( f! + lkt f" ee / /((tt )) (( ^ _ 2 fct f° e„{t){tl + lH Jo 2 3f c t + 16k2)dt + J_ 2 3 k 1
t
,
4
3
2 2
+
+
lk2)dt 6lk2)dt
4x (4), N
1 /[ \ ^3*4 ~ 3 + 6 f c2i 2 4^-k)y f K) l (t)dt ^ = 72 3 i K) = 72 / ^ * ~ +6fc -k)y (t)dt + _L 8fe3 + 6 6fc 2t2 __ fc4k)2/^4) (4){t)(t)dt^ fc2t2 + JL // °° (3 (3tt44 ++ gA;t 3+ Hence the quadrature error is of fourth order accuracy, n 4 ql 932n{y) (y) = = \Qf(y) I0§"(») -- f/ "" y{s)ds\ »(*)d«l < < ^^ // ' "" |y< |y ( 4 )>(*)|^. (^)l^-
(4.13)
L e m m a 4.3 (discrete Gronwall inequality). Assume that w n > 0, / „ > 0 and that for n = 0,1,2, • • •, yn > 0 satisfies Vn < fn +
^UjVj, 7=0 7=0
62
Chapter 4. Semidiscrete and Fully Discrete Schemes
then for any TV > 0, N-l
N-l
VN < IN + ^
exp( ^2
n=0
Vj)ujnfn
j=n+l
and N-l VN
< exp( V Ui) max fn. *■—' i=0
0
Proof. Let n n
CTn
z — e~
n
UJ
^2 jyj^
where
z~X = 0,
<jn = ^ ^ j ,
i=0
.7=0
then n-l zn
_ zn-l
= e-°nu)nyn
+ ( 1 _ g^n) £
^
j=0 n-l
< e~aTiu;nyn - Un^Ljjyj
< e~Gllujnfn,
j=o
and N
N
j-0
n=0
By assumptions of the lemma, N-l VN < fN
N-l U
+ J2 j=0
M
N+
= f
N 1
e^-'z ~
< f
N +
Y , n=0
e^-'-^LJnfn,
thus the first inequality of the lemma follows. In order to get the second conclusion, one needs only to apply a simple inequality successively, N-l
N-2
1 + ] P U)n e x p ( > i V - l - <7n) = 1 + &N-1 + J ^ Un e^P(aN-l n=0 n=0 N-2 1
< e ^ " (1 + ] T un exp(°N-2 ~ (Tn)) < n=0
< eaN~l.
~ &n)
63
4.2. Full Discretization
We now return to analyze the error of fully discrete schemes and take W(t) = Vhu(t) G S^, the Ritz—Volterra projection of u(t), as a comparison function. Rewrite
un - un = (un - wn) + {wn - un) = en + Pn, where pn — Wn — un has the following estimates IIP^II* < Chr-i(\\un\\r+
fn\\ur\\ds), Jo
1 = 0,1,
and
^ E ii^nn= £ 11 / tow ^ Chr / Kiir^n=l
n=l
Jtn-i
JO
What remains is to estimate 6n = Un — Wn. First consider the backward Euler scheme (BES). Theorem 4.4. For BES, there is \\Un - U(tn)\\
< Chr(\\uo\\r
+ Ck f\\\u\\2 Jo
+
/ Jo
Tl
\\ut\\rds)
+ \\ut\\2 + \\utt\\)ds.
Proof. At t = tn, (4.1) is of the form f « , v) + An(un,
v) = j " Bn(u(s), v)ds + (/», v),
[ u(0) =
ii.
UQ
in
v € S?,
Subtracting it from (4.9) and using the projection W(t), 9n = u^ — un satisfies f (dt6n,v) + An(9n,v) = QUB(e,v)) + (rn,v), \ 6° = u0h-Rhu0 in fi, n = 1,2,3,-••,
v e SP\
, K
where rn = r™ + r j 4- r j and r" = —dtpn was estimated as before, while r j = u? - a t u n , Obviously we have
and
r j = V fcSJW - / " BJJW(a)da =
M\\=\\*?-dtunw< r \\uu\\ds. Jtn-l
. '
64
Chapter 4. Semidiscrete and Fully Discrete Schemes
Recalling \\BhW\\ < C\\AhW\\ < C\\W\\2, by the left rectangular rule, there is K l l < ck f\\\W\\2 Jo
+ \\Wth)ds
< Ck f'\\\u\\2 Jo
+ \\ut\\2)ds.
So we have N
= kJ2 \K\\
r
\\ut\\rds + Ck [ T\\\u\\2 + K | | 2 + \\utt\\)ds
= 0(hr + k). By the energy argument, it can be shown that N
ll*"ll<W°ll+*£ini)-
(4.15)
ra=l
For this purpose, taking v = 0n in (4.14) and noting that (5t9n,9n)
= (\\9n\\2 -
(9n-\9n))/k
= 77r[2||0"ll2 - 2{en-\en) + w^-H* - ll*?"-1!!2] 2k n 2
we haveldt\\e
\\ + hdte\\2 + An{Bn,en) = Y^kBn(e^en) + (rn,en), n 2
2
n
n
n
nj=o -l
and then3*H0 H 4- -lld + 0ll 4- A (9 . Q ) =
n-l 3=0
Eliminating the first term on the right-hand side and summing over n, it becomes
ii^ii2+A:^iini2
n=l j=0
n=l
4.2. Full Discretization
65
The second term on the right-hand side can be cancelled by Gronwall inequal ity, and then (4.15) can be derived by N
N
n=l
n=l
\\eN\\2 < c\\e°\\2 + ckJ2 \\rn\\\\0n\\ < c(\\e°\\ + \\r c*n\\)£ KID suP \\n\. n
Finally, the desired result follows from (4.15) and the estimate of pn. Remark. The error Qn consists of: (i) ||0°|| + \\dtpn\\ = 0(hr), and (ii) \\dtun-u?\\ + the quadrature error ||
n
\\ut\\rds)
Jo
+Ck2 [ T\\\u\\2 + \\uth + 1 M b + \\uttt\\)ds. Jo Proof. Let t = tn_1/2 in (4.1), then (ur1/2,v) = / ^ ^ Bn^2{u{s\ Jo
An-1/2(un-1/2,v)
+
v)ds + ( r " 1 / 2 , v),
v€
S?.
IT - u(tn) = (Un - Wn) + {Wn - u(tn)) = 0n±
pn ,
Write here pn can be estimated as before. Following the standard argument (see also the monograph for purely parabolic case by V. Thomee [150]), 9n satisfies ( (5t0n,v) + An-*(0n-i,v) = Qn(Bn~H^v)) I { 6° = u0h - Rhu0 in ft,
+ (rn,v),
where rn = J2j=i r^ •> r? =
-dtpn,
rj = - ( 5 t t i n - u r 1 / 2 ) ,
v £ S*, (4.16)
66
Chapter 4. Semidiscrete and Fully Discrete Schemes
and r j = Qr1/2(Br1/2W)
- ftTl~l/2 Bl~l/2W{s)ds
=
q^1/2{BhW).
Jo
By the midpoint formula and the trapezoidal rule, we have *IKII = II /
W
< Ck2 [ " \\utuWd8,
Ms) - ut(tn_1/2))ds\\
Iks II
\\uuhds,
Jtn-i
IK I = \\qr1/2(BhW)\\ < Ck2 AlMla + ||«t||2 + ||«„||2)da Jo
and then r/l
=
fcV||rn||
7L
\\ut\\rds + Ck2
Jo
n=l
[ (||Ti||2 + ||tit||2 + ||Titt||2 + | h t « | | ) d s .
Jo
Now setting v = Q71'1!2 = (6n + <9n~1)/2 in (4.16) and noting that (Stfl n ,fl n - 1 / 2 ) = ^ ( | | f l n | | 2 - | | » | | 2 ) , there is ||^||2_|| (9 n-l||2
+
2 / c z y || ( 9 n-l/2||2
n-1
2
< cife ^ii^+^iiiii^-^iii + CAii^iiii^-1/2!! n-l
< fci/H^-1/2!!? + c&2 ] T ||0*+1/2||? + Cifcii^ini^-1/2!! Eliminating, summing and using the Gronwall inequality, we get
ll^ll2 < c\\eY + ckJ2 IkKini + ll^1/2ll), n=l
and then
jv
nfl ii
n=l
The theorem follows from the estimates of 9°, rn and pn.
4.3. The Lumped
4.3
Mass
67
Method
The Lumped Mass Method
We recall t h a t in Section 4.1 t h e semidiscrete finite element approximation Uh{t) € 5£ c a n ^ e expressed in t h e form Nh
where {(f}^h is t h e basis of S% and the coefficient a(t) = {aii(£), • • •, a.Nh(t)} satisfies t h e system of first-order ordinary integrodifferential equations Ma'(t)
4- Aa(t)
- / Ba(s)ds
= F,
a(0) = 7.
Jo In general, the mass matrix M = [rriij] is not diagonal and hence the solution of this system is a cumbersome task. T h e lumped mass method is to replace the mass m a t r i x M by a diagonal matrix M. T h e diagonal elements of M are Nh
ma = ^jTmij,
i = 1,2, ■■■,iV/l,
j=i
i.e. group all t h e mass on each row into its diagonal element. Hence it leads to a new system of integro differential equations, ~Ma'(t) + Aa(t)
= [ Ba(s)ds
+ F,
a(0) = 7.
(4.17)
Jo Now it is easy to find the inverse of M. T h e algorithm can be mathematically explained as follows: A simple quadrature rule is applied to the mass matrix, namely, on each triangular element r with vertices P r j , j — 1,2,3. Consider the following q u a d r a t u r e formula with second order accuracy, 3 1 f Or(/) = d r | X ; / ( P T | i ) « f{x)dx, 6
3=1
^
and t h e corresponding approximate inner product in S%,
(¥>,V0ft= Z ) Q T ( ^ ) . T€Jh
L e m m a 4 . 4 . If
(4.18)
Chapter 4. Semidiscrete and Fully Discrete Schemes
68
The lumped mass method denned by (4.17) is equivalent to the following version:
{
(uht,v)h+A(uh,v)=
B(uh{s),v)ds
+ (f1v),
ueSj
^ ^
UH(0) = uoh in ft. Then 0 = uh — Vhu G S% satisfies
I (Ouv)h + A(0,v)= \
0(0) =
f B(0(a),v)d8-(pt,v)
+ eh(Vhu,v),
v € S?
uh(0)-Vhu(0).
(4.20) The proof is similar to that in Section 4.1. The lumped mass method for purely parabolic case was proposed by P. Raviart (1973). Chen and Thomee [25] (1985) proved the following error esti mate of optimal order
IK - «|| + h\\ v K - «)|| < ch2(\\uoh + lk|| 2 + {j ikll!
RHUQ)
|| v M O - Rhu(t))\\ < Ch2(\\ut(t)h + ( jf*(IKIIl + IMI?)^) 1/2 ). Further, when / = 0 and all angles of the triangles r € Jh are acute, then for the semidiscrete scheme there exists the following maximum norm principle \Wh{t)\\Loo^
<
\\uoh\\Loo(ny
The fully discrete schemes are also discussed. These facts show that the lumped mass method has better numerical stability and some monotonity. The weakly nonlinear parabolic case was also discussed by Nie and Thomee [123], and the maximum norm estimates were studied by Thomee, Xu and Zhang [158]. For the lumped mass method of PIDE, Y.P. Lin and T. Zhang [98] studied the semidiscrete and fully discrete schemes for weakly nonlinear case and ob tained similar error estimates. Recently, Pani and Peterson [127] exhaustively discussed linear cases with smooth and nonsmooth data by the energy method. For example, when / = 0 and the initial value UQ € H2 f] JF7Q(Q), they proved that, for the semidiscrete solution Uh(t) £ S^-, there are \\uh{t) - «(«)!!,• < C 7 i 2 - ^ - ( 1 + ^ 2 | k | | 2 ,
3 = 0,1,
4.3. The Lumped Mass Method
69
and \\uh{t) - u(t)\\LOO{Q) < Cetf-H-^uoh,
e > 0,
n
and, for the fully discrete solution U G Slf, \\Un - U^Wi
< C(h2-H-1'2
+ k)t-^2\\u0\\2,
j = 0, 1,
and \\Un - u(t„)IU~ <
C£(h2-H^+C\lnk\kt^2)\\u0h.
Chapter 5
Saving of Storage In this chapter the full discretization of PIDE will be further discussed, but we shall focus on the time discretization of the Volterra integral term by various quadrature rules. Consider an abstract integrodifferential equation (IDE) in a Hilbert space H, while PIDE in both space and time will be discussed in Chapter 6 later. The operator method will be a principal one, though the energy method will also be used. Consider the time discretization of the following problem, iH + Au = I B(t, s)u(s)ds + / = Bu{t) + /,
t e J = (0, T],
,g ^
u(0) = i£0, where A is a self-adjoint positive-definite but not necessarily bounded operator with dense domain D(A), and B is a time-dependent operator on H with domain D(B) C D(A). Assume always that B and all D\B (derivatives with respect to s) are dominated by A, i.e. \\A-\DiB)g\\
< C\\g\\.
Here and later all the constants C are uniformly bounded with respect to h in the case of the space-discretized equation.
5.1
Economic Backward Euler Scheme (EBES)
Consider the following economic backward Euler scheme (EBES), UU
~^n
+ AUn = Qn(BU) + / n , 71
n>0,
U° = ti 0 ,
(5.2)
Chapter 5. Saving of Storage
72
where Qn(y) is a quadrature rule with weights cjnj as follows: 71-1
n
Q (y) = YJUJnjy{tj) « /
rtn
y(s)ds.
J
3=0
°
Following Sloan and Thomee [147] (1986), we assume that the quadrature weights Ljnj are dominated in the sense that there exists ujj such that n
\vnj\ < Vj
f°
r
0 < j < n,
with ^2^j
< C
for
tn £ J.
^ < 3 < ™> ~ ^,
tn G J,
(5.3)
If the dominated weights u>n also satisfy n
] P l^rn+lj ~ Wm,j\ < ^h
(5.4)
771=1
then one says that the quadrature rule has persistent dominated quadrature weights. The simplest quadrature rule is the (left) rectangular rule, with unj — A:, for 0 < j < n — 1, which is obviously persistent dominated, and is consistent with the accuracy 0{k) of the EBES. A drawback of this rule is that, unless B(t, s) has a special structure, to compute Un one must use and thus store all previous values of C/-7. Hence a vast amount of storages and computations will be needed. More precisely, during the evaluation of UN all the solutions computed must be stored. This causes a major obstacle in practical calcu lations. In order to reduce the storage significantly, a new idea proposed by Sloan and Thomee [147] is to employ the quadrature formulas with higher or der truncation error, so that a larger stepsize, or fewer quadrature points, may be used without losing the order of accuracy of the scheme. Their results are generalized by N.Y. Zhang [168, 169] later. The Modified Trapezoidal Rule. For the basic time stepsize k, let tn = nk and m\ = [A;-2], where [x] denotes the largest integer less than or equal to #, and set k\ = m\k to be the larger stepsize and £' = jk\. Apply the trapezoidal rule with stepsize k\ in [0, t[] and the rectangular rule with stepsize k to the remaining part [£{,£n]j i.e. introduce the following modified trapezoidal rule:
« n (y) = y l > ( * ; + i ) + * E 3=0
j=lm\
y(ti) = Q2(y) + Qi(y)~
/'"»(«)&»• (5.5) °
5.1. Economic Backward Euler Scheme (EBES)
73
An upper bound of the storage for this rule is given by Smax = T/k\ -\-mi = 0 ( / c - 1 / 2 ) . Let ujj = u'j + u'!, where J- = k and u'j = fci if j = 0(mod mi) or ujj = 0 otherwise, then it can be shown that \unj \
n—1
W
T
Y1 J^
I
and
Y^ui-Ylki^tf3^CT-
3=0
3=0
j=l
Thus the Uj are the dominating weights. Lemma 5.1. Let Qn(y) be the modified trapezoidal rule (5.5) and qn{y) be the corresponding quadrature error, then \\qn(y)\\
■ Jo JO
(\\y'ss(s)\\ ( (\\y' +
\\y':s(s)\\)ds.
Proof. By the definition and error expressions in Chapter 4, Qn(y) = (Q5(y) - / ' y{s)da) + (Q?(y) - / " y(s)ds)
= [lM*)y"(s)ds+
[nMs)y'(s)ds
Jo
Jt'
and thus t'
\\qn{y)\\
t
\\y"{s)\\ds + Ck / " \\y'{s)\\ds Jt\
< Ck■,f\\\y"{s)\\ Jo
+ \\y'{s)\\)ds.
The Modified Simpson's Quadrature Rule can be similarly considered so that the number of quadrature points can be further reduced to 0(k~1^4). As an example one can first use Simpson's rule on subintervals of stepsize /cx = 0(/c 1 / 4 ), the number of such subintervals in [0,£n] is 0(Ar _1 / 4 ), the length of the remaining subintervals are less than 0(A: 1 / 4 ). On the remainder, the trapezoidal rule with stepsizes first fc2 = 0(k1/2) and then k% = 0(fc3//4) are used. Now the remaining subintervals are of length 0(/c 3 / 4 ) < A:3 and here we use the rectangular rule with stepsize k. The error of the combined rule is then of O(k) and the storage requirement is reduced to 0 ( / c - 1 / 4 ) , but higher regularity is required, i.e.
\\qn(y)\\
i=i
Chapter 5. Saving of Storage
74
We now turn to the stability of EBES. Theorem 5.1 (Sloan and Thomee, 1986). Assume that B is dominated by A and the modified trapezoidal rule (5.5) is used to EBES, then n
\\u^
for
tn
3=0
Proof. (5.2) can be written in the form Un = EkU71-1 + kEk{Qn(BU)
+ /n),
U° =
Wo,
(5.6)
where Ek = (I + kA)~ exists as a bounded operator on H because of the positive definiteness of A. In fact, since the eigenvalues of A are bounded away from 0, there is \\Ek\\ < 1. It is convenient to write Ek = r{kA), where r(A) = (1 + A) - is a rational function. Note that Ek is an approximation of the semigroup E(k). Using repeatedly the iterative scheme (5.6) with initial value U°, there are n
un = E%U° + kYJK~j~\Qj(Bu)
+ fj)
and
fcllE^"1^
lit/1 < II^H +
{BU)\\ + kJT\\f3\l
3=1
3=1
Exchange the order of summation in the second term, it becomes
rh = jri%-i-iQi(BU) = ^ r
i _ 1
E^BJUi
^iEnk-^A{A-'BW%
=E E and hence
n—1
n
k\\rh\\
WK^'^MWW'I
j=i+l
By a spectral argument it can be shown that
E ii^rj'_1^n < SUP E ^r-^x < s u P - ^ - = i.
(5-7)
5.2. Economic Crank—Nicolson Scheme (ECNS)
75
Thus from (5.17),
3=1
j=l
The theorem thus follows by the discrete Gronwall inequality. From the above discussion on stability one can immediately derive the following theorem on error estimate. Theorem 5.2 (Sloan and Theomee, 1986). Assume that B,Bt and Bu are dominated by A, and \\utt\\> \\Bu\\, ||Bi6t||, and ||-Bn£t|| are integrable on J. If in the EBES (5.2) the modified trapezoidal rule (5.5) with kx = Oik1/2) is used, then \\Un - u(tn)\\ < C(T)k for tn < T. Proof. Let en = Un — u(tn). following error equation:
k
From (5.2) and (5.1) it is easy to derive the
+ Aen = Qn(Be) + rn,
n > 1,
e° = U° - u0,
where rn is the truncation error,
and it can be shown as before that N
t*
kJ2\\rn\\
n=l
°
Now the desired estimate follows from Theorem 5.1. If the solution u is more smooth, one can directly adopt the following ECNS.
5.2
Economic Crank—Nicolson Scheme (ECNS)
We now turn to the economic Crank—Nicolson scheme (ECNS):
(
jjn _ jjn-1
k U°=u0,
jjn + A
,
jjn-1
2 n=l,2,3,...
=Q"{BU)
+ r-*,
(5.8)
Chapter 5. Saving of Storage
76 where
QU(y) = yZ^njVitj)
« /
y(s)ds,
which is of second order accuracy. The Modified Simpson's Rule proposed by Sloan and Thomee is stated in the following. Taking rrii = [A;-1/2] and the time stepsize k\ = m\k = Oft1/2), t'j = jki. Let I = l(n) be the largest integer such that t'2l = 2lk\ < tn — nk, and split the interval of integration into [0, £2Z] U [£2Z,£n_i] U [£n-i»*n-i/2]- We shall use Simpson's rule with stepsize ki in [0,£2Z], the trapezoidal rule with stepsize k in [£2Z,£n_i] and a single rectangu lar rule with stepsize k/2 in [£ n _i, £71-1/2] > respectively. The amount of storages is N = T/ki + 2fci/k + 1 = 0(/c~ 1 / 2 ). The modified Simpson's rule is now of the form
Qn(y) = | b t t ) + M%) + M%) + • • + vtei)] + 2 \yfai) + 2^(*2ifci + *) + - + s/(*»-i)] + 2 ^ ( ^ - 1 ) /**2*
« / Jo
/**n-l
y(s)ds -f / Jt'2l
/•«„_£
2/(s)d5 4- / Jtn-i
/■«„_£
j/(s)ds = / Jo
y{s)ds.
(5.9) If I = 0 or n = 2lmi + 1 there would be no contribution from Simpson's rule or the trapezoidal rule respectively, and the first or second square bracket will thus disappear. According to the error expressions of Simpson's, trapezoidal and rectan gular rules in Chapter 4, we have
qn(y) = (Qsiv) - f"y(s)ds) + (gj(») - / " " y(a)da) Jo
Jf„ n U
HQiiv)-
f ~ \{s)ds) Jtn-i
= f 2'Ms)y{4\s)ds JO
+ fn Jt'2l
1
f"~i/2\pi(s)y'(s)ds,
^2(s)y"(s)ds+ Jt„_!
and thus, by the imbedding estimate \y'(t)\ < C / 0 (\y'(s)\ + \y"(s)\)ds, \\qn(y)\\ < Ck\ [ " \yW(s)\ds + Ck2 [ " " \y"(s)\ds + Ck / ' " " * \y'{s)\ds JO
Jt',
■/*„-!
5.2. Economic
Crank— Nicolson Scheme ft'
< C{k\ + k\kx + fc2) /
77
(ECNS)
4
V
= 0(fc 2 ).
\yU)(8)\ds
Hence t h e consistency of E C N S is ensured. Rewrite equation (5.8) in the following form Un = EkU71'1
+ kGk{Qn(BU)
+ /"-*),
(5.10)
where Ek = (I + kA)-1^
- ^kA)
Gk = {I + kA-1)
=
=
r(kA),
g{kA),
and Gk = - i ( £ f c - J)i4" with notations r(A) = ( l - A / 2 ) / ( l + A/2),
and
5 (A)
= 1/(1 + - A ) .
It is easy to see t h a t \\Ek\\ < 1, ||Gfc|| < 1, b u t t h e current E% no longer has the smooth property as the one in E B E S . There is an interesting difference between t h e current one and t h a t in E B E S : because r(A) takes negative values for A < 2, the sum of r°(A) becomes an alternative series for large A. In addition, r(A) —> — 1 as A —► + o o , and therefore t h e estimates obtained from replacing LUJS by their upper bounds are no longer useful. For example,
is unbounded for A > 2. But the essence of the m a t t e r being t h a t the summa tion of r J (A) involves the substantial cancellation when A is larger. For this purpose Sloan and Themee have proposed the "persistence" property (5.4) of q u a d r a t u r e rule (which says, essentially, t h a t within each of the two ranges of n, t h e coefficients cunj for fixed j are independent of n). N.Y. Zhang [168] has further improved t h e arguments so t h a t they are also valid when B is an arbitrary time-dependent operator. T h e o r e m 5 . 3 (Sloan and Thomee). Assume t h a t B and Bt are dominated by A, then t h e E C N S (5.8) with the modified Simpson's rule (5.9) yields t h e following stable estimate n
II^II^CCTKII^II+fc^H^-ill) for tn
78
Chapter 5. Saving of Storage Proof. Iterating (5.9) with the initial value U° we have n
jjn
=
E nn o
+
j j k^2E^ Gk{Q {BU)
fj~i)
+
and hence ||C/n|| < ||tf°|| + k\\ f^ErJGkQi(BU)\\+kJ2
ll/ j -*ll-
(5-11)
What remains is to estimate the second term. Applying the equality kGk = — {Ek — I)A~X and summing by parts,
F(U) = kJ2E%-jGkQl(BU) = -J2(K+1~J ~ K'nA-'Q^BU) 3=1
3=1
n
= ~^2Ek~3^_1(Qj+1
- Qj)(BU) - E^A~lQ1{BU) + A~1Qn{BU)
3=1
= F\ + F% + -F3. By the stability of £"£, since B is dominated by A and the quadrature rule has the dominated weights, we obtain immediately IIjy < \\u10A-lB(t1/2M)U»\\
< Ca,0||£/0||
and 11*311 = II £ A- 1 a; n i B(t n _ i l t i )^'ll < c £ W j - | | ^ | | . j=0
,7=0
To estimate i*i, split it into three terms as follows:
j= l
2=0
z=0
n-1
3= 1
- ] T E^A-1 3=1 n—1
(f>,- + 1 ,< - ^ ) 5 ( t i + i , ti)U*) i=0 j—1
-7YJEnk-iA-\Y,UJ^B^+hM) 3=1 i=0
~ ^(*i-i.*i))^') = A + h + h-
5.2. Economic Crank—Nicolson Scheme (ECNS)
79
Similar to the estimation of F2, one can derive the following bounds
||/i||
and
l|/3|| = l l E ^ - M - 1 ' ^ ^ /ti+* Btfatjdrirw j=l
1=0
j=l
7
*i-i
i=0
Changing the order of summation and using the assumption that the quadra ture rule has the persistent dominated weights, we also have n—l n—2
11*211 = II £ i=0
£
EZ-lfaw-w^A-iB^um
j=i+l
n—l
n—2
n—l
< c £ ( £ k-+M-^l)ll^ll
i=0
These estimates lead to n-l
||F 1 ||<||/ 1 +J 2 + / 3 ||
Finally the desired stability estimate follows from (5.11) by the discrete Gronwall inequality. The error estimate for ECNS with the modified Simpson's rule can be derived from Theorem 5.3 as follows. Theorem 5.4 (Sloan and Thomee). Let u and Un be the solutions of (5.1) and (5.8) with the modified Simpson's rule (5.9) respectively. Assume that B, Bt and D\B, 2 = 1,2,3,4, are dominated by A. Then for 0 < tn < T,
||t^-ti(t n )ll
[tnJ2\\Di(Bu)\\ds)-
J
°
j=2
n
Proof. Let u = u(tn). From (5.8) and (5.1) at t — £ n _i/2, the error en = Un — un satisfies the following equation + AeU
+
f
= Qn(Be) + r n ,
n > 0,
e° = 0,
Chapter 5. Saving of Storage
80 where rn is the truncation error, ,n
n
r = (Mtn-1/2)
~
U
oin—^ >
' ^ ^ ' )
~
qn{Bu)
-
Since kfZ\\rn\\
5.3
Additive Schemes
Another way of saving storage was suggested by Y.Q. Huang [84]. Let KBu = / Jo
K(t,s)Bu(s)ds,
where the operator B is independent of t and s, and the kernel K(t,s) smooth enough. If
is
m
tf(M)
= $>;(*)^(s),
(5.12)
then K is called a degenerate kernel. In this case the Additive Backward Euler Scheme (ABES) is of the form dtUn + AUn = £ [ U° = U0,
4>j(tn)Qi(^BU)
+ fn,
(5.13)
n=l,2,3,---,
where the quadrature rule satisfies n-l
Qi(y) = kJ2y(tj) = Qr\y) + M*n-i) ~ / "y(s)ds J
i=0
<>
I Q? = o. The Additive Crank—Nicolson Scheme (ACNS) is of the form m n
n
WtU + AU ~i [ U° = U0,
=^
Mtn-^QWjBU)
n=l,2,3,---,
+ /»"*,
(5.14)
5.3. Additive
Schemes
81
where the trapezoidal rule is of the following form
<
Q2 (y) = -^y(o) + k J2 y(u) = Qr\v) + *y(*n-i)« / " _ i y(s)ds, l i=o
Jo
[ QUy) = ~y{0). Note that in the above two schemes the quadrature rule has an additive property. This property determines the advantages of the algorithms as fol lows. To compute the solution Un one only needs m + 2 levels of storage, namely two levels to store Un~~x and Un , and m levels to store the sum Q^i^jBU), j = 1,2, • • •,m. In order to solve t / n + 1 , one only needs to add a new term kifjj(tn)BUn to the cell where Qn(ipjBU) is stored. If K(t, s) is a smooth function in t and s, 0 < s < t < T, it can be approximated by the piecewise interpolant of degree m— 1, 771— 1
Km(t,s)
= ] T K^t'^P^s),
0<s
3=0
where t'- — jL/(m — 1). When K(t, s) is sufficiently smooth (in particular, if it is analytic) and I Z ^ i f (£, s)\ < M for all m > 2, then the remainder satisfies jm
\rm\ = \Km-i(t,s)
—M. ml One can choose the integer m large enough such that jm
—M ml
= 0(ka),
- K(t, s)\ <
a = 1 (for ABES) or 2 (for ACNS).
As an example, one can choose m = 0(|lnA:|), because m! « v 2 m ( m / e ) m . But, in general, K(t, s) would not be so smooth. For example, if \D™K(t, s)\ < MinO<s
a - l o r 2,
Chapter 5. Saving of Storage
82 is added to the remainder, and then *El|rJ||
7
||£u||
°
The following error estimates are obtained by Y.Q. Huang [84](1994). Theorem 5.5. Assume that A~1B is bounded in H and that ||w«||, ||£^|| and \\But\\ are integrable in [0,T], then for ABES (5.13), \\Un-u(tn)\\
tn
Theorem 5.6. Assume that A~1B is bounded in H and that ||wm||> \\Bu\\ and \\Butt\\ are integrable in [0,T*], then for ACNS (5.14), \\Un - u(tn)|| < C ( 7 » A ; 2 ,
£n
From these results one can see that the regularity requirements on the solution are much weaker in comparison with the ecomomic schemes where ||2?Mtt|| (f° r EBES) and ||£i&tttt|| (f° r ECNS) are also required to be integrable in[0,T]. The differences between the economic schemes and the additive schemes are stated as follows: Firstly, the integral / KBuds instead of the individual U3 is stored, Jo hence the required storage can be reduced in several ways provided that K(t,s) is smooth. Secondly, instead of quadrature rules with higher order, lower order quadra ture rules matching the accuracy of the scheme are employed, hence extra regularities of the solution are not required. The Huang's idea was used by Meclean, Thomee and Wahlbin [119] to discuss the following evolution equation with positive memory ut+
Jo
K{t-s)Au(s)ds
= f(t),
u(Q) = u0,
where A is a self-adjoint positive-definite linear operator in a Hilbert space H, and the kernel K is positive-definite. In particular, the weak singularity of K(t) at t = 0 can be admitted, for example, K(t) — t~a, 0 < a < 1, will be studied in Chapter 13. In addition to the two algorithms mentioned above, when the kernel is of convolution type, there are also other two remarkable algorithms for saving
5.3. Additive
Schemes
83
storage and computation, i.e. the convolution quadrature techniques (see Lubich [107,108]) and the fast inverse Laplace transform (see Y. Yan, Fast inverse Laplace transform for some time-dependent problems with memory, preprint, Dept. of Math., University of Kentucky, Lexington, 1995).
Chapter 6
Cases with Nonsmooth Initial Values Consider the following homogeneous PIDE, (l
( ut+Au=
B(t,s)u(s)ds
= Bu(t)
in
fixJ,
J=(0,**]
(6>1)
u = o on an x j , [ u(0) =
2
u0£L {ty,
where A is a symmetric positive-definite elliptic operator of second order with coefficients independent of £, and B is an arbitrary partial differential operator of order (3 < 2, and the initial value u0 € L2(Q) is nonsmooth. Results about the semidiscrete and fully discrete approximations exhibited here were presented by Thomee and Zhang [156,157] .
6.1
Regularities of the Solution
First recall that in Chapter 2 it was proved that the solution for the homoge neous parabolic differential equation (2.10) with the nonsmooth initial value UQ G L2(Q) has the following estimates of regularity \\DtAjE(t)u0\\
< Ct-^WuoW
for
ij
> 0, t > 0 ,
(6.2)
where u = E(t)uo is the solution of (2.10) and E(t) is the analytical semigroup generated by A. These results can be generalized to the PIDE (6.1), but the 85
86
Chapter 6. Cases with Nonsmooth Initial Values
index j , which measures the differentiability with respect to x, will be greatly limited. By using £"(£), (6.1) can be written as an equivalent form u(t) = E(t)u0 + / E(ts)Bu(s)ds Jo /o = E(t)uo + E * Bu(t) = E(t)u0 + Gu(t).
(6.3)
Now w = Gu(t) = u — E(t)uo satisfies wt + Aw = Bu = Bw + BE(t)u0,
w(0) = 0,
(6.4)
and by Duhamel principle, (6.4) is equivalent to the following Volterra integral equation w{t) = E* (Bw + BE(t)u0)
= Gw + F(t),
F = E* BEu0,
(6.5)
where G — E * B is a Volterra integral operator on C(H2) (see Lemma 2.4) and \\AGg(t)\\
[ \\Ag(s)\\ds for Jo Lemma 6.1. For UQ G L2(Q) there are
geL\j;H2).
(6.6)
\\BEu0\\
(6.7)
and \\AE*BEuo\\
(6.8)
1
Proof. Using E = —A~ DtE and integration by parts we have BE(t)u0=
/ Jo
B(t,s)(-A~1DsE(s))u0ds
= -B(t1s)A~1E(s)u0\t0+
5 s (^5)A~ 1 £ , (5)w 0 cZ5
/
= -B(t,t)A-1E(t)uo-B(t,0)A~1uo-\-
/
J B s (t,s)A"
1
E(5)w 0 ^.
Since B and i? s are dominated by A, (6.7) holds. To show (6.8), similarly one can write AE*BEu0
= / AE(t-s) Jo
/ Jo
B{s)r)E{r)uQdTds
6.1. Regularities of the Solution
87
= BE(t)u0
l
- / E(tJo
s)B(s,s)E(s)u0ds
_
t
E(t - s)BtE(s)u0ds
o
= n + r 2 -f- r 3 .
By (6.7) ri is bounded as desired and similarly so is BtE(s)uo As for r 2 , using the smoothness property (6.2) of E(t), that rt/2
ft
{t - s)-1\\A-1B(s,s)E{s)u0\\ds
IN| < C /
^ C /
\\AE(s)u0\\ds Jt/2
JO
rt/2
and hence r%.
rt
(t-s)-1\\u0\\ds
+ C / s^WuoWds^ C\\u0\\. t/2 Jo Jt/2 The proof of Lemma 6.1 is complete. Theorem 6 . 1 . Assume that B(t,s) and all its derivatives with respect to t and s are dominated by A, then (6.1) has a unique solution u G C( J; L2) P| C°°(J]H2) satisfying \\D\Aju(t)\\
< Ct^-i\\uQ||
for
i > 0, j = 0,1, t G J,
and for u>(£) = Gn, there is \\D\Ajw(t)\\
< C^-^Hwoll
for
i > 0, j = 0,1, z + j > 1.
(6.9)
Proof. By (6.2) and u = E(t)u0 + w, the first conclusion follows. It remains to show (6.9), which means that w(t) has a weaker singularity at t — 0 than E(t)uo has. Start from the case i+j = 1. From w = E*B(w + E(t)uo) — Gw -f- F(t) and (6.6), we have \\Aw(t)\\ < \\AGw\\ + P F | | < C /
| | ^ ( S ) | | ^ + CHiioll,
Jo
and by Gronwall Lemma, \\Aw{t)\\ < C\\u0l
(6.10)
i.e. (6.9) holds for i = 0, j = 1. Note, in particular, that ||5u(t)|| = \\B(E(t)uo+ w(t))\\ < C\\u0\\. From (6.4) we have ||iyt|| < \\Aw\\ + \\Bu\\ < C\\u0\\, and therefore (6.9) for i + j = 1 is proved. We shall now carry out the proof of (6.9) by induction for i + j = n > 1 and assume that the results are valid for m < n. Begin with the case i — ra,
88
Chapter
6. Cases with Nonsmooth
Initial
Values
,7 = 1. In order to estimate D™Aw(t) = D™AE * Bu we shall first prove the following L e m m a 6 . 2 . For g appropriately smooth and n > 0, with C = C n , we have tn+1\\D?AE*g(t)\\
+ C
fs^g^+'Hs^ds. J°
P r o o f . Since rt/2 /»t/z
E * g(t) =
rt
E(t-
s)g(s)ds
+ / E(t Jt/2
E(t-
s)g(s)ds
+ / Jo
J0 rt/2
s)g(s)ds
rt/2
= Jo
E(s)g(t
by straightforward manipulation, using AE(t) coefficients C n j ,
- s)ds = Pg(t) +
= —Et(t),
n
D?APg(t)
Rg(t),
we have, with some
ft/2
= Y^CnjE^(t/2)g^-^(t/2)
Here, using t h e smoothness of E(t), tn+1\\EW(t/2)gln-»(t/2)\\
-
/
E^^(t
-
s)g(s)ds.
there are, for the first term,
< Ctn+1^\\g^'^(t/2)\\
< Ctsup(S^'||p(^)(5)||) s
and for t h e second t e r m , rt/2 tn+l||
/
^ + l ) ( t _ s ) p ( s ) ( i s | | < C t SUP ||^(5) ||. s
JO
In addition, there are rt/2
ARg{t) and
=
/ Jo
rt/2
-Es{s)g{t-s)ds
= -E(t/2)g(t/2)+g(t)-
/ Jo
E(s)g'(t-s)ds
6.1. Regularities of the Solution
89
The first two terms on the right-hand side are similarly estimated, while the last term satisfies t n + l | | ^ ( n + l ) ( t ) | | = t „+l||
j
E{s)g(n+l){t
_
^
JO
(t-8)n+1\\gln+V(t-8)\\d8
Thus the proof of the lemma is complete. Now return to the proof of (6.9) for i = m, j = 1. As a result of Lemma 6.2, recalling w = E * Bu, we have m
~ t \\AD?w(t)\\
1 r* + C- / ^ p ^ W * ) ) ! ! * t Jv (6.11) f ~ . r and B[j)g(i) = / B^j\t,s)g(s)ds, it can be Jo
m
Setting Blj\t,s)
= D3tB(t,s)
shown that i-i
\\D{(Bu(t))\\ < CJ2 \\AuW(t)\\ + \\B^u(t)\\
for 0 < j < m + 1 , t G J. (6.12)
i=0
In fact, since DtBu(t)
= B(t,t)u(t)
+ B^u(t), hence
£>^ U (t) = i p r 1 ^ , *)«(«))+i?r 1 (s t (1) U (t)) = £r>j(B t ( i - 1 - i ) (t ) tMt)) + Bt0)«(*) 2=0
= E E ( j ) ^-,^-1-*)(*>t)A-1(A«<'>(t)) +B^u(t). i=0 1=0 ^
/
From our assumption, the estimate (6.12) is obtained. Using the induction assumption, (6.12) and an analogue of (6.7) imply that 3-1
tj\\D3tBu(t)\\
< Ctj ^ i=0
\\AuW{t)\\+tj\\B{tj)u{t)\\
< C\\u0\\ for j < m, (6.13)
Chapter 6. Cases with Nonsmooth Initial Values
90 and similarly
tm+1\\D™+1Bu(t)\\
+Ctm+1\\AD™u{t)\\
< C||uo||
sm\\ADrw(8)\\ds.
Jo
The desired estimate for AD™w follows by Gronwall lemma. The correspond ing estimate for D^^w is now derived from wt = —Aw -f Bu and (6.13), and then the proof of the theorem is complete. The second aim in this section is to discuss the optimal regularity of the solution u(i) with respect to x. For the purely parabolic case (i.e. B = f = 0, see (2.14) in Chapter 2), there is \E(t)uo\p+q
for
u0eHq,
p>0,q>0.
(6.14)
In the case of homogeneous PIDE (6.1), we know, by Theorem 6.1, that this estimate holds for p < 2 (i.e. for j = 0 , l ) . Thomee and Zhang [156] (1989) proved the following sharp regularity results for j3 < 2. T h e o r e m 6.2. Assume that the initial value UQ € L2(Q), then (6.1) has a unique solution u{t) e C{J; H4~P f| H2) and \Ht)\\x
< C£- A / 2 ||uo||
for
A < 4 - /?, t G J,
here the index A = 4 — (3 is optimal. To prove the theorem one needs a series of auxiliary lemmas. To begin with, recall the expression u = E(t)u0 + w, where w = Gu satisfies a Volterra integral equation w = Gw + F, (6.15) with G = E*B
and
F = GEu0 = E * BEu0. 2
It will be shown that for UQ 6 L (Q) this Volterra integral equation has a unique solution w(t) G C(J; H4~p f| H2) and that |K0I|4-/3
for
tel.
(6.16)
In view of the well-known estimate (6.14) for E(t)uo, Theorem 6.2 will follow. Note, in particular, that the term w(t) does not have the singular behavior of E(t)uQ at t = 0.
6.1. Regularities of the Solution
91
First note the following equalities
Dt(E*f)=
[ E'(t-s)f(s)ds
+ f(t)
Jo
and f E'(t-s)f(s)ds = Jo Using the inverse operator T = and integration by parts, there
[ E(t-s)f'(s)-f(t)+E(t)f(0). Jo A'1, E(t - s) = -TDtE(t - s) = TDsE(t - s) is an important Thomee—Zhang formula:
/ E(t - s)f(s)ds Jo
s)E(t - s)f(s) - TE(t - s)(f(s)s)'}ds
= \t f[(tJo
+
Tf(t).
(6.17) Lemma 6.3. For I = p + q € [0,4 - /?], p > 0, q > 0, and f(t),tf'(t) e Hi(fl), then [\t-s)-^2\f(s)\qds Jo
WEtfm^C \\E * f(t)\\t
if
0
(6.18)
< Ct-1
[\t - sf-^dfis)], + \sf(s)\q)ds Jo +C||/(t)||i- 2 if Z > 2 , 0 < p < 4 .
(6.19)
Proof. (6.18) directly follows from (6.14). (6.19) can be obtained from (6.17), (6.14) and the regularity of A " 1 / (cf. Chapter 2). Lemma 6.4. The operator G = E * B is bounded in C(J; H2), with \Gg(t)\2
[ \g(s)\2ds Jo
for
geC(J-H
2
Furthermore, for g G C(1\H2) there are Gg{t) G C(J;H4) Gg(t) G C(J\ H3 0 H2) for /3 = 1, and \\Gg{t)\\i-p
for
). for (3 = 0 and
t G 7, £ < 2.
Proof. Note that ||#|| 2 < C\\Ag\\ < C ^ f o r g G H2. The first conclusion is a result of (6.19) where / is replaced by Bg and taking I = p = 2, # = 0, namely \Gg(t)\2 < Ct-1
[ (\Bg\0 + \sB'sg\0)ds + C\Bg\o Jo
< Csup(|B 5 |o + \sB'sg\o) < C [ \\g\\0 < C [ \g\2ds. s
Chapter 6. Cases with Nonsmooth Initial Values
92
This also shows the second conclusion for (5 = 2. For the case /3 = 0, the operator B is simply a multiplication by a scalar function, and Bg € i? 2 , we have, by (6.19) with p = q = 2, that \Gg(t)\4 < Ct-1
[ (\Bg\2 + \sB's\2)ds + C\\Bg\\2 Jo
< Csup(\Bg\2
+ \sB'sg\2) + C\\Bg\\2 < C /
\g\2da.
JO
s
For the case (5 = 1 (note that Bg ^ 0 on 0ft), by (6.19) with p = 3, q = 0, there is IIGfllls < C-i- 1 A t Jo < Ct'1
S)-
1/2
( | S 5 | o + | S S ^ | o ) ^ + CIIBflH,
f (t- s)-1'2 JO
[' \\ghdrds + C\g\2 < Csup \g(a)\2, Jo
s
and the lemma is proved. We now consider the term F = E * BEu0 in (6.15), which cannot be estimated directly from Lemma 6.4. L e m m a 6.5. If u0 € L2{Q), then / = BEu0 £ C(J; H2"^). In particular, / G C( J; H2) for (5 = 0. Furthermore, there are H/Wlln-zs + l l t / ' W ^ - z J ^ q i i i o l l
(6.20)
ll/(*)ll + l | « / ' ( t ) l l < ^ 1 ^ / 2 | l « o | | .
(6.21)
and
Proof. Using E(t) = —TDtE(t) fit) = -B(t,t)TE(t)u0
and integration by parts we have + B{t,0)Tuo
+
BsTEuo.
Hence, by the boundedness of the operator T : 1? —» H2, it leads to II/WH2-/3 < C7sup||TS(a)tio|| 2 < C\\u0\\. S
When (3 = 0 and (3 = 1, directly, there is ||/(i)|| < \\BEuoW < C f Jo
\\E(s)uo\\0ds
< C [ s-P^WuoWds < C ^ - ^ H u o l l . Jo
6.1. Regularities of the Solution
93
For the case 0 = 0, B(t, s) is a multiplication by a scalar function and hence BE(t)u0 G H2 for t e l . Since Dtf = B(t,t)E(t)uo -f BtEuo, we also have t||A/H2-/3 < Ct(\\E(t)uo\\2 + | | A ^ 0 | | 2 - / 3 ) < C | M I and t | | A / | | < Ct(p(*)«o||/J + \\BtEu0\\) <
Ct'-^Wuol
By these estimates, the theorem is complete. Lemma 6.6. For u0 G L2(Q) there are F(t) = £* * JB£U 0 G C(J; # 4 _ / 3 ) for /? = 0 and 0 = 2, and F(t) G C(J; if 3 f| # 2 ) for /? = 1. Furthermore ||F(t)|| 4 -/3
for
tel,
0<2.
Proof. For 0 = 0 and 0 = 2, / - £ £ u 0 G C(J;H2~P), Lemmas 6.3 and 6.5, that \\F(t)\U-f> < Ct-1
f\\f(a)\2-p Jo
+ \8f'{8)\2-P)da
+ C\\f(t)h-P
we have by
< C||«o||.
In the case /5 = 1 it can be obtained similarly, by Lemmas 6.3 (with p = 3 and q = 0) and 6.4, that ||F(t)|| 3 < Ct'1
f\t Jo
- s ) - 1 / 2 ( | | / ( s ) | | + \\sf'(s)\\)ds + C\\f(t)\\i < C\\u0\\.
These complete the proof of the lemma. Proof of Theorem 6.2. Consider the Volterra integral equation w = F -h Gw. Since by Lemma 6.4, the operator G is bounded in C(J; H2) and by Lemma 6.6, F G C(J;H2). By a standard argument for Volterra integral equation, it can be concluded that this equation has a unique solution w G C(J]H2) and \w(t)\2
By Lemmas 6.5 and 6.6, we can get the regularity estimate (6.16) for w, i.e. IH0IU-/3 < \\F\\4-p + HGHI4-/3 < K | | + Csup \w(s)\2 < C\\uo\\. s
Now Theorem 6.2 follows from u = E(t)v + w(t) and the estimate of E(t)uo. The following results will be useful in studying the error estimate for semidiscrete schemes.
Chapter 6. Cases with Nonsmooth Initial Values
94
Theorem 6.3. Let u(t) be the solution of (6.1) with UQ G L2(Vt), then ||BM(t)||2_/3 + ||5ttt(*)|| 2 -/3
for
tel,
||5ti(t)|| + \\Btu{t)\\
for
teJ.
and Proof. Since Bu = BEu0 + Bw, the bound for Bu follows easily from Lemma 6.5 and (6.16). Btu can be estimated similarly. This completes the proof. Thomee and Zhang gave an example to show that the result of Theorem 6.2 is sharp in the sense that, for the general operator B of order (3 < 2, regularity with order higher than H4~@ cannot be attained for UQ G L2(Tt). The problem that whether D^~^u(t) can be further differentiated with respect to t is still open. For example, as a special case, there is the unproved estimate: ||DJTx(t)||4-/3 < C t - ' - ^ - ^ H t i o l l
6.2
for some
i > 0.
Error Estimates for Semidiscretization
We begin with the purely parabolic case (i.e. B — 0 in (6.1)) and its semidiscrete approximation u^it) G S^ satisfying {uh,t,v)+A{uh,v)
= 0,
v€S£,
uh(o) = u0heL2(n).
,R99^ [0 ZZ)
'
First recall the following important result (see Thomee [150]). Theorem 6.4. Let u be the solution of (6.1) with B = 0 and uo G L2(Q). Let uh{t) G S^ be the solution of (6.22) with u0h = Phu0 G S£. Then \\uh(t) - u(t)\\ < Chrt-^2\\u0\\
for
t G J.
Proof. Using the solution operators T = A"1 and Th — (Aft) -1 , (6.1) with B — 0 and (6.22) can be written in the forms Tut + u = 0 and
Thuhyt +uh = 0.
Obviously the error e = u^ — u satisfies Thet + e = -p,
6.2. Error Estimates for Semidiscretization
95
where p — (Th — T)ut = (Th — T)Au = Rhu — u and Th is positive semidefinite in L2(Q), then e) + \\e\\2 = -(p, e) < ±\\p\\* + i||e|| 2 .
\Dt(The,
After integration in t it becomes [ \\e\\2ds<(The(0),e(0)) Jo
(The(t),e(t))+
+ / Jo
\\pfds.
Note that The(0) = 0 when uoh = PhU0. In fact, for w G L 2 (fJ), Thw € 5^, there is {The(0),w) = (e(p),THw) = 0. Then it gives the following estimate:
f \\efds < f \\p\\2ds. Jo
(6.23)
Jo
Next, from the equality (Theuet)
+ ^Dt\\e\\2 =
-(P)et),
we have Dt\\e\\2 < -2(p,et)
= -2Dt(p,e)
+ 2(pt,e),
or by multiplying t, A(i||e|| 2 ) < -2Dt(t(p,e))
+ 2t(pt, e) + \\ef + 2(p, e).
After integration with respect to £, we have t||e|| 2 < 2t|H|||e|| + A | | e | | 2 + 2||p||||e||+2«||p t ||||e||)da. Jo By (6.23) we can further get
IMI2 < C(\\pf + ± j T ||p||2 + s2\\pt\\2)ds,
(6.24)
or for any e > 0, ||e«||2 < j f
s2\\pt\\2ds + C£(\\p(t)\\2 + \ £
\\p\\2ds)
96
Chapter 6. Cases with Nonsmooth Initial Values
and therefore \\e{t)\\<esup(s\\pt(s)\\)+C£Sup\\p(s)\\. S
(6.25)
S
By the approximation property of Ritz projection, \\p(t)\\ = \\Rhu - u\\ < Cfc||u(i)||i <
Cht-^Wuol
and by definition of norm in if 1 , we have
f\\p{t)\\2ds
Jo
Jo
f\\u\\\ Y,XMs),fj)2ds
/ Jo
j=1
ft
°o
< Ch2 / Jo
VA^e-^wo,^)2^ i=i
oo
OO
< CT^A^o,^)2 /
-2A7s,
3= oo
Similarly, there is / s2||/>t||2d* < Ch2 f s2\\ut\\\ds < Ch2 I s2\\u\\2ds Jo Jo Jo OO
2 s2-2A e~27^sds
(uo^A'M■ J
3=1
°
< C / i 2 ^ ( u o , ^ ) 2 = C^||n0||2. Thus by (6.24) a preliminary estimate is obtained, Wem^Cht-^Wuol
(6.26)
The theorem will be proved below by an iterative argument. Denoting by Eh(t) the solution operator in (6.22), i.e. Uh(t) = Eh(t)uoh — E ^ ^ P ^ o , then e(t) = uh(t)-u{i)
= Fh{t)u0
and
Fh(t) = Eh{t)Ph -
E(t).
6.2. Error Estimates for Semidiscretization
97
Our aim is to prove \\Fh(t)uo\\
(6.27)
2
In view of the boundedness of Fh(t) in L (Q,), without loss of generality, one can suppose ht~xl2 < 1. We are going to prove the following equality Fh(t) = Fh(t/2)E(t/2)
+ E(t/2)Fh(t/2)
Fh(t/2)2.
+
In fact, by definition and property of semigroup, the right-hand side is (Eh(t/2)Ph
- E(t/2))E(t/2)
+(Eh(t/2)Ph 2
= Eh{t/2) Ph
-
+ E(t/2)(Eh(t/2)Ph
-
E(t/2))
2
E{t/2))
- E{t/2f
= Eh{t)Ph - E(t) =
Fh(t).
Note that both Fh(t/2) and E(t/2) are self-adjoint, then E{t/2)Fh{t/2) is adjoint to Fh,{t/2)E(t/2), and they have the same norm in L2(Cl). This gives \\E(t/2)Fh(t/2)u0\\
= ||Fh(t/2)JE7(t/2)tio||
r
< C/i^- r / 2 ||wo||-
< Ch \\E(t/2)u0\\r By (6.26), we have ||F fc (t/2) 2 «o|| <
Cht-V2\\Fh{t/2)u0\\,
and then \\Fh{t)uQ\\ < Chrt-^2\\u0\\
+Cht-1/2\\Fh(t/2)u0\\.
Apply repeatedly this formula, and note that ht~xl2 < 1, we get \\Fh(t)u0\\ < Cft r t- p / 2 ||uo|| +C(ht-1'2y\\Fh(t/2r)u0\\
< C7^-r/2||Uo||.
The theorem thus follows. In general (cf. Bramble, Schatz, Thomee and Wahlbin [9]), H^hW^oll < Chn-(q-pV2\u0\p,
0
(6.28)
We now turn to the PIDE (6.1) and its semidiscrete approximation Uh(t) € 5^ satisfying
{
uh,t + Ahuh = / Bhuh(s)ds uh{0) = uQh.
= Bhuh(t),
, g 2Qs
98
Chapter 6. Cases with Nonsmooth Initial Values
The main result in this section is the following Theorem 6.5. Let u and Uh G S> be the solutions of (6.1) and (6.29) respectively, and B be a partial differential operator of order /3, (3 < 2, UQ G L2(Q) and u0h = ^i^o G 5^, then \\uh(t) - u(t)\\ < Chxt~X/2\\u0\\
for
A<min(4-/?,r).
Obviously, in view of Theorem 6.2, the power A in this theorem is the best possible. For exhibiting the main idea of the proof, B is assumed to be independent of t and s. By DuhameFs principle, from (6.1) and (6.29) we have u(t) = E(t)u0 + / E(tJo uh(t) = Eh(t)Phu0
s)Bu(s)ds,
+ / Eh(t Jo
s)Bhuh(s)ds,
and then e(t) - uh(t) - u(t) = (Eh{t)Ph + / Eh(t - s)Bhuh(s)ds Jo = Fh(t)u0 + / F h (* Jo
E(t))uo - / Jo
E(t-s)Bu(s)ds
s)Bu{s)ds
+ / Eh(t - s)(Bhuh{s) Jo
-
PhBu(s))ds
= e0-hei-he2,
(6.30)
where eo = F/j,(£)uo is estimated as before, i.e. ||eo|| <
Chrt-r'2\\u0\\.
Set e = ei 4- e 2 , below we shall prove, by estimating ei and e2 separately, that ||e(t)|| < Ch4-e\\u0\\.
(6.31)
It means that the contribution of e to the error does not exhibit any singularity at t = 0. Together with the estimate for eo, this will complete the proof of Theorem 6.5. The proof of (6.31) will be based on a sequence of lemmas.
6.2. Error Estimates for Semidiscretization
99
To avoid the singular behaviour of Fh(t) = Eh{t)Ph — E(t) at t = 0, the following self-adjoint operator Hh(t) : L2 —> HQ is introduced: Hh(t) = ThEh{t)Ph
- TE(t) = Eh(t)Th -
= ThFh(t) +
TE(t)
(Th-T)E(t),
which can be understood as an integral of — Fh(t) since - / Fh(s)ds = - / (Eh(s)Ph Jo Jo
-
E(s))ds
= [ (ThE'h(s)Ph - TE'(s))ds Jo = ThEh{t)Ph - TE(t) - (ThPh - T) = Hh(t) -
Hh(0),
and Hh(0) =
Th-T,
i.e. H'h{t) = -Fh{t). Lemma 6.7. There are the following two estimates:
\Hh{t)uo\-q < C / i ^ - ^ - ^ I K H ,
l< + 2 < p < r ,
and \\Hh(t)u0\\ < Ch*\\u0\\2
for
tel,
r> 4.
Proof. From the approximation property oiTh — T and the boundedness of E(t) in L 2 (Q), we have \(Th-T)E(t)u0\-q
< Ch*>\E(t)u0\p_q_2 < ChHl-^-q^2\\u^\l
q>-l,p-q>2,p
For purely parabolic case what remains is to bound the term ThFh(t)uo = T^eo, where CQ = Fh(t)uo is the error of semidiscrete projection. Introduce the following discrete negative norm (see Thomee [150], Chapter 6) \\v\\-a,h = {Tshv,v)^2,
(for v £ 5r^ also for s = - 1 )
and the corresponding inner product (viw)-8th
= {Tshv,w).
100
Chapter 6. Cases with Nonsmooth Initial Values
It is proved, for 0 < s < r, that \\v\\-s,h < C(\\v\\-a + hs\\v\\),
||«||_, < C d M U f c + h'\\v\\).
Which shows that, with the exception of a very small error, HuH-,^ is equiva lent to ||f ll-s- Thus we have, for 0 < q < r — 2, \The0\_q < C(|T h eo|_, >h + Cft«||Tfceo||), < C(|co|_,_ 2 ,fc+C/i fl ||eo||_2,fc) < C|eo|_,_ 2 + Cft«|eo|_2 + C7i«+2||eo||, and for q = —1, |T h e 0 |i = [A{The0,The0)}1/'2
(AhTheo,Theo)^2
=
= (e 0 ,T h e 0 ) 1 / 2 = |e 0 |_i, h < C(|e 0 |_i + h\\e0\\). For any ? G Hl there is |(eo,¥»)| = \(uo,Fh(t)
0
whence |eo(*)|-i < Chh-V-WWuoW,
for
0 < i < j < r.
Together with the above three estimates, this shows iTHFhWuol-g^Ch^-b-M^uoll
for
1 < q + 2 < p < r,
which completes the proof of the first conclusion. To prove the second conclusion note that Theott + e0 = p0 = ~{Rh - I)E(t)u0,
T%e0,t + The0 = -ThPo,
and hence, by (6.25) for TheQ instead of eo, (6.26) and the negative norm estimate of (R^ — I)E(t)uQ, we have \\The0\\ = |e0|-2,/k < Csup(s|^(s)|_ 2 j / l +
\p0(s)\.2yh)
s
< C s u p ( S | ^ | _ 2 + |po( S )|_ 2 ) +C/i 2 sup( S ||p( ) ( s )|| + \\Po(s)\\) s
s
< Ch4sup(s\E'(s)u0\2 S
The proof is complete.
+ \E(s)u0\2)
<
Ch4\u0\2.
6.2. Error Estimates for Semidiscretization
101
L e m m a 6.8. For the integral Fh*g{t)=
I Fh(t - s)g(s)ds Jo
for
t e 7,
there are \\Fh*g(t)\\
1 = 0,2, r> 1 + 2,
S
\\Fh * g(t)\\ < Ch3(sup Wgtfh +1~^2 sup(||(a)|| + s\\g'(s)\\)), S
r > 3,
S
and \\Fh*g(t)\\i
< ChSup(\\g(s)\\+s\\g'(s)\\),
r > 2.
S
Proof. By the analogue of (6.17) and Fh — —H'h, we write tFh * g(t) = [ (t - s)Fh(t - s)g(s)ds + / sFh(t Jo Jo = tHh(0)g(t)
s)g(s)ds
+ / [ ( * - s)Fh(t - s)g(s) - Hh(t Jo
s)(sg(s))'}ds.
The first conclusion now follows immediately from Lemma 6.7 and (6.28) (note tha.tHh(0) = Th-T). Similarly, for r > 3 it becomes \\Fh * g(t)\\ < C/i3{||s(*)lli + 1 - 1 f\t
- sy^iWgisn
+ s\\g'(s)\\)ds}
Jo
< Ch3(\\g(t)\U +t-V2sup(\\g(s)\\
+ s\\g'(s)\\)),
S
(the last conclusion follows in the same way) where we have also used the fact that
WFnWgWi < Ckt-iyW,
r>2,
geL2.
To show this, note that eo = Fh{t)u0 = (Eh(t)Ph
- RhE(t))u0
+ (Rh - I)E(t)u0
= 60 + Po
and by the inverse property, ||0o||i < Ch-'PoW
< Ch-^Heoll + Hftll) < Cht-^luoll-
The desired result follows from \\po\\ < Ch\\E(t)u0\\2 < C/ii _1 ||wo||-
102
Chapter 6. Cases with Nonsmooth Initial Values We are now in a position to estimate e\ in (6.30). Lemma 6.9. For e\ — Fh * (Bu)(t) there are ||ei(*)|| < Ch*-?||u01|,
p<2,
and
lleiWIIi^C-ftlluoll,
/3 = 2.
Proof. When (3 = 0 and /? = 2 , by Theorems 6.2 and 6.3 we have \Bu(a)\2-p
+ s\{Bu)'(s)\2_p
< C\\u0\\ + s|3(s, sMa)| 2 _/j
+ s | 5 t u ( 5 ) | 2 _ / 3 < C||uo|| + Cs\u(s)\2 + 5 | S t w ( 5 ) | 2 ^ < C||u 0 ||. The first conclusion then follows from the first estimate in Lemma 6.8 with I = 2 — p. For P — 1 the result follows similarly by the second estimate in Lemma 6.8 and Theorem 6.3. The second conclusion is a consequence of the third inequality in Lemma 6.8. We now turn to the third term e2 G S% in (6.30), and we need only to bound (e2,i>) for v £ S^. By definition, (Eh{t-s)(Bhuh(8)-PhBu{s)),
v)
= {Bhuh{s) - PhBu{s), Eh(t - s)v) = /
J5(e(r), Eh{t -
s)v)dr,
Jo
and hence, since e(t) — Fh(t)uQ + e(t) and from (6.30), (e2(t),v)= / / Jo Jo + / I Jo Jo = e2i{v)+e22(v).
B{Fh(r)u0,Eh(t-s)v)drds B(e(r),Eh(t-s)v)dTds (6.32)
For the purpose of estimating e2\, define the following functional
Bi(f,g)=
f f B(f(T),g(t-a))dTd8,
Jo Jo
and denote simply f(t) = J0f(s)ds. Lemma 6.10. There are | £ i ( / , 0 ) | < Csup(|/( 5 )|,3_ fc + s\f(8)\p-k) s
sup(|3f(a)|fc + 8\g(s)\k), s
0 < k < 2,
P = 0 and 2,
6.2. Error Estimates for Semidiscretization and
103
|£i(/,s)l < Csup^^n/^iDsup^1/2!^)!!), 0 = I. s
s
Proof. By integration by parts, we have
tB1{f,g) = t [
Jo
B(f(s),g(t-s))ds
= [ (t-s)B(f(s),g{t-s))d3+ Jo
f Jo
sB(f(s),g{t-s))ds
= [ (t-s)B(f(s),g(t-s))ds+ Jo
[ Jo
B(f(s),g(t-s))ds
+ / Jo
sB(f(s),g{t-s))ds.
For (3 = 0 and 2, 0 < k < 2, note that \B(fi9)\
^ = 0,2,
0
(6.33)
and the first conclusion follows. For j3 = 1 we get.directly
\B!(f,g)\
[ 11/(5)111^-5)1!^
Jo
< Csnp(s^2\\f(s)\\) s
sup((t - sf'2\g(t
- s ) | i ) f (t -
s
s)-l'2s~^ds,
Jo
then the second conclusion follows. Remark. The reason why we are treating (3 = 1 separately is that for (3 = 1, k = 2, the factor | / | - i in (6.33) would have to be replaced by | | / | | _ i , since in general Vg does not vanish on dQ and this last norm is undesirable in our application below. We are now ready to estimate the term e2i in (6.32). Lemma 6.11. There are \e21(v)\
veS^
(3<2
\e2i{v)\
veS?,
13 = 2.
and Proof. First discuss the cases that (3 = 0 and 2. By Fh =
EHPH
— E we
have e21(v) = Bi(Fhu0,
Ehv) = B^FHUQ, Fhv) + Bi(Fhu0, Ev) = e211(v) + e212(v).
Chapter 6. Cases with Nonsmooth Initial Values
104
Since F^v — —Hh(t)v-{-Hh(ti)v, we find, by the first estimates in Lemmas 6.10 and 6.7, (6.27) and (6.33) with k = min(/?, 1), that |e2ii0>)| < Csup(\Hh(s)u0\(3-k 2 (/5 fc)
+ s\Fh(s)uo\p-k)
2 fc
sup(\Hh(s)v\k
+
s\Fh(s)v\k)
4
< Cft " - /i - ||t4o||||t;|| < Ch -P\\uo\\\\v\\. Since E(t)u0 = —TE(t)u0 -f Tu0, we obtain similarly |e 2 i 2 (v)l < Csup(\Hh(s)u0\p-2
+ s\Fh{s)uoif3-2)sup(\TE(s)v\2
+ s\E{s)v\2)
< CTr^KIIIMI. From these estimates it implies the first conclusion. When (3 = 2 since Eh{t)v = —ThEh(t)v + ThV, we also have |c2iWI < Csup(\Hh(s)u0\i + s\Fh(s)u0\i)siip(\ThEh(8)v\1 < Ch\\u0\\ \v\_hh,
+ s|JEk(s)v|i)
where in the last step we have used the following inequality (see Thomee [150], Lemma 3 in Chapter 6) for the case p = — 1 and q = 1 \Eh{t)v\qth
p
(6.34)
When P = 1, by the second inequality in Lemmas 6.10, 6.7 and (6.34), \e21(v)\ < C s u p ^ ^ n ^ ^ ^ i i ) s u p ^ i ^ ) ^ ) < Ch3\\u0\\\\v\\. Therefore the proof of the lemma is complete. Proof of Theorem 6.5. We shall now finish the proof of Theorem 6.5. First consider the case (5 < 1. Recalling the notation of (6.32) and using (6.34), \e22{v)\
Jo
s)v\\pdrds
f\\e{T)\\dr\\v\\.
Hence, using also Lemmas 6.9 and 6.11, we find \\e{t)\\ < || e i (t)|| + ||e 2 (t)|| < Ch^WuoW + C f \\e\\ds, Jo
and the desired result follows from Gronwall lemma.
j3 < 1,
6.2. Error Estimates for Semidiscretization
105
When P = 2, for v G S£, e22{v)=
[ f Jo Jo + /
B(e(r),Fh(t-s)v)dTds / (e(r), £*£(£ - r)v)drds = e 221 + e 222 .
Exchanging the order of integration and integrating by parts, we have e 22 i = /
I
B(e(r),Fh(t-s)v)dsdr
= / B(e{T),Hh(0)v)dTJo Using Lemma 6.7 with p=l, |e 2 2 i| < C f
/ B(e(T),ff fc (t-T)t;)dT. Jo
q = —1, it becomes
||e||i
Jo
s
||e||ida||v||.
Jo
Similarly, |e 2 2 2 |
a
Jo
Thus, ||e22(t>)||
[ ||e||ids + C / \\e\\ds. Jo
Jo
We shall now prove that, when f3 = 2, there is P(s)||i < Cfc||uo||
for
s £ J.
(6.35)
If this is true, then using Lemma 6.9 we can obtain ||e(i)|| < ||e 1 (t)|| + ||e 2 (i)||
f Jo
which concludes the proof of (6.31).
\\e\\ds,
106
Chapter 6. Cases with Nonsmooth Initial Values What remains now is to prove (6.35). Rewrite 622(f) as pt
e22(v) = /
ft
/
B(e(r),Eh(t-s)v)dsdT
= f B{e{r),ThEh{0)v)drJo
f B(e{r),ThEh(t Jo
-
r)v)dr,
whence by (6.34), \e22(v)\
HellidasupllTfc^^ll! < C f
Jo
s
||e||i
\\v\\-hh.
Jo
Applying the second estimate of Lemma 6.11, we have \(e2(t),v)\
f llelUdaJH-Lh, Jo
and hence, by duality, \\e2(t)\\i
fllehds).
Jo
Together with the second estimate of Lemma 6.9, this shows \\e(t)h < Ik!Will + IMOIU < Ch\\u0\\+C
/ \\e\Uds.
Jo Jo
By Gronwall lemma, the proof of (6.35) and hence that of the theorem is now complete. The proof mentioned above appears quite complicated! Can it be simpli fied by the Ritz—Volterra projection Vhu(t)l This is an open question.
6.3
Backward Euler Scheme
In this section, the time discretization will be discussed. First consider an abstract initial value problem in a Hilbert space H, ut + Au= Let Un « u(tn),
/ Bu(s)ds = Bu(s), Jo
t e J,
u(0) = u0.
n = 1,2, • • ■, N,
U° = UQ,
(6.36)
(6.36) is approximated by
dtUn + AUn = Qn(BU),
(6.37)
6.3. Backward Euler Scheme
107
where A is a self-adjoint positive-definite, not necessary bounded, operator with dense domain D(A), B is a time-dependent operator with domain D(B) C D(A), the quadrature rule is Qn(y) = V LOnjy(tj) » / " y(s)ds, and Qn(BU)
= Qn{B(tn)U).
(6.38)
Denote the quadrature error in (6.38) by
qn{v) = Qn(y) - f" y(s)ds. JO
Assume that B and all D\B (derivatives with respect to s) are always domi nated by A. To analyse the stability and convergence of the numerical scheme, Thomee and Zhang [157] proposed the following assumptions: the quadrature coefficients unj in (6.38) are dominated in the sense that there exists u>j such that n
(i). \ujnj\ < ujj
for
0 < j < n,
with
2^WJ
—^
^ or
^n — **»
j=o
and satisfies n
(ii). ^ujit'1
< C\1nk\ for
tn < t*.
In addition, in order to get the optimal error 0(k\nk) for the discrete solu tion t/ n , we further require that the quadrature rule Qn be appropriate for nonsmooth data in the sense that there exists m > 0 such that (hi). \qn{y)\ < Ck\\nk\ if ||£>^(£)|| < Ct~J for tn < t*, 0 < j < m. Later we shall verify that the rectangular rule satisfies the above three con ditions. In addition to this, Thomee and Zhang also proposed a new graded grid to treat the singularity of the solution at t — 0 and discussed the corre sponding economic scheme. Let Ek = (I + /cA) - 1 and rewrite (6.37) in the following form Un = EkU71-1 +
kEkQn{BU),
and by iteration, Un = E%U° + Sn(U), where
n-l
Sn(U) =
k^EZ-jQj+\BU). 3=0
(6.39)
Chapter 6. Cases with Nonsmooth Initial Values
108
We now recall some important properties of the operator E%. Denote by SP(A) the spectrum of A and r(A) = (1 + A) - 1 . Lemma 6.12 (smoothing property). For n > 1,
ll^ll^n1Proof. It is well-known that (1 + A)n > nX for A > 0, and sup A(l + A)~ n < A/(nA) =
n'1,
A>0
thus \\AE%\\ =
|Ar(A:A)n| < AT1 sup A(l + A)~ n < k^n'1
sup xesp(A)
-
l/tn.
A>0
Recall that E(t) = exp(—tA) is the solution operator for the purely parabolic problem (6.36) with B = 0, and the error of the approximate so lution Un of (6.37) with B — 0 can be expressed by Un - u(tn) = E%u0 - E(tn)u0
= F>0,
where F£=EZ-En(k),
E(tn) = E(nk) =
En(k).
Lemma 6.13 (approximation property). For n > 1 and tn < £*, Ili^uoll^CArt^lluoll. n
Proof. Since F (X) = r(X) — e~nX, what we need is to prove that \Fn(\)|
j = l,2,.-.,JV.
Let Co > 0 be a positive number such that |r(A)| < e- C o A
for
0 < A < 1,
then for 0 < A < 1 we have \r(X)-ex\
and
l^n(A)| = lE r ( A r H ( r W-e- A )e- jA | ra-l
x
< C\r{\) - e~ \ ] T | e - C b < n - 1 - r t A e - ' A | < CX2ne-ConX
< C(An) 2 e- C o ( n A V« < C/n.
6.3. Backward Euler Scheme
109
On the other hand, for A > 1, e-
nX
< e~n < C/n,
and there exists a positive number C\ > 0 such that
Thus r n (A) < e~Cin < C/n
for
A > 1.
n
The above estimates conclude that |F (A)| < C/n and the lemma follows by the spectrum analysis as in Lemma 6.12. Now return to PIDE and (6.39). Lemma 6.14. Assume that the quadrature rule Qn satisfies the condition (i), then there is the following stability estimate n-1 J
n
\\S (y)\\
if y° = y(0) = 0.
3= 1
Proof. Using the definition of Qn and exchanging the order of summation, n—1n—1
n
S (y) =
fc££^w?r^(*;+i^y i=0
j=i
n—1n—1
= ^^W;+1,iA£r^"1B(*i+i.W)2=1
j=l
Since B is dominated by A, and by the smoothing property of E%, we have
\\Sn(y)\\ <
fcj;£||a;j+lii^^|||^-1B(ti+1)ti)i/i|| i=l
j=i
<^££^M£riii2/ii 2=1
j=i
n—1
n—1
i
SU
P k\r(k\)n-i,
where n—1
V sup kXr(kX)n~j J ^ AeSp(A)
n—1
< Y] sup Xr(X)n~j < sup A r ^ = 1. ~ ^ A>O A>O 1 - r(X)
Chapter 6. Cases with Nonsmooth Initial Values
110
This proves the lemma. We now show a preliminary error estimate where the precise quadrature rule has not yet been chosen. Theorem 6.6. Assume that By Bt and Bs are dominated by A, and that Qn satisfies the conditions (i) and (ii). Then for the solutions u of (6.36) and Un of (6.37), we have \\Un-u(tn)\\
tn £ J,
l<j
where kYjErJqj+\Bu)
e"{u) = 3=0
is the global quadrature error, and qn(Bu) = qn(B(tn)u). Proof. Let F£ = E% - E(tn) = E% - E(k)n denote the error operator for the purely parabolic problem, and en = Un-u(tn)
= F£u0 + en,
where F£ can be estimated by Lemma 6.13. It remains to show that ||e n ||
max | | e ^ ) | | ,
tn < t\
(6.40)
l<j
With notation (Fkv)n (6.3), en = Un-
(Fku0)n
= F£v and I3 = (tj,tj+i), - u(tn) = Sn{U) + E{tn)u0 -
= Sn(U) - [n E(tn Jo = S (Fku0)
n
u{tn)
s)Bu(s)ds n_x
n
we have by (6.39) and
n
+ S (e) + S (u) - V 3=1
r / E(tn -
Jl
s)Bu(s)ds
*
n-l
= Sn(Fku0)
+ Sn(e) + A; ^
E^~j{Q^\Bu)
-
Bu(tj+1))
3=0 n—1 lb—X
n—1 lb—J.
rn
+ E /
K~\Bu(t3+i)-Bu(s))ds
+ J2
3=0 JlJ n—1 „
+ T2 = Sn(Fku0)
j=0
(E^n-j)
~ E{tn -
p
s))Bu{s)ds
+ Sn(e) + en(u) +r^+r^+
rj.
K^BuWds Jl
J
I111 ll
6.3. Backward Euler Scheme Then by Lemma 6.14 and discrete Gronwall inequality, P I < C max (||S'"(Ffcu0)|| + ||e*{u)\\ + V ||r?'||). \<j
f-'
i =f -l '
The Sn(Fku0) and r? shall be estimated below separately. First, using Lemmas 6.14, 6.13 and condition (ii), n-l
n-l
\\Sn(Fkfc u0u)\\
Note that r? are independent of the quadrature rule, and w{t) = ix(t) E{t)uo = Bu(s) has better regularity (see Theorem 6.3), lllDiA'wWll^Ct^-'lluoll lZJJA^tJH^C^-'-^lluoll,
,l, ij ==00,l,
zt >> 0 ,
2-hj t + j > l1..
It can be seen easily that ||r?|| ||B U (Jfc)-Bti( S )||d a +V IKH < /[fkc\\Bu(k)-Bu(a)\\d8 + V1 Jo
j=1
/I
Jlj
| | B \\Bu{h+i)-Bu{s)\\ds u(ti+1)-B«(a)||d5
n—1 n—1 2
< Cfc||«o|| +CA: ^i-1||Uo|| || 1 < CA||«o|| +C/c2^t.7 = ||1Wo
< CAIlnAIHuoll, C*|lnfc|HH,
and similarly IKII < C f c ] T / t-^WBuisWs ||rj||
KCe^j'W^oW j=l < Ck^tJ^uoW
Since for 5 € Ij, \\E(tn_ \\Eitn-j)3) - E(tn - 5 )|| = || f ""~'3 Er{r)dr\\ Jtn-S
Jl^^j-x
r"1 <
Ckt'l^,
thus finally we have HrJH \VnA < < /[
\\(E(k)-E(tn-s))Bu(s)\\ds
+ +
Vt"1,. Ck2Yt-\
J M
Chapter 6. Cases with Nonsmooth Initial Values
112
Theorem 6.7. Assume that B = B(t, s) and its derivatives with respect to t and s are dominated by A, and that the quadrature rule Qn satisfies conditions (i), (ii) and (iii). Then for the solutions u of (6.36) and Un of (6.37) we have \\Un - u(tn)\\ < Ck(t-X + | lnfc| 2 )|K||,
tn G J.
Proof. It remains only to estimate en(u) in Theorem 6.6. By our as sumptions and the regularity of solution we know WDKA^Bit,
s)u(s))\\ < COItioll
for
s
Hence, by the condition (iii) and the linearity of e n , ||yrV(2?«)|| = l l g " ^ - 1 ^ ) ! ! < Cfc|lnfc|||«o||, using also Lemma 6.12 and self-adjointness of A, we find ||€»(u)|| = | | f c £ i 4 J ^ - V " + 1 ( i 4 - 1 B u ) | | 3=0 n-1
^CkJ^tn-jkl^klholl j=o
The theorem follows from Theorem 6.6. As an application of Theorem 6.7 we now consider the following fully discrete backward Euler scheme for the PIDE (6.1), dtUn + AhUn = Qn{BhU)
for
n > 1,
U° = Phu0,
(6.41)
where B/^t, s) and its derivatives with respect to t and s are dominated by A^ (see Chapter 3). Theorem 6.7 yields the following Theorem 6.8. Under the conditions of Theorem 6.7, and let Sy be a subspace of piecewise polynomials of degree r — 1, then for the solutions of (6.1) and (6.41) we have with A = min(r, 4 — /?), \\Un - u(tn)\\ < C{hH-x'2
+ k^1
+ \lnk\2))\\u0\\,
tn e J.
The remaining part of this section is to give some examples of the quadra ture rules which are appropriate for nonsmooth data and have the advanta geous storage properties. A numerical test is cited at the end of this section.
6.3. Backward Euler Scheme
113
a). The Rectangular Rule with u>nj = u>j = k was described in Chapter 4. In addition to (i), the condition (ii) obviously holds, n—1
^cjjtj1
n—1
= ^ T j - 1 < Clnn < C|lnfc|,
j=i
tn £ J.
j=i
In this case we have, using the assumption of (iii) with m = 1, that
\\qn(y)\\<\\knJ2y^3=0
J
[tny(s)ds\\
°
<2k max \\y(s)\\+k 0<s
/
\\yt\\ds < Ck\ In k\,
Jk
and hence (iii) also holds. b). The Modified Trapezoidal Rule mentioned in Chapter 5 is sparser than the above rectangular rule, but nevertheless retains the order of accuracy of the backward Euler discretization when the solution has better regularity. Take the larger stepsize k\ = mk, where m — [A;-1/2] is the integral part of A; -1 / 2 , and set t'3; = jh\, j = 0,1, • • •, / with I the largest integer such that t\ < tn. The rule consists of two parts such that the trapezoidal rule with stepsize &i is applied to [0, tj] and the left rectangular rule with stepsize k on the remaining [£{,£n]. Then, for y smooth enough, \\qn(y)\\ =Ck\\l Jo
\\ytt(s)\\ds + Ck f Jt[
\\yt(a)\\da
= 0(kf) + 0(kk1) = 0(k). The number of levels of Un needed to be stored thus reduces to 0(k^1) + 0{m) = 0{k~ll2), with the same order of accuracy. This rule satisfies the conditions (i) and (ii). However, the main contribution to the bound for the quadrature error is Ck\ I
||y tt ||ds, and since we may now assume
||T/«(5)||
=
Jk±
0(s~2) for small 5, this gives an error bound of order 0(k\) = 0(k1^2), hence with a loss of accuracy. To overcome this drawback we shall therefore present an alternative quadra ture rule as follows. c). The Graded Trapezoidal Rule. This rule has locally refined steps near t = 0 and behaves better for nonsmooth data, but still performs well for smooth data. We introduce the sequence of time steps defined by £' =
114
Chapter
6. Cases' with Nonsmooth
Initial
Values
j2k, j = 1, 2, • • •, a n d let I be t h e largest integer for which t\ < £ n - i - Now propose to use t h e basic trapezoidal rule on each interval ( ^ , ^ + 1 ) and then the rectangular rule with time stepsize k on ( t j , t n _ i ) , i.e.
Qn(y) = \ E(^+i " *J)(y(^+i) +y(*J))+ * E v&) « / ' " *(*)*■ 1
Jo
j=l-
3=0
It is easy to see t h a t t h e number of nonzero weights in Qn(y) is n — I2 + /, and since n < (I - f 1 ) 2 this is bounded by 31 + 1 < C / c - 1 / 2 , so t h a t , like t h e earlier modified trapezoidal rule, t h e number of levels of t h e approximate solution U3'(which needs to be stored) is 0 ( / c - 1 / 2 ) . It is easy to prove t h a t this rule satisfies (i) and (ii) with LJJ = t ^ + 1 — tj_1 for j = i2,i > 2, and LJJ = k for other j . In order to show t h a t (hi) holds, we note t h a t
qn(y) = l(y(0) + y(k))- j
y(s)ds
+\ X>;+i - *J-)(y(*S+i) + y(*J)) + k £ v(h) - F y(s)dai j=i2
i=i
whence || g n fo)|| < Ck max||j,( a )|| + ( 7 ^ + 1 - ^ )
3
, max
||y tt ( S )||
ptrt
+k /
||2/ t ||d5.
This yields, using t h e assumption of (hi) with m = 2,
ikn(y)ii < cfc + ^c(t;. + 1 -«j.)3(«i-r2 + cfc f s - 1 ^ , j=i
Jt
i
where £ ( * i + i - *J03(*J-)-2 = * ! > ' + l ) 2 - i 2 ) 3 J - 4 < C f c ^ r i=i
i=i
1
< C7fc|lnfc|.
j=i
These estimates complete t h e proof of (iii). T h o m e e a n d Zhang also considered using Simpson's rule on t h e larger basic intervals Ij = (t^, t ' + 1 ) , where t'j = j 4 / c , j = 0 , 1 , 2, • • •. It requires only
6.3. Backward
Euler Scheme
115
0(/c~ 1 /4) l e v e l s o f jjn t o b e s t o r e d 7 w i t h t h e a c c u r a c y \\qn(y)\\ < CA;|lnA:|. We finally cite a numerical example [157] considering the simple special case when A = -Dl on [0,1], with B = A. Here the integro-differential equation may be differentiated with respect to t to yield the following second order differential equation utt + Aut - An = 0
for
t > 0,
with u(0) = uo,
and
ut(0) =
-Au0.
T h e exact solution may easily be obtained by separation of variables. In this case t h e rectangular q u a d r a t u r e rule may be stored separately, see the addi tive scheme in C h a p t e r 5. Choose the initial value u0(x) = 1 in (0,1), for which t h e solution is discontinuous at x — 0 , 1 . As comparison, we have also treated t h e smooth initial value UQ(X) =' — sin7rx which is the first term in the Fourier expansion of above discontinuous initial value. T h e errors e 2 and e ^ are measured in discrete l
Method a b c a b
1 1 1
N 160
320
c a b
c
640
^max
160 17 28 320 32 48 640 40 40
10 4 e 2 119 156 100 60 80 50 30 42 25
Smooth data 4 P2 10 e o o 137 180 115 69 1.0 92 1.0 1.0 58 1.0 35 0.9 49 1.0 29
Poo
1.0 1.0 1.0 1.0 0.9 1.0
Nonsmooth data io 4 e o o 10 4 e 2 92 120 168 914 357 114 96 84 1.0 60 0.6 662 237 1.0 49 60 42 1.0 30 494 163 0.5 31 25 1.0
| Poo 1
1.0 0.5 0.9 1.0 0.4 ! 0.9
It can be seen t h a t the modified trapezoidal rule (b) seriously damages the accuracy reached by the backward Euler scheme, but the graded trapezoidal rule (c) greatly decreases the storage requirement and reserves good accuracy.
Chapter 6. Cases with Nonsmooth Initial Values
116
Remark. Le Roux and Thomee [93] also studied the following semilinear equation ut -f Au = / /(£, 5, x,u(s, Jo
x))ds,
with u=0
on
<9Q,
and
^(0) =
UQ
in
Q,
where A is a self-adjoint elliptic second order operator with time-independent coefficients. If UQ 6 L2 with ||wo|| < R they show that, for any v < 1, \\uh(t) - u(t)\\ < C{v,R)h2vt~\
0
and a substantially better estimate is not possible. For backward Euler scheme they used the modified trapezoidal rule with quadrature points j2k, j = 0,1, 2,... (thus the total number of points used is of the order 0(k~1^2)) and obtained the following error estimate \\Un-u{tn)\\
+ kl')t-l/
for
\\uo\\
In comparison with purely parabolic case, see Johnson, Larsson, Thomee and Wahlbin in Math. Comp. 49 (1987), pp. 331-357 and Crouzeix and Thomee in Math. Comp. 49 (1987), pp. 35-93.
Chapter 7
Cases with Weakly Singular Kernels Consider PIDE of the form ut + Au= < y u(0) = uo
K(t - s)Bu(s)ds + /
in
fJ x J,
J° in
(71) fi,
where A and B are smooth operators independent of t (and 5), and K(t) is a weakly singular kernel such that \K(t)\ < Ct~a
with
0 < a < 1,
teJ=
(0,**].
(7.2)
Always denote by K * / the convolution K*f(t)=
[ K(t-s)f(s)ds= [ K(s)f(t-s)ds. Jo Jo The existence and regularity of the solution of (7.1), and its finite element approximations are considered by Chen, Thomee and Wahlbin [26] (1992). Note that in the case of weakly singular kernel, the regularity of the solution with respect to time is limited, which makes higher order quadrature formulas as well as economic schemes mentioned before less attractive.
7.1
Continuous Problems
We shall need the following two lemmas. 117
Chapter 7. Cases with Weakly Singular Kernels
118
Lemma 7.1. (generalized Gronwall inequality). Assume that y is a nonnegative function in LX{J) satisfying y(t) < F{t) + v j (t- s)-*y(s)ds, Jo where F(t) > 0, v > 0, then there is a constant C = C(t*) such that y(t) < F{t) + C j {t- s)~aF(s)ds, Jo
(7.3)
t G J.
Proof. Let Ki(t) = vt~a for t e J. Recall that the convolution oper ator i^i* is bounded in L 1 (J). Denote by K{ the kernel of i times iterated convolution, we have Ki(t) = if i * Kx * • • * Ki = C(z, a ) ^ 1 " ^ " 1 . i times
It is easy to see that Ki * F(t) < CK\ * F(t) for z > 1, t € J. Hence, applying ifi* to (7.3) n times in succession, we obtain n-l
3/W < F(*) + J2 Ki * F ^) + K" * ^(*) < F(t) + CKX * F(t) + Kn * j/(t). For n ( l — a) > 1, we have i f n * 3 / W < C / y{s)ds. Jo Applying the Gronwall lemma, the proof is complete. Lemma 7.2. Let K e LX(J). Then for each e > 0 there is a constant Ce = Ce{\\K\\Lr{J)) such that t*T
nt
T
I/ / K(t-s)f{s)f{t)dsdt\ ' Jo Jo
T
< e [ f(t)dt+Ce ' Jo
[ \K(T-t)\ Jo
t
f Jo
f(s)dsdt.
(7.4) Proof. In this proof, (•, •) and || • || denote respectively the inner product and the norm in L2(J). Using the Cauchy—Schwarz inequality, we have
\(K*f)(t)\2 < (jfV(*)l 1/2 l^(a)| 1/2 |/(*-*)|d«) 2 <\\K\\LHJ)
Jo
ft\K(s)\f(t-s)ds.
7.1. Continuous Problems
119
Integrating with respect to t and changing the order of integration and the variables, \\K * ff
< \\K\\LHJ) j
\K(a)\J
= \\K\\LHJ)
\K(T-T)\
I Jo
f2(t-s)dtds I' Jo
f2(
hence, for the left-hand side of (7.4), we get |(^*/,/)|<||^*/||||/||<6||/||2 + i||ir*/||2
< ell/ll2 +
^WKWLHJ)
£
\K(T - r ) | j f
f(s)dsdr,
which is the desired inequality. In the case of a weakly singular kernel, the regularity of solution of (7.1) is limited. In general, utt blows up as t —> 0. Consider an example = / (t - s)~aAu(s)ds in ft x J Jo u = 0 on dft x J, u(0) = (/) in ft,
ut+Au
where (/) is an eigenfunction of A corresponding to the eigenvalue A. Setting u(t, x) — y(t)<j)(x), for the scalar function y, we have yi + \y = \ [ (t-s)-ay{s)ds, Jo
t > 0, y(0) = 1
and hence y"
= \t~a - Xyf(t) + \ [ (t- s)-ayf(s)ds Jo
«
0(t~a).
Since yi G C ( J ) , we conclude that for this particular function, WuuW^Xt-*
as *-><)
and / \\utt\\pdt
Chapter 7. Cases with Weakly Singular Kernels
120
Theorem 7.1. Assume that u0 £ HT\H%(Sl), f £ C(J;HV~2) and tfft £ L°°(J; Hu~2) with u > 2, 0 < 7 < 1. Then (7.1) has a unique solution u £ C(J) L 2 (0)). Furthermore, u £ C(J; H2 f| H]), ut £ C(J, L 2 ) f| L 1 (J; # 2 n^o^and^GLHJ;^2)The regularity of the solution is proved in an improved way which is slightly different from that used in the paper by Chen, Thomee and Wahlbin. Differentiating (7.1) with respect to t, then z = ut satisfies zt + Az = K*Bz + F(t), z = 0 on fflxJ, z(0) = /(0) - Au0 in HU-2(Q),
(7.5)
where F(t) = fl + K(t)Bu. Let Mun H K I L + 11/(0)1^-2 + s u p | | ^ / / ( s ) | I / _ 2 j with the semigroup E(t) generated by A, the solution of (7.5) can be expressed in the form z{i) = E(t)z(0) + E*K*Bz + E*F, (7.6) for 2 < 6 < v
\\E(t)z(0)\\6 < C&-2-6^2{\\uQ\\v
+ 11/(0)11,-2) <
C&-2-dV*M„n,
and from Lemma 6.2, \\E*F\\S < C
f\t-s)^-2-6V2\\F{s)\\u_2ds
Jo
< C f\t Jo
<
- s)^-2-6V2S-\s1\\fX-2
+ \\*L0\\v-2)d8
C&-6^2-^Mvn.
In the following we shall analyze the operator G = E * K * B. By Dirichlet formula and the Thomee—Zhang formula (6.17), we have Gz=
[ [ E(tJo Jo
s)K(s -
t)Bz(r)drds
E(t - s)K{s -
r)Bz{t)dsdr
t
JO Jr
7.1. Continuous Problems pt
121
pt-T
Jo Jo nt
nt — T
- A«-r)-jf
[\(t-T-Z)E(t-T-Z)K{Z) (t-T-f)B(t-T-OTO
- TE(t Z)(K(t)t)']Bz(t)dtdT + [f/ ' TKlt TK(t - s)Bz(s)ds s)Bz(s)ds i)(K{£)Z)']Bz(t)dtdT s)Bz{s)ds T£(« -T- rT - 0(^K)0']S«(t)dedT Jo and, using Lemma 6.3, pt
\\Gz\\s
Pt-T pt-T
a CaC\\Bz(T)\\ \\Bz(T)\\SS-2dtdT -2dtdT
/ Jo JO
\\Bz{s)\\62-ds + C ff (t- s)-aa\\Bz(s)\\s2ds Jo
aa s)\\z(s)\\ s)\\z(s)\\66ds. ds.
Hence, from (7.6) we can derive a new inequality 1+( 0/2 ||*(t)ll«
+C / Jo
a (t-s)(t-s)-a\\z(a)\\eds \\z(a)\\eds
and, by the generalized Gronwall inequality, it leads to \\z(t)\\ ||*(t)IL S <
Ct-^-^M^. ct-^-^M^.
In particular, (( II \\z(s)||fds) \\z(s)Hfds)1/PV P < < CpM CpM„, for some some pp = = p{v-8)> p{v-8)> r for v>r
1. 1.
Finally, from (7.5) we also get a Ilkt|U-2 N U - 2 < C||z(*)||« + ||F(*)||«-2 ||F(t)|U_2 C\\z{t)\\s + C [I (t - s)a)-a\\z(s)\\sd \\z(a)\\sda S Jo
< CM < CM^(t-^-W vn(t-»W*
+ + |j\t *(t -
8)-8-W-Wda) s)-»s-^-Wds)
a + \\ft\\s-2+Ct\\u0\\S +U/t'IU_ 2 + c*-°iK||s
< cit-i+W2 cit-W-W <
+ t-"+^-*)/2)M £-"+<"-«>/2)MJ/>7 Ct-a||Uo||, J/,7 + ||/ t '|| 7 _2 + Ct-^Wuoll
Ct~xMva,
where A = max(l max(l - (y (i/ - S)/2,7, 6)12,7, a) < 1, 1,
Chapter
122
7. Cases with Weakly Singular
Kernels
and hence
d
)
II // P P
< CvMvn
for
1 < p < 1/A.
These estimates complete the proof of Theorem 7.1. R e m a r k 1. Assume t h a t v > 4 and 7 < a, then by taking 8 = 2, A = a , we have
|M| = |NI < ^""M^ and
tt
\\utt\\pds)
/o
i/p y
for
p
R e m a r k 2. If the initial value -uo, t h e boundary dQ and the free t e r m / are appropriately smooth and further if some compatibility conditions are satisfied, then it is believed t h a t the solution u(t) of (7.1) has the following regularities
ueL°°(j',w2>q(n)), uteL%J',W2«{tt)), ixttGLP(J;L9(n)), where q »
7.2
1 and 1 < p < 1/a.
But so far no proof seems to have been given.
Discretization in Space
We now t u r n to t h e semidiscrete problem of finding Uh (t) G S% such t h a t I
{uh,t,v)
+ A{uh,v)=
K{t-8)B(uh(s),v)ds
+ (f,v),
v G S£,
^
?.
[ uh(G) = UOH, where UQ^ G Sh = S^ is an approximation to ^0 satisfying ||^o/k-^o||i
j = 0,1.
T h e main result is the following T h e o r e m 7 . 2 . Assume t h a t u(t) and uh(t) (7.1) and (7.7) respectively, then \\uh(t) - u(t)\\ < Ch2 (\\uoh
+ /
G Sh are the solutions of
||ut||2ds),
tel.
7.2. Discretization in Space
123
The proof of the theorem is shown at the end of this section. For the analysis we introduce the Ritz—Volterra projection V^u G Sh satisfying A(Vhu(t) - u(t),v) = f K(tJo
s)B(Vhu(s)
v G Sh.
- u(s),v)ds,
(7. 8)
Lemma 7.3. For the Ritz—Volterra projection, we have Il(vft« - «)(*)!! +fclKVhti- «)(*)||i < C ^ s u p | | « ( s ) | | 2 < C^(||«o||a + /
||ut||2ds).
JO
S
Proof. Let W = V^u and p = W — u. We begin with an H1 -estimate, and introduce also the standard Ritz-projection Rh defined by A(R^u — u, v) = 0 for v G Sh. Recalling that \\Rhu - u\\ + h\\Rhu - u\\i < Ch2\\u\\2, we have, using the definition of W and notation 0 — W — Rh,u G Sh, that v\\0(t)\\2
= A(p,9)=
f
K(t-s)B(p(s),e(t))ds
Jo
- s^Ms^ds
+ \\(Rhu - u)(t)\U.
Lemma 7.1 now implies ||p(*)||i < CTsup \\(Rhu - u)(*)||i < CThsup s
\\u(s)\\2.
s
Consider now the L 2 -estimate, which will be derived from a duality argu ment. Using \\p(t)\\= sup (p(t),y) llwll=i and the solution of Aw = y in
HQ(0,),
||W||2
< C, we have
(p(t),y) = A(p{t),w) = A{p,w - v) + A(p,v),
v £ Sh,
124
Chapter 7. Cases with Weakly Singular Kernels
where A{p,v)=
/ K(t-s)B(p(s)iv-w)ds+
/ K(t - s)(p(s)1 B*w)ds. JO
JO
Hence, with v = RhW,
|| P (OII
- ayiWMWxWRkW
< Ch2(\\u\\2 + J* \\u\\2ds)+C
-
W ||!
+ \\p(s)\\\\w\\2)ds
j \ t-
s)-a\\p(s)\\ds,
by using Lemma 7.1, the proof of Lemma 7.3 is complete. For the time derivatives of p in the Ritz—Volterra projection there is the following estimate. Lemma 7.4. We have for p = V^u — u, y*CII/^ll -I" /*||A^|U)rf« < C7/i2(||TXo||2 H- y * II^^Harf^).
Proof. Writing (7.8) in the form A(p(t),v)
= j K(s)B(p(t Jo
- s),v)ds,
v e S£,
and by differentiating with respect to t, A(pt(t), v) = K(t)B(p(0),
v)+ [ K(s)B(pt(t
- *), v)dx.
Jo
Starting with the H1 -estimate and let W = Vh,u, then u\\Wt - Rhut\\\
< A{Wt - Rhuu Wt -
Rhut)
= A(pu Wt - Rhut) = K(t)B(p(0), + / Jo
Wt -
Rhut)
K(t-s)B{pt{s),Wt-Rhut)ds,
hence \\{Wt - ii h u t (*))lli < Ct-a\\p{0)h
+ C [ (t Jo
s )-«|| f t («)||ida,
(7.9)
7.2. Discretization in Space
125
or \\pt(t)\\i < C*- a ||p(0)||i -f \\Rhut - utHi +C [ (t-
syoWptWhda
Jo
< Ch(t-a\\uoh + IMOIh) + C [ (t- ^ - " i i ^ i i i d * . Jo
Thus by Lemma 7.1, \\pt(t)\\i < Ch(t-"\\uo\\2
+ \\ut(t)h + J\t
-
s)-a\\ut(s)\\2ds),
and finally j
\\pt(s)\\ids
+J
\\ut\\2ds + J
+J
Wuthds).
j\s-T)-<*\\ut(T)\\2dTds)
Consider now the L 2 -estimate. Following the notation used in Lemma 7.3 and using (7.9), we have (pt(t),y)
=
A{pt(t),w)
= A(puw-v)+
/ K(t-s)[B(pt(s),w-v) Jo
+K(t)(B(p(0),w-
+
(pt(s),B*w)]ds
v) + (p(0),S*n;)).
With an appropriate choice of v it leads to
Ch(\\(H(t)\\l+j\t-8)-a\\Pt(8)\\1d8)
\\Pt(t)\\ <
+Ch2t-a\\u0\\2
s)-a\\Pt(s)\\ds.
+ C f (t Jo
Together with Lemma 7.1, this gives ||p,(t)|| < Ch(\\pt(t)\\i
+ j \ * ~ s)-a\\Pt{s)hda)
+ C7fc2*-tt||tio||a.
After integration and using the H1 -estimate already derived, we get
/ \\pt\\ds
Jo
Jo
+J
\\ut(s)\\2ds),
126
Chapter 7. Cases with Weakly Singular Kernels
and thus the proof is complete. Proof of Theorem 7.2. In a standard fashion we write uh - u = (uh - Vhu) + (Vhu - u) = 6 + p. Lemma 7.3 immediately gives the desired estimate for p, so it remains to get a bound for 6. We have the following directly from our definition, (9U v) + A(0, v)=
[ K(t - s)B(6(s), v)ds - (Pu v), Jo
v e S£,
setting v = 6, it leads to
\Dt\\e\? + A(9,6)
l|fl(r)||2+/T||fl||?* JO
2
j\t-8)-a\\e{8)\\i\\0(t)\\id8dt
+ cJ
||pt||||»||dt).
Using Lemma 7.2 with a suitable choice of e, we thus have
\\0{t)\\2 + £ <
Mldt
C(\\0(0)\\2 + jf ||ft|P||
- t)-« jf* WOtfWldadt).
and obtain by Lemma 7.1 the bound
\\8(T)\\2+Jo
rT
\\9\\ldt
+
jo
\\pt\\\\e\\dt).
Further, using Lemma 7.4 and noting that 1^(0) = Rh, it becomes ||0(T)|| < C T (||0(O)|| + /
\\Pt\\dt) < Ch2(\\u0\\2
+ f
\\uthdt).
This completes the proof of the desired estimate for 0, and thus of the theorem. Under some assumptions on UQ and / , the maximum norm error estimate for (7.2) is also derived by Chen and Wahlbin [27].
7.3. The Completely
7.3
Discrete Scheme
127
The Completely Discrete Scheme
In this section we shall consider the completely discrete scheme. Since the kernel as well as t h e integrand are now singular, even when the solution is smooth, t h e product integration should be used: approximate y in Jn(y) = fQn K(tn — s)y(s)ds by a piecewise constant function, which take the value y(tj) in ( t j j t j + i ) , and t h u s Jn{y) is approximated by
K Qn(y) = E / 3+l K^ ~ s)v(h)ds = J2n-Mh)
(7.io)
where
Kn_j = f
3+l
K(tn - s)ds = f " ' K{e><^.
Jtj
(7.11)
Jtrt — j — \
Denote its error by n
"1
rtn
n
V (y) = Z ) ^-Mh)
~ /
K(tn - s)y(s)ds.
T h e completely discrete scheme is therefore n-l
(dtUn,v)
+ A{IT,v)
U° = u0h,
= ^2Kn^B{U\v)
+ (r,V),
3=0
v G S£,
^ '
'
n = l,2,.--,]V.
T h e following error estimate is the main result of this section. T h e o r e m 7 . 3 . For each t* > 0, there is a constant C = C(t*) such t h a t for t h e solutions of (7.1) and (7.12), \\Un - u(tn)\\
< C(h2
+ fc)(||u0||2 4- j
( I k t H + \\uth)ds),
t
In t h e case of a weakly singular kernel, the regularity of t h e solution with respect to time is limited, which makes higher order q u a d r a t u r e formulas as well as q u a d r a t u r e formulas based on sparser sets of time levels less attractive, see t h e economic scheme in Chapter 5. To prove Theorem 7.3 we need some lemmas. L e m m a 7 . 5 . If yt € Ll(J;L2), then kf"
\\qn(y)\\
I"
\\yt(s)\\ds
for
Nk < t*.
128
Chapter 7. Cases with Weakly Singular Kernels Proof. By the definition of K3 we have
j=0
3
and for each i G l ) , since |if (£)| < C£_c*, \qn(y)\ < £
l^(*n - a)\ f3+l
/
< C2^,^-3
I Jt
j=o
\yt{*)\dads
\yt(cr)\da,
J
where v3 = r
8-*ds = (t)-a - t]-?)/(l
- a) > 0
(7.13)
Jtj-l
and JT v3 = fN 3=1
J
(t*)1-"/^
s-«ds
- a).
°
Using integration in x and Minkowski inequality, this yields n-l J
j=0
tj
and, by interchanging the order of summation,
n-l
Jt
j=0 n = j + l
i
^°
This completes the proof. The following two Lemmas are discrete analogues of Lemmas 7.1 and 7.2 respectively, and can be proved similarly. Lemma 7.6. Let v3 be defined by (7.13) and assume that yn > 0 satisfies n-l
Un < bn + /3 ^2 un-jyj
for
n > 0,
j=o
where bn > 0, (5 > 0. Then for each t* > 0 there is a constant C = C(t*) such that n-l
yn
for
nA: < £-*.
7.3. The Completely Discrete Scheme
129
Lemma 7.7. Let K e £*() and Kj be defined by (7.11). Then for each e > 0 there is a constant Ce(||Zf ||i,i(j)) s u c n that N
N-l
N
n=l
j=l
n=l
N-l
n-l
n=0
.7=0
Proof of Theorem 7.3. With the Ritz—Volterra projection W = VhU introduced in (7.8), we write
un - u{tn) = {un - wn) + (wn - u{tn)) = en + Pn. The term pn has been estimated in Lemma 7.3. For the term 0 n , by our definition, we have n-l
(dtff", v) + A(6n, v) = J2 Kn-jB(6i,v) i=o
+ (r B , t/),
(7.14)
where rn = u?-dtWn
qn(BhW).
+
We show by an energy argument that N
N
rn
for
\\Q \\
Nk
(7.15)
n=l
In fact, choosing v = 9n in (7.14), which yields V | | 0 | | 2 + \k\\dt6n\\2 2
V ,lMVM
,
n 2
2
k\\7)+f) \\
+ A(On,n n
n
4- A(0 .Q )
n = nY,Kn-jB(6i,e ) -l
=
+ (rn,n,
3=0
whence
dt\\e\? + i r ii? < c^2 ^riiiii^iii+cur* and, after summation,
iKii+fcgini? 2
n=l
< ||^|| + Cfc E " E ^ r i l i i r i l i + c* E lkn||im n = l jf=0
n=l
130
Chapter 7. Cases with Weakly Singular Kernels
Using Lemma 7.7 with K(t) = Ct~a, we conclude that ll^ll 2 + k £
||0"||? < C||0°||2 + Ck J2 \\rn\\\\en\\
n=\
n=l
N
Combining with Lemma 7.6, in which yn is replaced by y^ — k ]T] II@n111> ^ n i s n=l
shows N
\\8N\\2
for
Nk
and (7.15) follows. Going back to estimate r n , we write rn = r7? + r% + r J + rJ where r? = u? - a t tt n , r j = 5 t (« n - W n ) = dtpn, r% = qn(Bhu) and r%=qn{Bhp). Obviously, kf^\W\\
fN \\utt\\ds ^
and by Lemma 4, *Z>2ii<£/
11*11* = /
n=lJt—1
n=l
J
Hftll^
°
\\uthda).
To estimate r j , we note that when u is smooth, B^u = PhBu and hence, by Lemma 7.5, N
t
t
*y>311
Jo
7.4. Cases with Nonsmooth Data
131
Using the inverse assumption, we have (BhP,v)
= B(p,v) < CWpUvh
<
Ch-'WpUvl
so that \\BhP\\ <
Ch-'M,.
Hence, for r j , by Lemmas 7.5 and 7.6r it follows kV
||rj||
fN
\\BhPt\\ds < Ckh-1
f
Jo
n=l
N
\\pt\Uds
7o
\\ut\\2ds).
Substituting these estimates into (7.15), it leads to ll^ll < C\\u0 - Rhu0\\ + C(h2 + k)(\\uoh
+ /
N
(\\utt\\ + I M W d s ) .
This completes the proof.
7.4
Cases with Nonsmooth Data
Consider the homogeneous PIDE with a weakly singular kernel and nonsmooth data
(
f*
ut + Au = / K(t — s)Bu(s)ds | iA = 0 on 0ft x J, [ u(0) = uQeL2(n),
in
Q x J, ^ 7 ' 16 ^
where A is a symmetric positive-definite elliptic operator of second order, B is an arbitrary partial differential operator of order /3, (/? < 2) and their coefficients are independent of t (and 5). Assume that the weakly singular kernel satisfies the following condition \K(t)\ + \K'(t)t\ + \K"(t)t2\
< Ct~a,
0 < a < 1.
(7.17)
(7.16) is a more difficult problem and requires more complicated techniques to deal with. The following regularity result is obtained by Chen and Wahlbin (1991) at Cornell University.
Chapter 7. Cases with Weakly Singular Kernels
132
Theorem 7.4. Assume that the kernel K(t) satisfies (7.17) and the initial value u0 € L2(ft), then (7.16) has a solution u(t) € C(J] H4'? f)H2) and \\u(t)\\x < C f ^ M ,
0 < A < 4 - p.
(7.18)
This result shows that the optimal index A = 4 — /? is the same as that obtained in Chapter 6 for the case of smooth kernel and which is independent of a. The proof of this theorem will be shown at the end of this section. We need some lemmas. Similar to what have been done in Chapter 6, by means of the semigroup E(t) generated by A, the solution of (7.16) can be expressed as pt
u(t) = E(t)u0 + / E{t-s) Jo
pS
Jo
K(s - r)Bu{r)drds
= Eu0 + w(t).
(7.19)
Introduce now the following Volterra integral equation w
= V(t) + Gw,
(7.20)
where G = E*K*B,
V(t) = GEu0 = E*ip,
Here a particular difficulty in the integral term K*Bu appears, which is caused by the singular function K(t). For example, the method used in the proof of Lemma 6.3 is no longer valid and more careful analysis should be carried out. Lemma 7.8. The operator G = E * K * B is bounded in C(J; H2) and for/GC(J;i^), | G / | 7 < Ct?-a
* U/IU p' = (2 - 7 ) / 2 > 0.
(7.21)
In particular, |G/|2
(7.22)
If p = 1, then Gf € C(J; H3 fl # 2 ) and ||G/|| 3 < Ct-1 f\t - s)i-"(\\f(s)h
+ *||/'(«)lli)d» + Ct~a * ||/|| 2 .
(7.23)
7.4. Cases with Nonsmooth Data
133
Proof. Using Dirichlet formula and Thomee—Zhang formula (6.17), we have Gf = j
j E(t- s)K(s - r)Bf{r)dsdr
= [ [ Jo Jo
T
E{t-T-S)K(g)Bf{T)dt-dT
= /V-r)"1 f Jo -TE(t
Jo - T-
(7.24)
T
[(t-T-S)E(t-T-OK(0
0(K(00'}Bf(T)d£dT
+ f TK(t - s)Bf{s)ds. Jo Hence, by Lemma 6.2 and (7.25),
(7.25)
|G/|2 < C A t - r ) - 1 f \\K{£)\ + \ZK'{Z)\)\\Bf{T)\\dZdr Jo
Jo
+C f \K(t - s)\\\Bf(8)\\d8
s)-a\\f(s)yds
\t-r-i)-^2ra\\Bf{T)\\didr
|G/|7 < C f f Jo Jo
< C f\t - r)^-||/(r)||^r, Jo
p' = (2 - 7)/2
and (7.21) follows. If 0 = 0 or 2 and / G C{J\ i f 2 ) , then Bf e H2~P. We have, by (7.24) for 2 - / 3 < 7 < 4 - / ? , that |G/|7
T
(t-s)-^-2^/2(s-r)-a\Bf(r)\2.f3dsdr
f{t-sY~a\f{r)\2dr
Jo and, by (7.25) for 7 = 4 - /?, that
|G/|7 < C A i - r ) - 1 /■ t " T (t-r-0 1 - 2/a (|ii:(OI 7o Jo +\ZK\t)\)\Bf{T)\2-pdtdT
+C [ \K(t-T)\\Bf(T)\2-pda
[ Jo
(t-T)-a\f(T)\2dr.
Chapter 7. Cases with Weakly Singular Kernels
134
If (3 = 1 and / e C(J; H2), this time BfeH\ since Bf / 0 on 0ft. If (7.25) is used to estimate \Gf\s as in Chapter 6, then we can only get \Gf\z < C f\t Jo
- r)"1 f \ t - T Jo
< C f\t - rr^^Wf^hdr
Ol-Z/2ra\\Bf{r)\\d^dr
+ Ct~a * \\Bfh
+ Ct"° * ||/||2.
Jo In this case, a should satisfy 0 < a < 1/2. /3 = 1 is a more difficult case and has to be tackled in another way. For example, by estimating ||G/||3 via ||/t||i, Thomee—Zhang's technique can be used as follows, tGf = [ [ [(t - s) + (5 - r) + r]E(t - s)K{t Jo Jo = E*K*Bf + E*K*Bf + E*K*Bf, where ip(t) = tip(t). Now replacing E(t) by —TDtE(t) by parts, we have E*K*Bf
= f
f TDsE(t
= T [ K(tJo
- s)K{s -
r)Bf(r)dr
r)Bf{r)drds
and using integration
T)dsBf{r)dT
-TE*
(K)' * Bf,
where K(0) = 0 is used. Similarly, E*K*Bf
= E*Bf*K
= T[
K{t-
s)Bf{s)ds
-TE*K*
B{f)''.
Jo
Hence it leads to a useful expansion tGf = E*K*Bf-TE*{k'*Bf
+ K*Bf')+T{K*Bf
+ K*Bf).
(7.26)
For the most troublesome case that (3 — 1, ||£G/||3 can be estimated by (7.26) and Lemma 6.3,
PG/Us < C f [\t Jo Jo
T)1-V\S
+C f\(t - ry-WBfh Jo
- r)-a{\\Bf\\ + \\Bf\\)dTds + (t- T)-a\\Bf\\i)dT
f\t-T?l2-"{\\f{T)\\x+T\\f{T)h)dT
+C [\(t - T ) 1 - + (t- T)-aT]\\f(T)\\2dT. Jo
7.4. Cases with Nonsmooth Data
135
Noting that (t - r ) 1 " " + (t - r)-ar = t(t - r)~a, the proof of the lemma is complete. Remark. If F = BEUQ we have similarly, K*F
= F*K
= BTDsE{s)u0
* K = BT{u0K{t)
- Eu0 * {K)')
and hence TK * BEu0 = TBT(u0K(t)
- K' * Eu0).
Because T — A~x is an operator of order —2, and B is a differential operator of order /?, thus TBT is a bounded operator in H4~@. The estimation of V(t) = GEu0 = E*K*BEu0 is more complicated. For example, if 0 = 2 and 7 = 4 - /? = 2, then ||S£?i60|| < C ^ I K H and K * iT 1 is divergent. To overcome this obstacle, Thomee—Zhang's technique can be applied to this term in the form BEUQ * K. Below, for simplicity, we assume that B is independent of t and s. Lemma 7.9. For F(t) == BEu0 * K there is \\F{t)\\i < Ct^-V+WWuol
0
Proof. Denoting <j> = ^T(^)^ = K, from (6.18) for I + /? < 2 we have directly ||F(t)||« < C / ||£(t-s)noif(s)|| z + / 5 ds Jo < C A t - 8)-W23-a\\uo\\da
Ct1-"-(l+«/2||iio||,
<
JO
and, from (6.2) for I + (3 = 2,
||F(t)||2_^ < Ct"1 y*(t - af-VWKM
+ |^(s)|)||tio||
a
+ct- K||
ITOIU < Cf>-a\\uol
0 < A < 4 - /?,
p=(4-p-
in particular, p - a = (4 - P - 2a)/2 - A/2 > - A / 2 .
A)/2,
Chapter 7. Cases with Weakly Singular Kernels
136
Proof. For A = 0 or 1 we directly have by Lemmas 6.3 and 7.9 with / - BEuQ \\V(t)\\x = \\E * (K * / ) | | A
* f\\ds
Jo
f ( t - 5 ) - A / 2 s l - « - / 3 / 2 | | ^ o | | < Ct0-*\\U0\\. Jo In order to discuss the case 2 < A < 4 — (3, we recall the modified formula (7.26),
tV(t) = E*K*f-TE*{K'*f
+ K*f')+
T(K * / + K * / ) .
Noting that /'(£) = BE(t)u0 + tBE'(t)uQ and ||/'|| < C\\{tE' + E)u0\\p < Ct~P/2\\uo\\, we have, by Lemma 6.3 for A = p + q and q = 2 — /?, that
*||V(«)IU < C
f\t-8)1-^-^2s-a\\u0\\
Jo
+c||K*/-j-K*/|u_ 2
K0IU
for 0 < A < 2 ,
(7.27)
then
\\Mt)h < ct- 3 / 2 ||uo||. 2
Proof. Noting that t = (t - s)2 + 2(t - s)s + s2 we have from (7.16), t2ut+tzAu
= \ /V (foBu = Jo
+ faBus +
KBus2)ds,
Jo
where (j)2 — {t — s)2K(t — s) and 4>\ = 2(t — s)K(t — s). Denoting z = t2ut and differentiating the above equation in t, we get / KBzds-2tAu+ / (
±DtA(z,z)
+ \\Az\\2 < f K(Bz(s),Az(t))ds + j\(t
- s)1-" + (t-
+
c(t\\Au\\
s)-<*s}\\Bu(s)\\ds) \\Az(t)\\.
7.4. Cases with Nonsmooth Data
137
By dominateness of A and Young inequality, the integration in t leads to ||*(*)ll? + f\\Az\\2ds< Jo
f\s-T)-a\\Az(T)\\\\Az(s)\\dsdt
f Jo Jo
+C I (s\\u\\2 + s f\s
-
r)-a\\Bu{T)\\dr)2ds
and hence, by Lemma 7.2 and the assumption (7.27), IK*)lli + f \\M?ds Jo
< C f\s\\u\\2 Jo
f
+ a f\s Jo
(s • 5" 1 + s f\s
r)-a\\Bu(r)\\drfds
-
r)-ar-^2dryds\\uo\\
Ct\\u0l
and the lemma follows. Proof of Theorem 7.4. Construct {wn}^, a sequence of approximate solution to w = Gu, which satisfies the integral equation w = WQ ■+- Gw, where wo = V(t) = GEu0, wi = w0 + Gw0l
wn = wn-i -f Gwn_i =w0 + ] P Gnw0, ra = 1,2, • • •. For 0 < /3 < 2 it is known, by Lemma 7.10, that I K I U = II^IU < Ct"-a\\uo\\,
p
= (4 - /3 - A)/2 > 0,
and, by Lemma 7.8, \\Gwoh
\\w(t)\\2 < \\w0\\2 + J2 \\Gnw0\\2 < Ct-a\\u0\\. n=l
(7.28)
Chapter 7. Cases with Weakly Singular Kernels
138
Further we shall consider sharper regularity estimates. If (5 = 0 or 2, we have by (7.22), ||GHU <
CtP
~"
* H h < CtP-"\\u0l
p = (4 - /J - A)/2 > 0.
If (5 = 1 and 0 < A < 2, again by Lemma 7.8, \\Gw\\x < Ctp'-« * \\w\\f3 < Ct?'-a * \\w\\2 < Ctp'~a * t-a\\u0\\ < C ^ - ' I K I I ,
P' = 1 - A/2.
In these cases we get
IMU < Mwoiu + \\GMU < ct"'-a\\u0\\ and hence (in particular, (7.27) holds)
||«IU < H^olU + IMU < c(t~x/2 +t?'-a)\\u0\\ < ct-^2\\u0\\. It remains to discuss the difficult case (3 — 1 and A = 3. By our definition, w = Gu, from Lemmas 7.8 and 7.11 we can get IM|3 = HG«||3 < Ct-1
Jo
[\t-T)l-a(\\u(T)h+T\MT)h)dT
pt
/ Jo
{t-r^^r^^drWuoW^Ct^WuoW
and Il«ll3 < ||£(*)«0||3 + M b < C{t-Z'2
+ t-a)\\u0\\
< Ci- 3 / 2 ||« 0 ||.
These estimates complete the proof. Concerning the discretization of PIDE for both weakly singular kernel and nonsmooth data, not much work has been done so far. For a special case a— 1/2, D. Xu [165] considered some time discretizations and obtained \\Un-u(tn)\\
for
0<
7
Chapter 8
Long-time Estimates Consider t h e following initial value problem ut + Au=
K(t-s)Bu{s)ds
+f(t)
for
t G R+ = (0, oo),
/g-x
u(0) = u0, where A is a self-adjoint strictly positive-definite linear operator with compact inverse in a real Hilbert space if, K(i) is a scalar function on R+ and B is an operator with D(B) D D(A) such t h a t , with the inner product (•, •) and the norms || • || in H and \\v\\j = \\Aj/2v\\, \(Bv,w)\
< C0H1HI1
with
Co>0.
(8.2)
We know t h a t , under appropriate assumptions on i^o and / , the problem (8.1) has a unique solution on R+, but in general a priori estimate obtained by the energy m e t h o d will depend on the Gronwall lemma, and the bound for u(t) will grow exponentially with t. Based on t h e research of Thomee and Wahlbin [155], we shall consider the case t h a t K is exponentially decreasing and t h a t the memory term can be dominated by t h e elliptic term, i.e. for some / and a > 0 it satisfies /»oo
(i)
\K(t)\
< le~at
and (ii)
0=
\K(t)\dt Jo
< 1/C0.
(8. 3)
T h e long-time estimates for purely parabolic case have been studied by S. Larsson [91] and others. 139
140
8.1
Chapter 8. Long-time
Estimates
Continuous Problems
First we consider a simple case where B = 0. Let Ai > 0 be the smallest eigenvalue of A, i.e. „ (Av.v) inf V T ^ > AI > 0. \\v\\2
v£H
From (8.1),
-Dt(u,v)
+ A(u,v) =
(f,v),
and then
AIM| + Ai|H<||/||. Multiplying by e
Xyt
and integrating in t, we get the following estimate
Ht)||<e- Alt K||+ f e - A l M \\m\\ds, ./o
which means that the influence of the initial value will exponentially tend to 0 as t —* oo and if J0°° ||/(s)||ds < oo, then
f
Jo
e-W-)\\f(s)\\ds
<eAlt/2 /
\\f(s)\\ds+
J0
||/(a)||ds->0
ast-^oo.
Jt/2
We now turn to the general case. Lemma 8.1. Let E(t)uo be the solution of the homogeneous case with / = 0 in (8.1), then u(t), the solution of (8.1), is given by u(t) = E{t)u0 + / E(tJo
s)f(s)ds.
Proof. By linearity and uniqueness, it suffices to show that the second term on the right-hand side, denoted by u(t), satisfies (8.1) with UQ = 0. From / K(t-s)Bu(s)ds= Jo
[ K(t-s)B Jo
f Jo
E(s-a)f(a)dads
= I [ K(t - s)BE(s Jo Jo /ȣ
a)f{a)dsda
pt — S
= / / Jo Jo
K(t~s-a)BE(a)f(s)d(rds,
8.1. Continuous
Problems
141
hence ut + Au-
/ K(t-s)Bu(s)ds
= /
\Et(t - s) + AE(t - s)
- f
K(t-s-
a)BE(a)da\
f(s)ds
Theorem 8.1. Let u be the solution of (8.1) and assume that the as sumptions (8.2) and (8.3) hold, then \\u(t)\\ < e - ^ K U + f e-^-^\\f(s)\\ds for t G fl+, Jo with some 7 > 0. Proof. Consider first the case of / = 0. Denoting w(t) = e7t?x(£), from (8.1) there is wt - -yw + Aw = / K7(t-s)Bw{s)ds Jo Now choose 7 > 0 so small that
where
K^(t) = ellK(t).
(8.4)
/•OO
/ \K7(s)\ds < (1 - 2 7 /A 1 ) 1 / 2 /C 0 . (8.5) Jo From (ii) of (8.3), /?7 —> /3 as 7 —» 0, this can be verified by the dominated convergence theorem. Taking the inner product of (8.4) with 2w(t) and using Cauchy—Schwarz inequality and the Young's inequality, we have /J7 -
AlH|2-27|M|2+2|M|? =
2
/ K^(t Jo
s)(Bw{s),w(t))ds
< \\w(t)f1+^C20 /V 7 (t- a )||Ka)||Sd8. Jo
2
Since Ai||it|| < ||w||i, after integrating in £ and interchanging the order of integration in the resulting double integral, it becomes
HI 2 +(1 - 27/A0 f \\w\\ids Jo
< \\U0\\2 + /?7Cg' / / \K^(S - <7)HH<7)||2d<7 Jo Jo
<||«o||2+)37Cg/"|K(r)||?da. Jo
Chapter 8. Long-time
142
Estimates
Further by (8.5) there is \\w(t)|| < ||u 0 ||,i.e. ||£(£)u 0 || < e-^||u 0 ||. The general case now follows from Lemma 8.1. Conclude this section by elucidating the conditions (8.3) in the case of B = A (and hence Co = 1 in (8.2)), K(t) = le~at and / = 0. Consider a Fourier component u\(t) = (u(t),ifx)j with respect to the orthonormal eigensystem {A, if\} of A, and setting v(t) = eatu\(i), we have vt + (X — a)v = IX Jo
v(s)ds,
or, after differentiation, vu + (A — a)vt = IXv, with initial data v(Q) — u\(0) and vt(0) = (a — j)u\(0). This equation has the solution of the form e r ± t , and hence u\ is a combination of e^r±~a^t, where A-j-a
r±-a =
( X+ a
\i
2
— ± ( ( - y - ) + (Z ~ a ) A ) •
In general, with the above initial conditions, both r+ and r_ are always real and will be present in the solution. In order that u\ decreases exponentially in £, one must have r + - a = (Z - a)A/ [-^— + ( ( - £ - ) 2 + (J - a)A)*J < 0, i.e. /? = J0°° \K{s)\ds = l/a < 1. If I > a, the blow-up might occur.
8.2
Backward Euler Scheme for B = A
For the time discretization of (8.1), we shall consider the following backward Euler scheme (BES), dtUn + AUn = Qn(KnBU)
+ fn
for
n > 1,
U° = u0,
(8.6)
where Kn = if (£n — s), fn = f(tn), and the following quadrature formula with non-negative coefficients o; nj = Ljnj(k) Qn(y) = Y<"njy{tj)^
y(s)ds.
(8.7)
For example, one can refer the rectangular rule with wnj = k in Chapter 4 and the modified trapezoidal rule with sparse weights cunj in Chapter 5. Note that
8.2. Backward Euler Scheme for B = A
143
Un does not appear on the right-hand side of (8.6), this would be convenient for implementation. In Chapters 4 and 5 we have derived by Gronwall lemma the error esti mates for Un — u(tn) with constants C(tn). Obviously, these estimates depend on t n , the upper limit of time, and will grow exponentially with tn. This kind of error estimates will become useless for large tn in numerical computation. The goal of this chapter is to establish similar estimates with constant C independent of tn, hence they can serve as long-time estimates. To achieve this, obviously one has to make some restrictions on the kernel K and the operator B in (8.2) and (8.3). First discuss the boundedness of \\Un\\ in the case that / = 0. Multiplying (8.6) by 2C/n, we have n-l
dt\\U"\\2 + 2 | | £ H ? <
2^njKn^{BU^Un) 3=0
Again, multiplying this inequality by k, summing up with respect to n and applying Cauchy—Schwarz inequality to the last term, under the following assumption n-l
Qn(\Kn\) = ^2unj\K(tn^)\
<0,
P<(3< 1/Co,
3=0
there is
\\uN\\2 + kjr\\u'\\\ j=l
< \\v°\\2 + pc%kJ2Yt<>>nj\Kn-A\\ui\\l 71=1 j = 0
N ~ Changing the order of summation and denoting LJJ = J2 bJnj\Kn-j\,
it follows
n=j
that
H^^ll2 -H A^XI ll^-7!!? < ll^°l[2 -K^OgA;XZZ^||t7-^[|2. 3=1
(8.8)
3=0
If Qn takes the rectangular rule with LJUJ = k for j — 0,1, • • •, n - 1, and then Wj < (3 for small /c, by a proof similar to Theorem 8.1, it can be proved that
Chapter 8. Long-time
144
Estimates
the coefficients in the sum on the right-hand side of (8.8) are bounded by those in the sum on the left-hand side, and then \\Un\\ < \\U°\\. However, let Qn be sparse, with u)nj = 0 for many j and LJUJ for some j are larger than k, the cancellation may be prohibited. For instance, using the modified trapezoidal rule, LUJ is of order & _1//2 for certain jf, and thus the coefficients of ||E/J'||i on the right is of order /c 1 / 2 > k. To continue our discussion we first consider a special case where B = A. Theorem 8.2. Assume that there are positive constants /?,7 and A: such that for K7(t) = e^K(t) and Klyn{s) = tf7(£n - *), P1,n = Qn(\K1,n\)
for
7
<7, n>l
and k < k.
Then there are positive constants &o and 70 such that, for the solution of (8.6) (with B = A), n
\\Un\\ < e-Ttn\\U°\\+k'52e-tt"->\\fi\\
for
n > 0, k < k0.
Proof. By linearity one may express the solution of (8.6) as Un = UQ + t/f H (-[/£, each U? satisfies dtU? + AUr = Qn(KnAUi)
+ 6nifn
for n > 0, i > 1,
,
.
(8 9)
Uf = si0u°.
-
The solution of (8.9) is obviously zero for 0 < n < i and U\ = (I + kA)~1kf% for n = i > 1. For n > z one may consider (8.9) as a homogeneous equation dtU? + AU? = Qn(KnAUi)
for n > i,
l
U\ = {I + kA)' kf\
i> 1.
If one can show that ||tfril<e~ 7 t "-'l|tfill
for
n>i,
(8.10)
in view of the choice of U\ for i > 0 , the theorem follows immediately. To show (8.10), with {A,
+ k\Qn(Klind)
for
n > i.
Thus we find that K l < (l + k7)- 1 (e 7 f c + Afc/3) max \dj\ < max |eP|,
8.2. Backward Euler Scheme for B = A
145
provided that 7 and k are so small that elk — 1 < \\k(l — /?), where Ai is the smallest eigenvalue of A. Since dj = 0 for j < z, we have \dn\ < \d%\ and by Parseval identity,
\\e^un\\2 = J2 \dn\2 = Yl ^2 = W^^f, x
x
from which (8.10) follows. We now turn to the error estimate. Assume that the quadrature rule is such that, for some integer g, \qn(y)\ = \Qn(y) - [ " y(s)ds\ < CV'm Jo
f " \y(s)\^ds Jo
for n > 1, j =
l,m,
(8.11) where
i»(t)iW) = X>fr(t)i. For example, for the modified trapezoidal rule, there is ftm
fin
\qn(y)\ < Ck\ \
\ytt\ds + Ck /
JO
ptn
\yt\ds < Ck /
Jtm
|y|<2>ds,
j = m = 2.
JO
We further assume that < Ce~at.
\K(t)\^
(8.12)
Lemma 8.2. Under the conditions (8.3), (8.11) and (8.12), for any 0 with (3 < (3 < 1 there are positive 70 and ko such that (3^n = Qn(\K^n\)<(3
for
7<7o,
k < k0 ,
n>l
(8.13)
holds. Proof. Note that Dt\y\ = (Dty)sgn y, using (8.11) with j = 1 and setting v = 1/ra,
Jo /*oo
v
\ Jo
roo
\K{s)\Me^sds+
/ Jo
\K(s)\ elsds =
I1+I2.
Here, by (8.12), I\ is bounded if 7 < a and tends to zero with k. Further, by the dominated convergence theorem, 72 approaches (3 = J0°° \K(s)\ds < 1 as 7->0.
Chapter 8. Long-time
146
Estimates
Theorem 8.3. Assume that (8.3) (with c0 = 1), (8.11) and (8.12) hold. Then there are positive C, 6 and /CQ such that, for the solutions of (8.1) and (8.6) (with B = A), \\Un-u{tn)\\
e-6^-s\\\utt{s)\\-^\\Au{s)\\^)ds
< Ck / Jo
for n > 0, k < k0. (8.14)
n
n
Proof. Setting e = U — u(tn), we have dten + Aen = Qn(KnAe)
+ qn(KnAu)
- rn
for
n > 1,
e° = 0, where r n = dtu{tn kY^z~ltll~j\\rj\\
t(tn).
< kJ2^~ltll-j
) —u
It is easy to see that \\utt\\ds < ke^k /
/
e- -77( ^t »--^*|)||u t t | | d s .
Further, by (8.11) and (8.12), Wq^KjAu^l
f3 \\K(tj - s)Au(s)\\^ds Jo
< Ck [ * Jo
\\Au\\^ds
and thus, with 6 < 8Q = min(o:, 7), n
n
„tj
J = l ^°
3= 1
[n(tn-s Jo
I" Jo
{n +
i)ke-6o^-s^\\Au\\^ds k)e-6o^-s)\\Au\\Wds
e-^-^WAuW^ds.
The desired result is just a consequence of applying Theorem 8.2 to (8.15). Remark that the right-hand side of (8.14) may be estimated in terms of data / and -uo with the techniques used in Theorem 8.1 and note that the time derivatives of u satisfy integro differential equations of the same type as those of u.
8.3. Second Order Backward
8.3
Difference
Method
for B = A
147
Second Order Backward Difference Method for B = A
We now deal with t h e second order backward difference time-discretization of t h e following t y p e (dt + ^d2t^Un+AUn
= Qn(KnAU)
+ fn
for
n>2
(8.16)
+ f1.
(8.17)
with starting values U° and U1 given by 0 * = uo,
and
dtU1 + AU1 =Q1(K1AU)
Introduce a quantity A by A = sup A(i/), where
and r j - = (2 ± \ / l — 2i/)/(3 + 2v) are the roots of the following polynomial Mr) = r 2 —
— r -\
— (r — r+)(r — r _ ) .
T h o m e e and Wahlbin showed t h a t A < 1.1 (their computation experience suggested t h a t 1.04 < A < 1.05). For v < 1/2 t h e roots are real, r + > r_ and hence A(z^) = 1. T h e o r e m 8 . 4 . Assume t h a t (8.3) (with C 0 = 1) and (8.13) hold, and also A/? < 1. T h e n there exist positive C, 7 and &o such t h a t , for the solution of (8.16), n
ll^ll^Ce-^CII^II + II^IIJ+Cfc^e-^^ll/^ll
for
n > 2, k < k0.
P r o o f . We shall proceed along t h e line of the proof in Theorem 8.2, and write Un = UK + U? + • • • + L/£, where (9t + ^ t ) ^ i l + ^ ^ = Q n ( ^ n A C / i ) + « n i / n [7™ = (5 mi C/ m , m = 0 , 1 , i = 0 , 1 , . . , n.
for
n>2,
We wish t o show t h a t HUTU < C e - ^ - l t t f U
for
n>i.
(8.18)
Chapter 8. Long-time
148
Estimates
Since U\ = (§J + kA^kp for i > 2, the proof will follow from (8.18). First consider the case 7 = 0 and for fixed i and v = A:A, the Fourier coefficients dn = d™ = (U^^ipx) satisfy 2dn~1 + ^dn~2 = uQn{Knd)
(1 + v\dn-
for
n > max(z + 1, 2),
where
n-i+1
d» = -± r . — r_ = ^
9
n
n-j+1
_
n-j+1
= r+— r_ ^
QJ(KJd) = Ji + •*»,
(8.19) for n > i, with the first term on the right replaced by —r_|_r_(r™ x — r™ 1 )d° /(r+ — r_) and the summation extended from j = 2 when 2■ = 0, and with the obvious modification when r + = r_, i.e. i/ = 1/2. It is easy to see that | r + | < 1 and |r_| < 1/2, and hence | j x \ = |I±
ZLz
d*| < | r n - i + . . . + r r ' | | < f | < 2|d*|.
For J2 we have IJ2I < A(i/) max 10^(1^^)1 < A/3 max |d'|, and hence |d n | < 2|d*| + A/3 max \dj\
for
n > max(z + 1, 2).
j
If A/3 < 1 we conclude that \dn\ < C\dl\. From this and the Parseval identity, when 7 = 0, (8.18) follows. We next show the inequality (8.18) for some positive 7. For n > max(i -f 1,2) and dn = (e^Uf^x) there is dn
- sT^ 7 ^ - 1 + JTT^kdn'2 =
zT2~^K^
where KljTl{s) = e 7 ^ Tt ~ s ^K(t n — s). Replace r± by p± = elkr±, the analogue of (8.19) follows. Since the minimal eigenvalue Ai of A is positive and | r + ( ^ ) | < |r + (*;Ai)| < e~ckXo for k sufficiently small, we have | p + | < e-Ko\i-i) < 1 for 7 < CAi. Similarly, 1/(1 - |yo_|) < C, and hence \JX\ < C\d%
8.3. Second Order Backward Difference Method for B — A
149
It remains to investigate the quantities A7(z/), which is obtained from replacing r ± by p± in A(v). For v < 1/2 and small 7A;, one can estimate 2v A » = 3 + 2v
2v e~2^k 3 + 2^(e~^)
1 (l-/o + )(l-p_)
2l/ < 1 + C ^ < 1 + C7 < A(i/) + C7, 3 + 2i/ - 4e^fc + e2^fc ~ 1/
which is uniform for k < k0 and 1/ < 1/2. For v > 1/2, since £ = (3-f 2z/) - 1 / 2 < 1/2, we have A
» -^
2^
°°
-'
-'
e 1)7 v °" = TZK7, E( * - "r+-r_ ^ 3 + 2z/^ 00
< 7^ ^ i 2 ( e 7 f c / 2 ) - 7 " 1 < C7A: for small k. 3=1
Hence, for small k and 7, we have |J 2 | < A/3 max \d3\ and |d n | < C|d l |, and i
(8.18) with a positive 7 is obtained. This completes the proof of Theorem 8.4. In order to derive an error estimate, we shall use the following quadrature rule of second order accuracy,
\qn(y)\ = \Qn(y)- I" v{s)ds\ < Ck2 f" \y\(mUs+Ck JO
JO
[" |y|<m>ds, (8.20) Jtn-i
and the integral Jt n_ y(s)ds will always be approximated by the left rectan gular rule as ky(tn-i). Theorem 8.5. Assume that (8.3) (with C 0 = 1), (8.11), (8.12) and (8.20) hold, and further that A/? < 1. Then there exist positive C, 6 and k0 such that for the solutions of (8.1)(with B = A), (8.16) and (8.17), we have, for n > 0 and k < fc0, \\Un - u(tn)\\ < Ck2(e-6t"\\utt(0)\\
+J
n
e-6^-s\\\uttt\\ + \\Au\\^)ds).
Proof. Let en = Un — u(tn), we have (dt + ^d2t)en + Aen = Qn{KnAe)
+ en(KnAu)-rn
for n > 2,
150
Chapter 8. Long-time
Estimates
where rn = (dt 4- %d2)u(tn) - ut{tn). Here e° = 0 and, with U1 given in (8.17), the argument in Theorem 8.3 immediately gives He1!! < Ck2(
maxJu t t (s)\\ + [ \0<s
< Ck2(\\utt(0)\\+j
\\Au\\™da)
JQ
J
(HutttH +
\\Au\\W)ds).
As in Theorem 8.3 but now using (8.20) with S < min(a, 7), we have
'
»
t
+Ck2 V e - 1 ' - ' f ' \\Au\\Wds
[U
e-*(t"-*>U^ll(mW
Finally, by expanding rn at tn, we have k V e - ^ " - | | r " | | < fcVfc [ " e- 1 '< t »-'>||u m ||ds ) J ° j=2 and by Theorem 8.4 and Lemma 8.2, the theorem follows.
8.4
The General Case for B
In this section we shall consider the backward Euler scheme (8.6) in the case that the operator B is different from the positive definite operator A and derive the discrete stability estimate in the form of Theorem 8.2. Assume that |K(t)| < I and instead of (8.2), IIA-^H < b,
(8.21)
and assume further that the quadrature weights are dominated in the following sense cjnj < ujj for n > j + 1. (8.22) Let u'nj = ^2^Zj us' For the rectangular rule, modified trapezoidal rule, mod ified Simpson rule, and etc., u'n- < C^tn-j 4- C3 will hold. Sloan and Thomee [147] obtained an estimate for a finite time interval, n
||tr,||<eIc,w^(||l70||+ib5^||/J'||) 3=1
for
n > 0.
8.4. The General Case for B
151
Thomee and Wahlbin further sharpened the techniques to improve this result as follows. Theorem 8.6. Assume that (i) in (8.3), (8.21) and (8.22) hold, and let Ai be the minimal eigenvalue of A, 7 = f min(a, Ai). There exists &o > 0 such that, for the solution of (8.6), n ||[/»|| <
e^nO-7tn||yO||
+
fc^e'^i-ytn-ill^U
for
fe
< ^ .
( 8 > 2 3)
3=1
Remark. For some quadrature rule mentioned above, (8.23) gives long time stability provided that lb is sufficiently small comparing with a and Ai. Proof of Theorem 8.6. With the notation and argument used in the proof of Theorem 8.2, it is sufficient to show that \\U?\\ < e Z 6 w » * - 7 t ^ | | t / ? | |
for n>i.
(8.24)
With Ek = (l + kA)'1 we have n
jjn
= En-ijji +k Y,
E J
r ^QJ(KJBUj)
f
°r
U
>L
(8'25)
.7=1+1
Here
k ]T ErJ+1Qj(KjBUi) = k J2 E%-i+1YiwjsKi-.aBU'i =* E I£ s=i+l
^sKj-sErJ+1A]A-1BUts.
j=s+l
Assume for the moment that n
\\k Y, ^jsK3-sE^-j+1A\\
< Icjse-^-*
for n > s.
.7=5 + 1
We have, from (8.25) and (8.21) for k small enough,
wn <
e-^-^WUtW+lb^w^^-WUtl s=i
tn
n
n
Multiplying by e^ ~% with y = e^\\U \\,
we find for 7 < Ai/2,
n-l
yn < V1 ^-IbY^^sV8
for n > i.
(8.26)
Chapter 8. Long-time
152
Estimates
By discrete Gronwall lemma, (8.24) follows. We now prove (8.26). By the spectral representation it can be reduced to show n
\k ] T ujjsKj-.sr(kX)n-j+1X\
< e~^-»
where
r(t) =
,
or, using (8.22) and (8.3), n
fcA ] T r(fcA) n - J ' +1 e- ttt »-^ < e - 7 t » - , i.e. after changing the variables, n
Q = Q(A,/c,n) = k\Y^r(k\y<e-<**»-j+i
< e-7t.
(327)
i=i
Consider first A > a and show that (8.27) holds with 7 = 0.4a. Replacing ak by k, A by A/a and 7 by 7 / a , we may assume a = 1. Then we show that for any A0 < 0.6e(« 1.63), there is a ko such that (8.27) holds with 7 = 0.4 for 1 < A < Ao and k < ko. In fact, since r(kX) is decreasing, we have for these A, with any 6 < 1 and small fc, r(kX) < r(k) < e~6k, and hence, using xe~px < (pe)-1 for x > 0, n
Q < \k^r,e~Sjke~St"-j+i
< Xkne~st"
< Ao^e-* 6 - 0 - 4 )*'^ 0 - 4 *" < X0((S - 0.4)e)- 1 e-°- 4 t - < e" 0 4 4 ", if Ao < (<5 — 0.4)e, which holds for 6 suitably close to 1. We must show that (8.27) holds also for A > Ao > 1. Summing up the finite power series in (8.27), Q can be rewritten as follows, Q = \k(rn - e'tn)/{ek
- (1 + Afc))
or e 0.4t„Q =
Afc ( e -0.6t„
= \k{e~0M''
_ (e0.4*r)n)/(1
+
Afc
_
^
- e- ( y -°- 4 ) '")/(l + Afc - ek),
8.4. The General Case for B
153
where we have set r = e yk with y = y(\, k) = -\nr(Xk)/k. Note that y(\, k) is monotonic increasing in A and l + o < e a , thus y(\,k) < A. Further, y(Xo,k) = A0 4- 0(k). An elementary investigation shows that the function \e~at — e~ 6t |, with a, b > 0 and 0 < t < oo, has a maximum b _b_
b—a
)a-6.
(
a
a
With a = y — 0.4 and 6 = 0.6, we hence have n At ^
AA;
,
y — 1
0.6
,
x
. Q.6
For k small enough, since y < A, 1
< A - A - 1 + 0{k)
X
A-l A - 0.4 ~
+
0.4 A - 0.4
+
O(fc) A- 1
< l + - ^ y ( 0 . 4 + O(*)), and thus
Further, since y(A, fc) > y(Ao, A;) = Ao + 0(&), lnJ
0.6
y - 0.4 ^
0.6
rAo-04
^ * - ^ T T l n - b ^ - * -^TT l n (-o-6— + ° W ) '
and hence ln(eo.4t„g)
_0.6 \2 , ^ „ _ , , ,3A < - £ L [ | + O(fc) - l n ( ^0 - | + V
0(k)j\.
Since 5Ao/3 is arbitrarily close to e and | — ln(e — | ) « —0.05 < 0, one may first choose AQ and then /CQ SO that the right-hand side is negative for k < /co, which shows (8.27). It remains to consider the case that Ai < A < a, where Ai is the smallest eigenvalue of A. Since y(\, k) = A 4- 0(k) holds uniformly for these A, instead of (8.27) we consider an alternative n
Qi(A,fc,n) = XkJ2e~Xtje~atn~J+1
•.
n
= -[a*JIe~atie"atn-i+1]-
Comparing the expression inside the square bracket with the previous Q(A, k, n), we see that the roles of A and a are reversed, and since A/a < 1, the analysis
Chapter 8. Long-time
154
Estimates
above is clearly valid with appropriate modifications. Taking now 7 = 0.4Ai, the proof of Theorem 8.6 is complete. As shown earlier, the stability implies an error estimate. We shall omit the details here.
8.5
Application to Finite Element Discretiza tion in Space
In this section we shall briefly discuss applications of the above results to the complete discretization of an integrodifferential equation, i.e. the following backward Euler scheme dtUn + AhUn = Qn(KnAhU)
+ P h fn
for n > 1,
U° = uoh.
(8.28)
We shall use the result on stability in Theorem 8.2 to obtain an error estimate. Checking the proof of the theorem, one sees that the properties of the operator A is contained only in the condition elk — 1 < X\k(l — /?), where Ai is the smallest eigenvalue. Since the smallest eignevalue Ai^ of Ah is bounded below by Ai, we may apply Theorem 8.3 to (8.28) with constants that are independent of ft. By using the Ritz-projection Rh,u(t) € 5^, rewrite Un - u(tn) = (Un - Rhu(tn))
+ (Rhu{t) - u(tn)) = f + pn,
where ||p n || < Cft r ||^(t n )|| r . By our definition, AhRhV = PhAv for v G H2 n # o > t h e n 0n e Sr satisfies dt0n+Ah0n
= Qn(KnAh9)
+ Ph(dtpn + rn + qn(KnAu))
for
n > 1,
and assuming for simplicity that uoh = Rh^o, we have 6° = 0. Here, rn = du(tn) — ut(tn). As remarked above, we may apply Theorem 8.2 (with H = S^ equipped with the L 2 -inner product) so that, since ||i\v|| < ||v||,
\\0n\\ < kj^e-^iWW
+ \\rj\\ + hHKjAu)^,
where Wdtp'W^Chrk-1
f'
\\ut\\rds
and
||rJ'|| < f
\\utt\\ds.
8.5. Application to Finite Element Discretization in Space
155
Thus the following theorem is immediately derived. T h e o r e m 8.7. Assume that (8.2) (with C 0 = 1), (8.11) and (8.12) hold, and let UQ^ = RHUQ. Then there exist positive C, 8 and ko such that for the solutions of (8.1) (with B = A) and (8.28), \\Un - u(tn)\\ < Chr(\\u(tn)\\r
+ /
n
e-W^WutWrds)
Jo
+Ck [ n e-6^-s\\\utt\\ Jo
+ \\u\\M)ds
for n > 1, k < k0, q
where the constant C is independent of £ n , and ||w||^ = ]T) ||Z)^.Aw||. j=o
A similar result also holds for the second order backward difference scheme, with k replaced by k2. Finally, to obtain an error bound in the case B ^ A, rather than compar ing Un to Rhu{tn), one may conveniently compare it with the Ritz—Volterra projection Vhu(tn) of u mentioned before. We conclude by remarking that even in the case that u(t) approaches its limit UOQ "exponentially fast" as t —► oo, Theorem 8.3 (and its analogue for the second order backward difference scheme) merely asserts that Un is uniformly within O(k) (and 0(k2), respectively) of u(tn). In fact, we cannot assert in general that Un has a limit as n —> -foo for a fixed k. For instance, in the case of the modified Simpson's rule, from computer experiments it appears that Un approaches a periodic limit cycle with period determined by periodic changes in the quadrature formulas. It seems, though, that the periodic changes are very small compared to the main part of the error. An important topic in connection with the long-time estimate is the asymptotic property of the solution. Engler [47] considered the following semilinear PIDE ut-Au+ K(t- s)F(u(s))ds / Jo | ^ = 0 on cft7 x (0, oo), ^ u(0) = UQ
in
=f
in
fix(O.oo),
QJ.
Assume that F{u) is non-decreasing, f(x,t) = / ( # ) , and that the kernel sat isfies K(t) > 0, K'{t) < 0, K" > 0 and sup{e\K"(t) + eK'(t) > 0 for every t > 0} = e > 0, then, for A = min(2Ai, e), \\ut(t)\\2 < C(uoJ)e~xt
as
t -> -foo,
Chapter 8. Long-time
156
Estimates
and u(x, i) has a limit u(x) as t —> H-oo, which is the solution of the following stationary problem /•OO
-Au + /
K(s)dsF(u)
=7,
w = 0 on d a
In order to calculate the solution u(x, t) on the whole domain Q x (0, oo), we suggest that the graded grid {nk)v, z / > l , n = l , 2 , 3 , - - - , starting from some time t > 0, will be useful. These problems haven't been discussed yet.
Chapter 9
Maximum Norm Estimates In this chapter we shall turn to the maximum norm estimates in two dimen sional case which are important in the study of both superconvergence (Chap ter 10) and nonlinear problems (Chapter 11). We begin with L°°-estimates of Ritz—Volterra projection Vh,u(t), which were formulated in Chapter 3, but here we only give a simplified proof in the weaker form.
9.1
L°°-Estimates of Ritz—Volterra Projection
Consider a Volterra integrodifferential operator Lu = A(t)u(t) - / B(t, s)u(s)ds Jo and its adjoint operator L*u = A(t)u(t) + /
5 * (5, t)u(s)ds.
The corresponding bilinear forms are respectively r* L(u, v) = A(u, v) + / B(t, s; Jo /o
u(s),v(t))ds
and L*(u,v) = A(u,v)+
/ 157
B*(s,t;u(s),v(t))ds.
158
Chapter 9. Maximum Norm Estimates
By using the Dirichlet formula / [ f(t,s)dsdt= JO JO we have an identity
[ [ f(t,s)dtds= Jo Js
[ f Jo Jt
fT fT / L(u,v)dt = / L*(viu)dt, Jo Jo Define the weight ) and weighted norm by (/> = >(X,Z) = (\X-Z\2+UJ2)1/2,
IML^ = ( £ \oc\<m
[
f{s,t)dsdt,
u,veHQ.
u = jh,
7 » 1 ,
Jn
respectively. We know that ( C/(2 -I), l<2
m>0,
and weighted interpolation estimates
llu - ihu\y + h\\D(u - inU)y < chr\\Druy, where I is any real number and the constant C is independent of z and h. In this section we shall use the following notations: Mm,0'
= IK*)llm,^ +
/ JO
\\u(s)\\m4>ids,
a(t) = cr(t) + /
Jo
Mm,*1 = IK*)ILf*' + / \\u{8)\\mt4tids, a*{t) =
cr(s)ds.
9.1. L°°-Estimates
of Ritz—Volterra
Projection
159
Obviously, by Dirichlet formula, / u(t)a*(t)dt= Jo
/ Jo
u(t)a(t)dt.
Lemma 9.1. Let fibea plane domain and the regularity assumption A | in (3.3) holds. Then the solution w(t) G HQ of the problem Lw = f(t) in ft x J has the weighted estimate
Proof. Follow Nitsche, letting U{ — (x{ — Zi)w(t) G HQ, i = 1,2 and noting that D2xUi — (xi — Zi)D2w + 2Dx(xi -
Zi)Dxw,
Aui = (xi — Zi)Aw + 0(Dw), we have, by the assumption i4|, that
< C ( | | D 2 U l | | 2 + \\D2u2\\2 + w2||£>2tu||2 + 2
< C(\\AUl\\
2
2
2
+ \\Au2\\ + u \\Aw\\
+
\\Dwf)
\\Dwf)
I \\DMs)h***
+ C\\*>\\i-
Jo
Thus the lemma follows by Gronwall lemma. To define the Green function, we introduce a discrete delta function 8h — 8^{x) which satisfies (6h,v) = v(z), v£S*. There are two ways to define 8h- The first definition requires 8h G 5^, then Dz8h G S£. Delseux (1972), and Douglas, Dupont and Wahlbin [42] proved that |£>m<^(*)| < C / i - 2 - m e - C l l x - ^ / ' 1 , d > 0, m = 0,1. While another definition requires that 8^ G HQ (O) does not belong to S£ but it has small support, for example, in some element r(z) including z. Obviously, in the latter case, | D m ^ ( x ) | < Ch~2~rn in r(z). According to the above two definitions, we have, for any real /, \\Dm8h\\^
m = 0,l-
Chapter 9. Maximum Norm Estimates
160
Now following Y.P. Lin [95] and T. Zhang [170], we define a regularized Green function g(t) € HQ and its finite element approximation gh{t) € S^ such that L*g(t) = 6h
(9.1)
and £ * ( 0 f c ( * ) - 0 ( * ) , * ) = O,
vGS*,
(9.2)
where cr(t) = (Te(t) is a given function satisfying
cr{t)eC^{J),
f
(j(t)dt = \
Jo
and / ( t 0 ) = el i m /
-*°Jo
f(t)a€(t)dt
for
/ <E C(J),
t0 £ J.
For example, we can take a mollifier function „
m
_ _ r,
M
_ / cxe- 1 e x p ( - l / ( l - (t - t0)2/e2)),
\t - t0\ < e,
where Cf 1 = /
exp
^|t|
—dt. 1-^
Similarly, we define a gradient type Green function G(t) £ HQ and its finite element approximation Gh(t) £ S% such that L*G(t) = -Dx6ha(t)
in ft x J,
(9.3)
and L*(G h (t)-G(«),t;) = 0,
.G5rft
Lemma 9.2. For g(t) defined by (9.1) we have \\D2g{t)\\*> <
C\\nh\^<j\t)
and ||fl(t)||2,i <
C\lnh\a*(t).
Proof. By Lemma 9.1, we have \\&9(t)\U*
+ \\g(t)\\i C\\g(tm.
(9.4)
9.1. L°°-Estimates
of Ritz—Volterra
161
Projection
It remains to estimate ||g(£)lli- By the coerciveness of A, "IMOII? < A{g,g) = L*(g,g) - j = Phg{t, z)a{t) - j
B*(g(s),g(t))ds
B*(g(s),
g(t))ds
+£
\\9(s)\\ids)\\g(t)h.
Eliminating the common factor and using Gronwall lemma we get \\g(t)h
< Ch**(t).
We shall further show the following result. T h e o r e m 9 . 1 . Assume that g(t) G HQ and gh(t) € S^ (9.1) and (9.2) respectively. Then
are
defined by
\\g(t)-gh(t)\\ltl
(t>2{aijDieDje-{-{aQ-\-v)e2)dx A(e^l+e\\e\\l^+C(e)\\ef
= L*(e, V - M)
- j
B*(e(s), ^{t))ds + e||e||^ 2 + C(e)||e|| 2
Chapter 9. Maximum Norm Estimates
162
+ C ( | l l e ^ H ^ d ^ + Cllell2 and then rp
\\e\\lt
j
\\e(S)\\1>
where Wh,*-*
< CiWDeU* + ||e||)
and HV-^lli,*-* < Ch\\D2n^ < Ch{\\D2g\\^ + \\De\\ +
\\e\\^)
< C\h\ In hi1 '2 + h)
and the theorem follows by the estimate l l e l l i . ^ H ^ l l l l e l l x ^ ^ C f t l In%*(*)• R e m a r k . In the proof of Theorem 9.1, D2gh = 0 in each element r is required, i.e. r = 2, however we believe that the estimate is valid for r > 2. On the other hand, when gh is used, for example, in the proof of Theorem 9.4, we can always consider gh G 5£ e v e n if r > 2. We now turn to the gradient type Green function. Theorem 9.2. For G(t) G Hi and Gh{t) G S* defined by (9.3) and (9.4) respectively, we have ||G(t)lli,^ + \\Gh(t)\\i,^
< Clln/^VW
and \\G{t)\\ltl +
\\Gh{t)\\i,i
Proof. Here we shall only discuss G, similarly for Gh- Denoting ip = c/)2G and using the coerciveness of A one can calculate HIGH? ** < [
9.1. L°°-Estimates
of Ritz—Volterm Projection
163
e\\G\\l^+C(e)\\G\\2
+
= L*(G,V)- /
B(G{s),iP)ds
+e\\G\\l^+C\\G\\2 = (D6h
WGWW^dsWmh,*-* 2
+e\\G\\l
+
2e\\G\\l^+C\\G\\2
+C(Jt WGMU^ds)2. Taking e — z//4, it leads to ||G||i,^
\\G{8)\\li4fld3.
By Gronwall inequality we get ||G||i^
= I (Lw,G)dt= Jo
[ Jo
= [ (Dw,6h)a{t)dt
[
(w,L*G)dt [ Jo
\\Dw\\0,p\\Sh\\o, p>a{t)dt
\\w\\2a(t)dt
Jo
< C\lnh\^2
[
[G{t)a{t)](j{t)dt
Jo
< C\\nh\^2
[
\\G(t)<j{t)\\a*(t)dt.
Jo
From the arbitrariness of cr(t), it leads to
HGWH^CIln^/VW.
Chapter 9. Maximum Norm Estimates
164
The theorem follows from the above two estimates. The main aim in this section is to discuss Ritz—Volterra projection Vh,u(i) £ Si? of u(t) G HQ which satisfies L(Vhu(t) - u{t), v) = 0,
v e S*.
(9.5)
A simplified proof for the following weaker results will be given as follows. Theorem 9.3. The Ritz—Volterra projection opreator Vh : HQ -* S^ is almost bounded in W1'00, \\Vhu{t)\\lt00
< C\\nh\ inf [u(t)-v]lf00
< C^lln/ilM*)]^,
1 < I < r.
Proof. Let e — G — Gh- By the definitions of V^u and G, and by Lemma 9.2, we have, for v € S*, / DzPh(u-Vhu)a{t)dt= Jo
I Jo
L{u-Vhu,G)dt
fT = / L*(u — v, e)dt Jo
Hii-vlli.oolleWIII.idt
< C\\nh\ = C\ In h\
f Jo Jo
\\u-v\\lt00
v]lt00cr(t)dt,
and thus \Ph(u - Vhu)(t)\\hoo
< C\ lnh| inf [u - v] l f 0 veS'J:
Finally, the theorem can be derived from the triangle inequality and H-P^Hi.oo < C||w||i |0 o,
\\u - Phu\\it00 < C inf \\u - v||i | 0 0 . ves>ri
Theorem 9.4. The Ritz—Volterra projection operator Vh ' Co(^) —> S^ is almost bounded in L°°(0), ||^^)llo,oc
9.1. L°°-Estimates
of Ritz—Volterra
Projection
165
and \\Vhu(t)-u(t)\\0too
< C|lnfc| inf [u(t)-v]0tOO vesp
< Chl\ Inh\[u(t)]li00,
1 < I < r.
Proof. By integration by parts we can rewrite (9.5) in the form L(Vhu,v)
(u(t)Fi(v)
= J2f
+ /
u(s)F2(v)ds)da.
dr
(9.6) dx*
v G S„ ,
where Fi(v) = a^DiV cos nxj and F2{v) = b^D^ cos nxj. The equality is valid for u(t) G C(Q.) and determines the projection operator Vh : Co(0) —> 5y • Noting that, for g G H2, ] T y (u(t)Fi((7) + J T
u(s)F2(g)d8yjdl
= J
(u(t)F1(g) + J
u(s)F2(0)cfa)
dr
= o, and using the trace estimates for e = (^ — # and the inverse property, l l e l l L L a r ^ C H e l l a ^ + C^llell!,!,,., l|e||2>i,T < hh - hgh,i,r
+ ||//, -
9h,i,r
< Ch^iWgn - fflln.r + ||Jhff - s||i,i, T ) + C|| 5 || 2 , 1)T
j
^iu(t)(i?,1(e)+ / r dr
F2(e)ds)dldt
+ / 5 Z f u(t){L*e + 6ha(t))dxdt JO
Jo
T
JT
fT\\u{t)\\o,JY l\\e(t)\\i,i,9r v T
+ £HCll2.1.T+ " ( * ) ) *
166
Chapter
9. Maximum
Norm
Estimates
rT
\Ht)\\0tOO**{t)dt [u(t)]0,co
From this t h e desired bound of Vh in L°° follows. Finally, L°°-error estimate can be derived by t h e triangle inequality a n d t h e b o u n d of V^, \\VhU - U|| 0j oo < \\Vh(u - U)||o,oo + \\V - ^||o,oo < C\]nh\[u-v]oiOQ
+ ||U-TA||O,OO <
C\]nh\[u-v]0tOO.
T h e theorem is proved.
9.2
Estimates for Semidiscretization
Consider now t h e m a x i m u m norm estimates of semidiscrete finite element a p proximation for parabolic integro differential equations. Following t h e proof suggested by Bramble, Schatz, Thomee a n d Wahlbin [9] in purely parabolic case, we can begin by defining a semidiscrete Green function gh(t) € S^ satis fying f (ght,v) + L(gh,v)=0, veS^ (9.7) \ gh(0) = &h in ft. L e m m a 9 . 3 . T h e r e are t h e following estimates:
WgnW + WlghlWi^Ch-1 and
\\\gh\\\
^Dt\\gh\\2 + A(gh,gh) = J
B(gh{s),gh{t))ds
and, after integration in £,
||0h(t)||2 + 2./||M||? < ||flh(0)||2+C /
f Wg^hdsWg^Widt
Jo Jo
+ v\\\gh\\\l+C
[ \\\gh\\\idt. Jo
167
9.2. Estimates for Semidiscretization
The first conclusion follows immediately from Gronwall lemma. To estimate | | | ^ | | | , introduce an auxiliary function w^t) G 5^ satisfying (v,wht) -L*(v,wh)
= (v,gh),
v G S£,
(
wh{T) = 0 in n,
v*'
^ 0)
there is a priori estimate
I K W I I i < CHICHITaking v — gn in (9.8) and using the definition of gn, it is easy to obtain that \\9h\\2
= (gh,Wht)-
= Dt{gh,wh)
L*(gh,wh)
- ((ght,wh)
+L*(gh,wh))
=
Dt(gh,wh)
and, by integrating in t, lllfffclll2 = (9»,
<
\\Sh\\0,i\\wh(0)\\0tOO
< C|K(0)||0,oo
the lemma is proved. Lemma 9.4. There are ||5h(*)l|o,i
(/
WgnWlidt)1'2 + J
\\gh\\idt
Proof. Taking the weight > = (\x — z\2 -\- cu2)1/2, u = jh, denoting ^ = 4>2gh, ¥h — Ph^P and noting (Ph
aij4)2DighD:jghdx
B(gh(s),iph)ds Jo
- /
Jn
ai:jDi(t)2ghDjghdx
< c(y - ^lu + UDgh\\)\\gh\u + c f WDg^wu-'DMmds. Jo
Chapter 9. Maximum Norm Estimates
168 Noting that
l b - ^llillfffclli < C7i||£>VlllMli < C(HDgh\\
+ \\gh\\)\\9h\\
and U^DipnW < U-'DipW + U-'D^h
-
then we have, after integration in t, that Hgh\\2+2V\\\
< l l ^ f + ^IH^^III2 +C\\\gh\\\2 + C f \\\4>Dgh\\\2ds Jo
or, by Gronwall lemma and Lemma 9.3, H9hf
+'|||*Afo||| 2 < C + C\\\gh\\\2 < C\lnh\.
It leads to \\9h(t)\\o,i < l i r M l l l ^ l l < q i n / i | 1 / 2 | | ^ | | < C\lnh\ and / llSfclli.i* < I I
|||0I>0 f c ||| 2
Taking the weight a = (t + a; 2 ) 1 / 2 , one can similarly get \\agh\\2 + |||ff£>flfc|||2 < C + C | | M | | 2 < C|lnfe| and
( y \\Dgh\\dt)2 < J (T-2dtJ a2\\Dgh\\2dt < C| ln^j Ill.rZ?^!!!2 < C|ln/j.|2. The lemma is proved. Our main results are expressed in the following theorems. T h e o r e m 9.5. Assume that the initial value uoh = RHUQ G S^, then the semidiscrete finite element approximation Uh(t) G S^ of u(t) G HQ has the maximum norm estimate K ( i ) - t * ( t ) | | o > 0 o < C / i r I In/i| 2 (||^ 0 || r , o o + f
||u t || rf00
9.2. Estimates for
Semidiscretization
169
Proof. Write UH — U = (uh — Vhu) + (Vh,u — u) = 0 -f p, where L(py v) = 0 for any v G 5^ and 0 = u^, — VhU G 5^ satisfies (0t> v) + L(0, v) = -(pu v),
v G S*,
0(0) = 0.
(9.9)
Construct the semidiscrete Green function gh(t) £ Sy such that (v,^t)-i(v,^)=0,
gh(T) = 6h
in
O.
(9.10)
By the substitution s = T — t, (9.10) can be reduced to the form of (9.7), so the estimates mentioned above hold for (9.8). It is easy to see that (0(T),6h)=
f
Dt{6,gh)dt
Jo
= I [(0,9ht)-L(0,gh)-(pt,gh)]dt Jo
= - [ Jo
(pugh)dt,(§.l\)
and by Lemma 9.4, \9(T,z)\ < [
||pt||o,oo||^||o f idt
Jo
Jo
\\pt\\o,oodt
f ||tit||r,ooA. Jo
By the estimate to ||p||o,oo in Theorem 9.4, the theorem follows. Remark. If the estimate \\gM\\mQ)
+ / Jo
(p,ght)dt,
and \0(T, z)\ < Chr\ In /i| 1 + A max ||u(t)|| rf00f n, where the ut is not included in the norm on the right-hand side. The following theorem concerns a superconvergence estimate. Theorem 9.6. Assume that the regularity assumption A^ holds and the initial value UQH — Ph^o £ Sy, r > 2, then the semidiscrete finite element approximation Uh(t) G Sp of u(t) has superconvergence estimate \\uh(t) - ^u(t)||o,oo < Cfc r + 1 |lnh|(||u t (t)|| r + [u{t)]r).
Chapter 9. Maximum Norm Estimates
170
Proof. From (9.11), 0(0) = 0 and Lemma 9.4, we have
||0(T)||Oloo < /
IMI-ilMlid*
Jo
< msx\\pt{s)\\-i s
/
\\9h\\idt
J0
s
The theorem follows from the following negative norm estimate ||/H(*)||-i < a^dl/^IU + [p(*)]i) + C7M-! < C f c r + 1 ( | | W t | | r + [u(t)]r),
r > 2 .
(Its proof is similar to that of Theorem 3.2.) An important application of superconvergence estimate will be given in Chapter 10.
9.3
Complete Discretization
Let k be the stepsize in time and Un « u(tn) be an approximation of u(t) at t = tn = nk. Consider the forward Euler scheme n
(dtUn,v)
+ A(Un,v)
= £kB(tn,tj;W,v)
+( f » ,
veS^
J=i
[/n=0
on
(9.12)
fflxJ,
{ U° = uoh in 0 . Noting that the right-hand side includes the unknown Un. Denoting W{t) = Vhu{t) and writing Un-u(tn) = Un-W(tn) u(tn)) = 9n + pn, we obtain
+
(W(tn)-
n
(3ten,v)
+ A(6n,v)
= kJ2Bn{ej,v)
+ (rn,v),
v e S*,
(9.13)
where rn = r" +r^ +r^ +r^ ,
rJ =
n Q
(BhU),
r?=gn(Bhp).
By the maximum norm estimates of p in Section 9.1 we can prove as in Chapter 4 that * y > ? | | o , o o < n=l
[ -70
" \\pt\\o,oods
+
/ ^
" ||«t | | r , o o * ) , J
171 171
9.3. Complete Discretization N
rtN
r kJ2W 2\\o,oo
IMkoodt, Ktllo.oo*,
72=1 72=1
,J 0
J° '
and J* kk
rtN r
\\r33 llo.oo llo.oo <
Y] Y] '
J
" « - » " >
J
I
rtN //
\\Ph(Bu)t\\
\
'x
lIIl
7
J
(\\u\\ + K ( | | ^ | | 22t, oo oo + K || || 22 ,, oo o o )) * * ,,
»
\ lI lI X
II
J
II
II
J 5
/
n=l ° ° where the property £ h = PhB is used. Using the inverse property, (Bhp,v)
= B(p,v) Ch-^ph^Mo,!, BfoT,) < CWpWiMi,! qiHlLoolli;!!!,! < C7^-1|tp||i,oo||«||o,i.
it leads to ||^||o,oc
1
||(B,,p)t||o,oodt /""(HPIII.OO / " ( l l p l l l . o o + II^III.OO)^ IHIl.ooJdt
Jo Jo
< Cfc|lnfe|(||«o||2,oo+
j
(||«||2,oo +
|K||2,oo)dt).
Combining these estimates we get N
ftN
( ^0||r,oo
+ /
\
|K||r,oo*j
JJo
nn=l =l
°
+Ck\ +Ck\
lnh\(\\u l n / l | ( |0|\\t2i^o | | 2 , o o + J^Q
( |K | « tl lk| 2 o , ooo +
| | « t t | | 0\\utth^)dt). ,oo)dt).
We now define the fully discrete Green function gn € S£ satisfying j (V,dtgn)-A(v,gn-1)+ )
[gNN=8h= 6h \g
ft, in O,
£
kBn(v,gi)
= 0,
j=n-l
»€«?,
,Q ^ (9.14)
( 9
>
N,N-l,N-2,---. n = N,N-1,N-2,-■ ■.
Note here that the upper limit of the quadrature formula is N — 1 but not N. Similar to the proof in the semidiscrete case, one can also get the following estimate (9.15) llbl snn||Li(n)
172
Chapter 9. Maximum Norm Estimates
Taking v — gn~x in (9.11) and summing up for n, we have N
N
Y/(dten,gn-1)
n
n
+ Y/[A(e,gn-1)-Y/kBn(^,gn-1)}
n=l
n=l
= ^ ( r " , ^ - 1 ) . (9.16)
j=l
n=l
Exchanging the order of summation, it becomes N
N-l
n
n 1
N
(e ,g - )-k^2(en,dtgn)-(o°,90)
kJ2(dto ,g - ) =
N 1
n=l
n=l
(8N,9N)-(90,9°)-kf2(6n,dtgn)
=
n=l
and N
n
N
n=lj = l
N
N
n=lj=n
N-l
n=l i=n—1
By the definition of gn and (9.12), we have N
N
e (z) =
(eN,9N)
0
= (e ,g°) + kY/[-(on,dt9n)
+ Mon,9n-1)
n=l N
N-l
n
J
N
- J2 kB(6 ,g )}+k £(r ,g - )(6 ,g°) + kY,(rn,9n-1), i=n—l
i
n
n 1
0
n=l
n=l
and then, by (9.13), ||^||o,oo < ( | | ^ l | o , o o + * £ | | r l o , o o ) m « | | 5 n | | o , i
+ fc)|lnfcj5.
Combining the estimate of pn, the following result is proved. Theorem 9.7. Assume that Un G S£ is the solution of (9.12), then \\Un - 1i(t„)|| 0 .oo < C{hr
+ k)\ l n / f ^ K l k o o + j
""(KHr.oo + ||«tt||0,oo)dt).
When r > 2, we also get the following superconvergence estimate \\Un - Vhu(*»)llo,oo <
C(hr+1+k)\\nh\\
Chapter 10
S u p er convergence Consider an initial boundary value problem for PIDE
K , v ) + £ ( t i , v ) = (/,v), u = 0 dfl x J, u(0) =
UQ
veH^
teJ=(0,T], (10.1)
in ft,
and its semidiscrete finite element approximation Uh(i) G S^. Write e = Uh — u= (uh — Vhu) + (VhU — u) = 6 + p, where 6 = uh — VHU satisfies (Ouv)+L(0,v) = -(pt,v), veS*, 0(0) =0 on 9 0 x J, 0(0) = u0h - Vhu0 = 0 in ft.
(10.2)
Taking i; = 0* in (10.2) as in Chapter 4, we can get a superconvergence estimate for the gradient V0 in L 2 (ft),
wmhzch'ifwutwid*)1'*. Jo
The main purpose of this chapter is to derive L°°-superconvergence for V0, first by energy method and then by Green function. Finally we shall also give its important application to numerical computation of higher accuracy.
10.1
The Energy Method
We first follow the argument proposed by Thomee, Xu and Zhang [158], i.e., use the estimate ||et|| in L2(il) to derive superconvergence of V6 in L°°(fi). 173
Chapter 10. Superconvergence
174
Denote by Gh(t) € S^ the gradient type Green function defined by (9.3) for the integrodifferential operator Au — fQ Bu(s)ds. From Theorem 9.2 and the imbedding theorem, we know that ||Gfc(t)||
= I f (Dz6h,9)a(t)dt\ ' ' Jo
= \j
= \ [ ' ' Jo
L*{Gh,9)dt\
'
L(9,Gh)dt\ = \J (et,Gh)dt\
< [ ||e t ||||G h ||d*
\\et\\e*(t)dt.
Since a(t) is arbitrary, it follows that ||V0||o,oo
IMI
\\utt\\rdt^
the following theorem is at once obtained. Theorem 10.1. Assume that the initial value ito/i = VhUo = Rh^o £ S£, then the gradient V# = V(^^ — Vh,u) has the superconvergence estimate | | V ^ ) | | o , o o < C / i r | l n / l | ( | | n 0 | | r + | | ^ | | r + y>
WuttWrdt).
Remark. In the case r > 2, one may derive the superconvergence esti mate of ||et||_i j00 (similar to the negative norm estimate ||e||_i): IN|-i,oo = C K ^ 1 - * ) ,
e>0.
Thus, using another estimate
j
Dz9(t,z)a(t)dt\ = \f
{euGh)dt\
< [ ||e t ||_i i 0 0 ||G h || M cft < C\\nh\ f Jo Jo
||e t ||l li0O
10.1. The Energy Method
175
and \\W(t)\\o,o0
6>0,
teJ,
(10.3)
details will be omitted here. Next we shall turn to another interesting method for the operator Ah. In Chapter 4, Ah was defined as a discrete analogue of the operator A, i.e. for any u G HQ , AhU G S^ satisfies (Ahu,v)
= A{u,v),
v G ST-
If it G i f 2 P | i f o , by the identity A(u,v) = (Au,v), v G HQ, it leads to (AhU,*;) = (Au, v), v G S^\ and then A^iz = PhAu and | | A ^ | | < \\Au\\. By recalling the L°°-imbedding estimate in two-dimensional case Nkoo^Clln/ip/'H!,
»e5?,
we discover that the operator Ah will play an important role in the study of W^'^-estimates (Chen [18,21]). Lemma 10.1. For any v G S^, there is the imbedding inequality Hw||i,oo < OIln/i^^llAfcwII. Proof. For the elliptic operator A, define the gradient type Green function Gh G Sp such that A{v,Gh) = Dv{z), v G S^. Let i ^ be the Ritz-projection operator related to A. Construct w G HQ such that Aw — Gh in Q. We know that | H | 2 < C\\Gh\\ and ||G /l || 2 = A(ii;,Gfc) = i4(ii/it£;,Gfc) = DRhw(z) < Ch-2/p\\Rhw\\hp,
2
Using the boundedness of Rh in W 1 , p , 2 < p < 00 and the imbedding inequality HHkp ^ C \ / P I I H | 2 , we have ||i^HkP <
C|MII,P
< CJp\\w\\2 = Cy/p\\Gh\\.
Taking p = | lnft|, we get \\Gh\\ < C\ \nh\1/2 \Dv{z)\ = \A[y,Gh)\
=
and
\{Ahv,Gh)\
< ||A|,t7||||Gi,|| < Cllnfcl 1 / 2 !!^^!!.
Chapter 10. Superconvergence
176 The lemma follows. Construct Wh{t) € S^: such that
{whu v) + L(wh, v) = (/, v), = 0 in ft, h
{ w (0)
v € S£,
(10.4)
which can be written in the following operator form wht + Ahwh - / Bhwh(s)ds Jo
= Phf.
Lenima 10.2. For the solution wh G S^ of (10.4),
\\Ahwh(t)\\ + H M I i < C[j% \\f\\\dt)1/2 or < c ( | | / ( 0 ) | | + jf*||/ t ||cft). Proof. Taking v — AhWht in (10.4), it becomes A{whu wht) + (Ahwh, Ahwht)
- I (Bhwh(s), Ahwht(t))ds
= (/, Ahwht)
Jo
= qh. (10.5)
Two terms on the left-hand side can be calculated as (Ahwh,AhWht)
= -Dt\\Ahwh\\2
-
(Ahtwh,Ahwh)
and / (Bhwh(s),Ahwht)ds Jo
= Dt / (Bhwh(s),Ahwh)ds Jo -(Bhwh(t),Ahwh(t)) - / [(BhtWh(s),Ahwh) Jo
+
(BhWh(s),AhtWh)]ds,
where Aht means that the coefficients of Ah are differentiated with respect to t. Bh, Bht and Aht are dominated by AhThere are two ways to treat qh'qh = (f,Ahwht)
=
Ah(Phf,wht)
^CHP^/iiiiKtiu^cii/iiiiKtii!
10.1. The Energy Method
177
or, for superconvergence estimate, qh = Dt{f,Ahwh)
- (fuAhwh)
-
{f,Ahtwh)
< Dt{f,Ahwh) + c(||/|| + IIMDII^^II. Hence, from (10.5), y\\wht\\\
+ ^Dt\\Ahwh\\2
< C\\Ahwh\\2 + gfc
+ A / (^^(sJ.A^fcWJds + C / ||^^(5)||rf5||A^h(0||. Jo Jo After integration in t and using Young inequality, we have [T\\wht\\*dt+\\Ahwh{T)\\2 Jo 1 fT fT 2 < - sup \\Ahwh(s)f + C / I I ^ ^ H ^ + / (fcdt, 4
s
Jo
JO
where
/ Qhdt<^J WwKWidt + cJ \\f\\ldt or f q ^ < i s u p | | A ^ ( t ) | | 2 + c ( | | / ( T ) | | + / T ( | | / | | + ||/ t ||)dt) 2 . 4 K Jo t
+ \\ut(t)\\r + J
\\utt\\rdt).
Proof. From (10.2) with / = — pt, Lemmas 10.1 and 10.2, we find that ||V0(t)|| o ,oo
178
Chapter 10. Superconvergence
The theorem follows by the estimates of | H | and \\ptt\\ obtained in Chapter 4. Before ending this section we discuss full discretization, for example, back ward Euler scheme. Write e" = Un-u(tn) = (Un-Wn) + (Wn-un) = 9n+pn, n n n n W = Vhu(tn), then 6 = U - W € S* satisfies
{ where
r-^
n-l n n 3 (d ,v) + == 22kB(6 (dttO 0n,v) -h A(6 A(0n,v) 22kB(6J,v) ,v) )v)
n n + ,v), + (r (r ,v),
0° O, nn = = l1,2,3, ••-, 0° = = 0, , 2 , 3 , ••■,
B 6veS*, Sr\
+ ,.»,
_
r?+
rj
rn = Q^n
r
)
=
_
(10.6) (10 6)
^
r» = r?+ r2" + rj, r? = dt(«» - W") = - 0 t p » , r2 r% t(tn)-d tu^ r? = = uut(t rj == g qZ(B f t i WhW). ). n) - 8 t ii», For simplicity, assume that A and B are independent of time. Rewriting (10.6) in the form nIL—- lJ.
n n (d = Y,HBhO ,v) , t O + (r+n ,t;) he ,v) (Bt9tne,v)n,v)++(A(A = E * jW (*■".«) he ,v)
and taking v = Ahdt6n,
(10.7)
we have n
n—1
;4(5 W", Ahhddt6tne) )==££ **WW, A(0 3 t 0") + (A t0", h 0», A t
n , A,a Ahtd0") ) +(r», (rAn,fcA dten). Sth0»). te +
3=1
Noting that n n 22 n n 11 9n^) n ) = = (2||A {2\\Ahh60»|| \\ -2(A ))/2k ((A4h0^ ,A ,A -2(A^",^rhdt9 he ,Ah6 - ))/2fc n2 2 n l 2 n (\\Ah6 \\ - \\Ahe -'\\ + = (|K
96nn~-l)\\2)/2k,
summing over n and exchanging the order of the summation, it leads to N "E ll^"l|2 + E IfoHl? + ^\\A ^ I I ^h9" I fI 2 < < £E EE fc(BB^'^«H ^'^«H +r + hrh n=l n=l j=l n=l
n=l
j=l
N
< Y,WJ,Ah{9N
- e^1))
+ rTV (10.8) h.
i=i
For superconvergence, N
krh = kYy,AhdtP)
N
= (rN,Ah6N)
+
fc^(atH,
A^""1).
10.1. The Energy Method
179
Let | | A , H I = max. HA^H, l<j
then, from (10.8), we get \\AhoN\\ < \\Ah6n\\ < Ck(j^\\BhV\\ j=l N
+ 2\\rn\\ +
2kJ2\\dtrj\\) j=2
N
WWII + 2* X) \for11| + 2 m « ||H ||.
i=i
-J~
i=2
(10.9)
We now analyse the last two terms on the right-hand side of (10.9). By the technique used in Chapter 4, we have kj^ \\dtr{\\ < C [ j=2 ^°
N
\\Ptt\\dt < Chr [ N(\\u\\r + |K|| r + ll^ttllr)*, ^°
*EEiiMii
and N
kY,\\dtr{\\ j=2
N
< kJ2( 3=2
['
\\Da{BhW)\\da + I''"'
Jtj-i
\\Da{dtBhW)\\ds)
^°
< Ck [ N(\\Wh + \\Wth)da
Pt(t)dt\\<max\\pt\\
J tTL— 1
K t | | d s < fcmax||utt||,
and
IKII <
Ck / n ( | H | 2 + IKI|2)da. Jo
Chapter 10. Super convergence
180
Substituting all these estimates into (10.9) and using f(t) = /(0) + / f'(s)ds, Jo the Gronwall lemma and Lemma 10.1, we derive the following theorem. Theorem 10.3. Let Un G S^: be the discrete solution of backward Euler scheme (10.6) and W = Vhu(t) G S^ be the Ritz—Volterra projection of u, U° = W° = RhUo, then 0n — Un — W(tn) has super convergence estimate I I H I l . o o < Chr\
l n h l ^ U u o l l r + ||«t(0)||P + j
+Ck\\nh\l2(\\uQ\\2
" IM|r*)
+ ||ti„(0)|| + j " ( K i l n + ||ut«||)
The Crank—Nicolson scheme can also be discussed in the similar way.
10.2
Gradient Type Green Function
In order to weaken the requirement on differentiability of the solution u with respect to t and further to investigate the general nonlinear problem (Chapter 11), we introduce a gradient type Green function Gh(t) G S^ for PIDE such that UGhuv)-L*(Gh,v)=0, v€S?, . [WW) \ Gh{T) = Dz6h in J2, where 6h is a discrete delta function. Lemma 10.3. For Gh{t) G S£ defined by (10.10) and any / G L2{J, or / G L°°{J, L 2 ) and ft G LX{J, L 2 ), we have
/
Hl)
(LG^dt^Cllnh^WlfWU
Jo
OT
+
£\\ft\\dt).
Proof. Construct an auxiliary parabolic projection Wh(t) G Sy such that (whuv)
+ L(wh,v)
= (f,v),
veS?,
Wh(Q)
= 0 in ft.
Taking v = Gh and using Lemma 10.1, we have / {f,Gh)dt= Jo
f Dt(wh,Gh)dt=(wh,Gh)\l Jo = D(wh(T),8h) = Dzwh(T,z) <
C\\nh\\\Ahwh(T)\\.
10.2. Gradient Type Green Function
181
The lemma thus follows from Lemma 10.2. Our key result for Gh can be stated in the following theorem. Theorem 10.4 (Chen, 1992). For Gh G S£ defined by (10.10), we have /
\\Gh\\dt+
\\DxGh(x,t)\\QAdt
[
€>0,
JO
JO
and
WGnWlidty'*
(£
Proof. For convenience of the proof, consider Gh(t) G S> satisfying f (Ght,v)+L(Gh,v) \ Gh(0) = Dz6h
= 0, in Q.
0
v€S^ \
. - )
In fact, by the substitution £ = T — s, (10.10) can be transformed to the form (10.11). Introducing double weights as follows,
a, 2 ) 1 / 2 ,
7
> 1,
and denoting ip = 4>2oc(j2(3Gh, ^h = Phi/> and I(t) = \\(/)aa^DGh\\, we have ^iy\\r^DGh\\2
^Dt\\r^Ghf
< W,Ght) + f (0 2a
Oi^^DiGHD^Gndx
J S2
= (Ght,^-iPh)
+ A(Gh,iP-il>h)-
[
B(Gh(s),^h)ds
Jo a 1 +7;H ^~ Ghf 1
- [ Jo.
aiiDi4?a
<^(s)
(10-12)
here the equality (ip — iph, v) = 0 for v € S^ and (10.11) are used. Noting ||0- C V-' 3 Dn
< W^DGh\\
+Ca\\
Chapter 10. Superconvergence
182 and with 7 suitably large, there is
a H ^ ' Va-
Substituting these into (10.12) and applying the Young inequality, the term I(t) on the right-hand side can be cancelled, Dt\\4>a^Gh(t)\\2+^(t)
< CaW-WGiW2 +C0\\
+C( where, for 0 < (3 < 1,
dS
f\^fI{s)ds\\
2PdS l2(s)dS
(I ^/^ ) * l 0 l /
t*
rr(t\
\2
r*
Cl
rr(t\
Ci0 T) l2{3)dS
* 'l Cl
After integration in t, we have a
2
2
0 2 \\r
<||^o;'3Z?^||2
+ G(a|||r- 1 a' 3 G f t ||| 2 a
3 1
2
T
2
1 2 +/3\\\ ) +fTC{l3) f I (s)dsdt. +/3|||<£
Jo Jo Jo Jo
Recalling that W^D8h\\
< Ch^U ChPWaaDS D6hh\\\\ < chaCh^' +?-2
and using Gronwall lemma, we get, for 0 < 0 < 1, that J |0V G hh|| + |||0V»DG |0V»G |||0V'DG f hc ||| a+ 2 < Ch ?- + C ( a | | | 0 a - V G h | | | + iSIII^^-^hlll).
In particular,
2 U2G2Gh\\ DGh<\\\
(10.13) (10.14) (10.14)
and for 0 < /3 < 1,
II^G.II GIII^-^IH, (10.15) | | ^ G h | | +III^^G.III^Cft^CG/JIII^G.III + | | | ^ I 3 G h | | | < C ^ - + C C ' ) 9 | | | ^ G h | | | HH0-111^-^111,
10.2. Gradient Type Green Function
183
\\*pGh\\ + IH^DGfclH < CbP-2 + q i l ^ ^ G f c l H , \\Gh\\ +
(10.16)
\\\DGh\\\
Taking / =
<€(|||^X>G h ||| 2 + |||0G f c ||| 2 )+C(e)|lnfc|,
e > 0,
or \\\cf>Gh\\\2 <2e\\\>2DGh\\\2 + C(e)\\nh\.
(10.17)
From (10.14) and (10.17) with e suitably small, we obtain ||^ 2 G h || + \\\4>2DGh\\\ + i n f i l l < C\ ln^p/2. But in (10.13), there is the restriction (3 < 1 which is difficult to overcome. Taking f = a^Gh and / = Gh in Lemma 10.3, there are only
Ilk^G^III^GIln/il^llla^G^II1/2 and IIIGfclH < CIln/il^WDGfclll 1 / 2 <
Ch-'llnh]1?4
respectively. Therefore from (10.16) we have III^GfclH < GhP~2
+
C|||^-1G/l||| < C/i^lln/il1/4,
and then |||^/2Gft||| < G I l n / ^ m ^ Z X ^ I H 1 / 2 <
Ch-1+^2\\nh\3/8.
Finally, together with these estimates and (10.15), we get, for (5 close to 1, that I I V G „ | | + | | | ^ £ > G h | | | < Ch?1-1
+ c^-i|||^Gh||| 1+ /2 3 8
< G/i- " |ln/i| /
+ G|||^/2Gft|||
< G/i-°- 5 - e ,
e > 0.
From it we can derive that / ||DG h || 0 ,i
184
Chapter 10. Super convergence
and / JO
\\Gh\\lAdt < f
U^^fU^G^dt
JO
< Clln/ilsupH^G/,11 2
t
And, by the embedding inequality, / \\Gh\\dt
< C/i-°- 5 - £ ,
then the theorem is proved. R e m a r k . We are not sure if the estimates in Theorem 10.4 can be im proved, for example, replace Ch~0b~€ by C|ln/i| A . In order to do this we must, at least, make better estimate for the term IHc^G^M, 0 < /? < 1. Fortu nately, this can be achieved for the purely parabolic case as follows, see Chen [18](1992). Consider the purely parabolic case, i.e. where the operator B disappears, and hence the restriction j3 < 1 will be removed. Now (10.13) is valid for any a > 0 and /? > 0. In particular, we have \\paGh\\ + \\\pvDGh\\\ < C + C\\\PG\\\ +
C\\\aGh\\l
\\p2Gh\\ + \\\p2DGh\\\
+ C\\\pGh\\l
\\a2Gh\\ + \\\a2DGh\\\
+ C\\\
and On the other hand, taking / — p2Gh and o2G\l in Lemma 10.3, there are \\\pGh\\F
+ C\\nh\
\\\aGh\\\2 <e\\\^DGh\\\2
+ C\\ah\
and
respectively. From these estimates, then \\\pGh\\\ +
\\\oGh\\\
and \\poGh\\ +
\\\PcrDGh\\\
10.2. Gradient Type Green Function
185
Finally the desired result can be derived by lll^-V" 1 !!! \\\(/)aDGh\\\ < C|ln/i| 3 / 2 .
[ f \DGh\dxdt< Jo Jet
For the purely parabolic problem, instead of double weights, we can choose a single weight
I
T
\\Gh\\hldt
and fT \\G\\dt + ( [T WG^dt)1/2
< Chr\\nh\2(
\\V{uh{t)-Rhu(t))\\Qi00
Jo
or < Chr\ lnh\ max ||i^(s)|| r , s
where the triangulation of O needs merely to be quasiuniform. Proof. Write uh - u = (uh - Rhu) -f- (RhU — u) = 0 + p, where 6 = Uh — RhU G Si? satisfies (9uv)+A{e,v)
= -(Puv),
veS*.
Taking v = Gh G S% and integrating in t, we have \Dz6{T,z)\
= \[ Jo
(Pt,Gh)dt\
< fT\\pt\\o,oo\\Gh\\o,idt
WptWl^dt)1'2 Jo
\\pt\\\\Gh\\dt
and then the theorem follows from the estimates of pt obtained in Chapter 4.
186
10.3
Chapter 10. Superconvergence
Applications of Superconvergence and Ex trapolation
Let uh(t) G S!? be the semidiscrete finite element solution of PIDE, and Vhu(t) G S^ be the Ritz—Volterra projection of u defined in Chapter 3, and in Chapter 4 we have proved the following superconvergence estimates, \\{uh-Vhu){t)\\li2
< C(u)hr\lnh\2.
(10.18)
Superconvergence of the gradient V(uh — Vhu) is an important property of the finite element approximation to which attention has been paid. First, by using superconvergence estimate in H1 we can derive maximum norm estimate for Uh, at least in two-dimensional case. Second, when we face general nonlinear problems, this kind of superconvergence estimate becomes necessary to control the boundedness of gradient Vix/l(t), see Chapter 11. Below we shall recall the other important application to numerical compu tations of higher accuracy. Regarding the element analysis method in studying superconvergence, see the summary paper of Chen [17] (1983). We begin by considering the (elliptic) Ritz-projection R^u G 5^ satisfying A(Rhu-u,v)
= 0,
veS*.
Let IhU G Sp be the interpolation of it, then 6 = R^u — I^u G 5^ satisfies A(0,v) = A(rh,v),
veS^
where r^ = u — Ihu is the error of interpolation. We first analyse the linear finite element in one-dimensional case. Denote a set of nodes by Zh = {x0 — 0 < x\ < • • • < xN = 1}, and rh = u- Ihu = 0 at each node Xj, j = 0,1, • • •, N. Using integration by parts, we have A(rhi v) = 22 /
-L
{ar'hv' +
a0rhv)dx
rhF(v)dx
10.3. Applications of Superconvergence and Extrapolation where F(v) = —olv1 + and it is believed that
CLQV.
187
Let Gh G Sh be the gradient type Green function
IIG^||i,i < C (without the logarithm factor ln/i). Then there is the following superconvergence estimate ||fi||ifoo
(10.19)
On the other hand, calculating I^u and its error directly, we know that rh = u- Ihu=
1 1 1 - ( x - Xj)(x - xj-1)[-u"{x) - - ( x - Xj)v!"{x)] + 0(h4)
and (u - Ihu)'{x) = {x - Xj)u"(x) + 0(/i 2 )|M| 3 ,oo, where Xj = (x^ + Xj-i)/2 is the midpoint of the element Tj = particular, we have the following super-approximation (u-Ihu)'(xj)
=
(XJ_I,XJ).
In
0(h2)\\uht00.
Finally, combining the two above estimates, we obtain the following useful superconvergence result, (uh - U)'(XJ) = 0(h2)\\u\\3i00.
(10.20)
A more convenient algorithm is to construct higher degree interpolations. Let l\h be an interpolation operator of piecewise second degree in each large element rj = (x2j-i,x2j)One can obtain easily by (10.19) that ||/2VHl,oo < Cllfllkoo,
and obviously, l l ^ - H l l , o o
Then hhUh possesses the following global superconvergence \\llhUh - Ti||if00 < | | / 2 \ K " IhU)\\ + \\llhU ~ Ti||lf00 < C/l2||u||3,oo.
(10.21)
Here, the partition is only required to be quasiuniform. For two-dimensional case and triangular linear finite element approxima tion Uh G Sh, the global superconvergence results (10.19) and (10.21) are still valid, but the triangulation is required to be almost piecewise uniform.
Chapter 10. Super convergence
188
Strongly Regular Triangulation (i.e. C-triangulation, Chen [16], 1980). Any two adjacent triangles form an approximately parallel quadrilateral nP 1 P 2 ^ > 3^4, i.e. their two opposite side vectors P1P2 and P3P4 satisfy I P1P2 - P3P4 I < Ch2
(C-condition).
The uniform triangulation is, of course, a C-triangulation, but the latter can simulate more general domains with curved boundary. Piecewise Strongly Regular Triangulation (i.e. PC-triangulation, Lin and Xu [102], 1985). The domain ft is divided into several subdomains fij, j = 1,2, • • • ,7Ti, by macro-straight lines, and then each £lj is subdivided into a C-triangulation J%, and Jh = Ujlj Jj 1 forms PC-triangulation of Q. The meeting points inside Cl of these macro-lines is called inner meeting points. Six Pieces Strongly Regular Triangulation (i.e. 6PC-triangulation, Chen and Liu, 1987). It is a PC-triangulation, and there are six elements around each inner meeting point which satisfies the C-condition. One can easily construct a PC-triangulation with some inner meeting points for any domain, and a PC-triangulation without inner meeting point for a polygon. We can also construct 6PC-triangulation for a class of extensive domains, for example, a circle or a convex smooth domain, and so on. Superconvergence of the gradient is studied by many authors. The main results can be summarized as follows. Theorem 10.7. Assume that the triangulation of Q is C, or PC (without inner meeting point) or 6PC, then the Ritz-projection Rhu E S% has the global superconvergence \\I$h(Rhu) - u\\liOQ,Q < CA 2 |lnA|||u|| 3j00> n. For PC-triangulation with inner meeting point A, then in subdomains of the following form,
nA = {xeo, \x- A\ >r/>o}, we have global superconvergence, i.e. \\llh{Rhu)
-u||i.oo f n A < C(ry)/i2|lnfc|||ti||31oofn.
Superconvergence properties mentioned above can be generalized to vari ous cases, for example, the nonlinear elliptic case (Chen, [15] 1979), the linear parabolic case (Thomee, Xu and Zhang, [158] 1989), the nonlinear parabolic case (Chen, [18] 1992), as well as the linear and weakly nonlinear hyperbolic
10.3. Applications of Superconvergence and Extrapolation
189
case (see Q. Lin, H. Wang and T. Lin in Syst. Sci. Math. Sci., 41(1993), 331-340) and so on. Under the triangulations considered in Theorem 10.7, the interpolant Ih,u G Sh possesses the following super-approximation for arbitrary bilinear form A (not necessary coercive), \A(Ihu-u,v)\
< C/i 2 ||u|| 3 , p |M|i, p >,
v G Sh.
Therefore Theorem 10.7 is also valid for the Ritz—Volterra projection Vh,u(t) G Sh, i.e. \\Vhu(t)-Ihu(t)\\hoo
F(v))/12 + 0 ( A 4 ) | M | M
= h2(H(u),v) where H(u) = {{aiu")i + a0u")/12. 0(z) = A(9,gh) =
+
0(h4)\\v\\1A,
Taking v = gh we get h2(H(u),gh)+0(h4)\\gh\\1A.
Chapter 10. Super convergence
190
Replacing gn by g and noting \\gh — #||o,i = 0(h2), expansion at the nodal point z = x3?, (uh -
U)(XJ)
= C(Xj)h2
we get an asymptotic
4- 0(/i 4 ).
(10.22)
When the grids are refined twice, we obtain another approximate solution uhf2 and its expansion at original coarse grid Xj,
K / 2 - u)^-) = c{xi)h2n + 0(h4), where the constant C(XJ) exists and is independent of h. Therefore, their linear combination EXU(XJ)
= (4uh/2 - uh)(xj)/3
= U(XJ) + 0(h4)
is of high accuracy at the refined point Xj = (XJ -+- Xj_i)/2, and there is the following Chen—Lin formula EXU(XJ)
= uh/2{xj)
-f - { { u h / 2 - uh)(xj) 4 {uh/2 - uh)(xj-
)) = U(XJ) 4 0(/i 4 ).
Another application for asymptotic expansion is to get a x osteriori error estimates. Because, by computing both Uh and uh/2, we can get an asymptotic error expression (uh/2
- u)(z) = --(uh/2
- uh)(z) 4
0{h4).
The asymptotic expansion mentioned above can be extended to the multi dimensional case (see Lin and Xu [102]). For triangular linear element on three kinds of triangulations mentioned in Theorem 10.7, it is shown that the extrapolation is still valid (see also Chen and Huang [23]), i.e. at the grid point Exu(z) = u(z) 4
0(h3\nh).
But in d-dimensional case, d > 2, the number of unknowns from h to h/2 increases by a factor of 2d. This is unexpected. A new idea is to use the splitting extrapolation (see Liem, Lu and Shih [103]). For example, consider the bilinear finite element on uniform rectangular partition with steps hi and De Yi2 respectively in x\ and X2 axes. Let u^^ the bilinear finite element solution, it is shown that at the nodal point z = (x,y), (tifci,M - «)(*) = Ci(z)hi + C2(z)h22 + 0(hHnh).
10.3. Applications of Superconvergence and Extrapolation Assume that Ufll/2,h2 nation
an
d uhxMI^
Exu{z) = -{4:{uhl/2M
a r e a so
+ uhlM/2)
^
191
computed, then their linear combi
- $uhlM)
= u(z) +
0{h3\nh)
is of high accuracy, while their total computation works are significantly less than that for uhl/2,h2/2-
Chapter 11
Nonlinear Problems Consider an initial boundary value problem for nonlinear PIDE (uuv)
+a{u, v) = I b(u(s),v)ds,
v £
HQ(Q),
) Jo | u = 0 on <9Q x J, ^ u(0) = UQ in fi,
(11.1)
where ft is a d-dimensional domain,
f
d
and -
d
6(u(s),v(t)) = /
yj6j(x,£,s;IA(S),Du(s))Djv(t)dx.
Assume that a^ and 6; are smooth functions with respect to all variables. For the sake of simplicity, denote ai(x,t,p 0 5 p) a n d bi(x,t,s;po,p) by a;(p 0 ,p) and b i{Po>p),i = 0,1, • • •, d, p = (pi,P2, *' • ,Pd) respectively. Denote by MP0,P) =
^
»
and /
x
D 2 ai(p 0 ,p)
where z, j , A: = 0,1, • • •, d. Assume that an isolated solution u(i) G L°° (J; W 1,0 °) of (11.1) is given, ||u(£)||i>0o < M for t G J = (0,T]. Denote a e-neighborhood 193
Chapter 11. Nonlinear Problems
194 of u by Ne(u) = {v(t) G Wlt00(Sl) v = 0 on 9 0 ,
||u(*) - v(*)||i oo < e for t G J } , (11.2) and define the following bilinear forms for the isolated solution u(t), ..
x
da(u 4- aw, v)
f ^~^
< -^ \ ^
-^ i
and B(w(s),v)
= —-—-
— | a = o = / Y^
da
J
bij(u(s),Du(s))Djw(s)Divdx,
Vi%
where the definitions of bij are the same as those for a^. Assume that the operator a is elliptic but not necessary uniform, i.e. there is a positive number v such that d
J2 OijfaDuKitj
> H£| 2 ,
For simplicity assume that A(wyv) and B(w,v) and A(v, v) is HQ-coercive, i.e.
£ € Rd.
(11.3)
are bounded in VT1^ x W1,p
\A(w,v)\ + |£(w,i;)| < C | M I I , P I M I I , P ' ,
(11.4)
A(v, v) > v\\v\\l,
(11.5)
v G H%(Sl),
v > 0.
We should point out that a quite extensive class of nonlinear PIDE satisfies the above three conditions (11.3) —(11.5). For the given u(t), define a bilinear form L by L(w,v) = A(w,v) — / Jo
B(w(s),v)ds,
and its adjoint L* by
fT L*(w, v) = A(w, v) — /
B(w,v(s))ds.
Let fi be a two-dimensional convex or smooth domain and Jh be a quasiuniform triangulation of O. Consider the semidiscrete finite element approximation
195 uh{t)
G S* of (11.1) such t h a t (
ft
<
Jo
[ ^/i(0) = iio/i
in
(11.6)
ft,
where u0h G S^ is some approximation of UQ £ W"' 0 0 p | HQ such t h a t H^O/k - Uolkoo < Chr~l\
Infc| 1 - Z ||t4 0 ||r l oo,
* = 0, 1.
For example, t h e best choice is ^ofc = -R/i^o where Rh is t h e Ritz—Volterra projection operator related to the bilinear form A at u = u$. We define an auxiliary projection uh(t) G S^ such t h a t e(t) = ^ ( t ) — n(£) satisfies t h e tangent equation (ft, v) + L(e, v) = 0, e(0)
= RHUQ - W Q
in
t; G 5 ? ,
( n
O.
\
?)
• )
Note t h a t the linear problem (11.7) was discussed in Chapters 9 and 10 in spaces L°° and W1,OQ respectively, in particular, we have proved the following m a x i m u m norm estimates ||«fc(t)-u(t)||l>00
1 = 0,1,
(11.8)
and t h e superconvergence estimate \\uh(t) - Vk«(t)|| l l 0 o < C(u)hr\\nh\,
(11.9)
where t h e constant C{u) is nonlinearly dependent on some norm of u, because t h e coefficients of L in t h e present situation are dependent on u. We temporarily assume and will verify later t h a t the solution Uh(t) of (11.6) exists and uh(t) G Ne{u) for 0 < h < h0. (11.10) Follow Douglas and D u p o n t (1975), the idea of the argument for nonlinear problems is similar to Newton's method with quadratic convergence. Denote e = Uh — it, ua = u + a e , 0 < a < 1, \\ua — it||i j 0 0 < a||e||i ) 0 0 < a e < e and ua G Nv{u). Using the Taylor expansion one can assure t h a t
a(uh,v)
— a(u,v)
1
= alu ^)
f1 — a(u°,v)
= / Jo
d
—a(ua,v)da da
196
Chapter 11. Nonlinear Problems = -^a(u«,v){a = A(e,v) — / / Jo Jn
-l)\l-
-jLa(ua,v)(a
I
-
l)da
aijk(uoc,Dua)DjeDkeDiv(a—l)dxda.
The expansion for b is similar. Hence, by (11.1) and (11.6) we have, (et,v) + L(e,v) = rh(v),
v G S*,
(11.11)
where rh(v)=
[ f Jo Jp
[-aij^.Du^DjeDke
+ / 6 ijfc (^ Q: (5),^n a (5)) J D :/ e(5)JD fc e(5)^5]A^(«- l)da:da
(11.12) Write e = i ^ — ^ = (uh — S^) + (uh — u) = 6 + e, then 6 = uh — uh e Si? satisfies (fit, *) + L(0, u) = ^ ( v ) , * G Sr^. (11.13) Therefore to estimate Uh in (11.6), what remains is to bound the 0 in (11.13). With regard to the nonlinearity of the operator a, and similarly for 6, we distinguish three different cases as follows: 1. dQ = 1, strongly nonlinear case, if a^
^ 0 for z, j , k ^ 0;
2. do = 0 and d\ = 1, weakly nonlinear case, if a^^ = 0 for j x k ^ 0, i.e. d
a»(Po,p) = X ] M P o ) P j + <(po). 3=1
3. do = di = 0, semilinear case, if a*^ = 0 for i ^ 0, j + A: ^ 0 and i = 0,j x k ^ 0, i.e. d
a*(Po, p) = ^2
ai p
J i + a t (^o),
i ^ 0,
and d
a>o {Po, p) = ] P a oj (Po )Pj + «o (Po),
11.1. Strongly Nonlinear Cases and the Green Function Method
197
but ciojo ^ 0 and aoofc ^ 0 are admitted, because one can rewrite by Green formula the corresponding term in the form / a0j0eDjevdx
= - - / e2Dj(a0j0v)dx
= 0(||e||g
||v||x x ).
For the three cases mentioned above there is the following important es timate: \rh(v)\ < C(«,e)(doN?,co +^Ni,ooHo,oc + [e]2 i 0 0 )|M| u .
(11.14)
where Mm,p = ||w(*)||m|P +
11.1
/ ||u(s)||mlPds. JO
Strongly Nonlinear Cases and the Green Function Method
In order to study the general quasilinear case in two-dimensional domain we shall use the gradient type Green function Gh{t) G S% defined in Chapter 10 to estimate the error 9(t) in W1,oc. The main result in this section is the following. Theorem 11.1 (Chen [20], 1993). Assume that the solution u of (11.1) is suitably smooth, ^^GL00(J;W1'00(^)) and \D2xtu{t)\
0<
7
< 1, t G J ,
h
and that the triangulation J in £1 is quasiuniform. Then for any fixed e > 0 there exists ho > 0 such that for any h G (0, ho] the semidiscrete finite element solution Uh(t) G S^f]N€(u). Furthermore we have the asymptotic optimal error estimates \\uh(t)-u(t)\\lt00
1 = 0,1,
(11.15)
and the following estimates for superconvergence, IK(*) - «fc(*)llo,oo <
C(u)h2r-2\lnh\3,
\\uh{t) - «h(*)||i,oo < C(«)fc ap - 2 - 5 - e , where Uh is defined by (11.7).
e > 0,
(11.16)
Chapter 11. Nonlinear Problems
198
Remark. Recall that uh(t) and uh(t) are defined by (11.6) and (11.7) re spectively, the last estimate (11.16) means that if the linear projection Uh(t) £ Si? possesses some superconvergence in W1,OQ, then the same conclusion also holds for the nonlinear approximation Uh(t), even if the triangulation is quasiuniform. In fact, better conclusions for both nonlinear elliptic and parabolic cases were already proved by Chen ([17] 1982, [18] 1992), i.e. for the nonlinear elliptic case, there are I K - u\\ilQO < C(u)hr~l\ In hi1"1,
I = 0,1,
and
\\uh - Rhu\\hoo
where RhU £ S^ is the solution of the following auxiliary tangent equation A(u; Rhu - u, v) = 0,
v € S^',
and for the nonlinear parabolic case, there are \\uh(t) - «(t)||i,oo < C(u)fc p -'| ln/i| 2 -',
/ = 0,1,
and \\uh(t) -uh(t)\\i,oo
C(u)h2r-2\\nh\3,
<
where Uh (t) G S^: is the solution of the auxiliary tangent equation ((uh - u)t, v) + A(u; uh-u,v)=0,
v G S*.
The most difficult point in studying the nonlinear problem (11.6) is to prove the uniform boundedness of the gradient \/Uh(t) with respect to h, i.e. Uh(t) € Ne(u) for small ft, which guarantees the uniform boundedness of ai(uh,Duh) and bi(uh,Duh). We shall use the continuation method proposed by Freshe and Rannacher [54]. A simplified version is described as follows. First suppose u>h(t) € Ne(u) for 0 < ft < fto and then derive a fine error estimate, and finally go back to check that the above assumption is reasonable for some fto > 0. Proof of Theorem 11.1. Recall that the gradient type Green function Gh(t) e S^ satisfies (GM,v) + L*(Gh,v) Gh(T) = Dz6h
= 0, in
ft,
veS?, teJ.
11.1. Strongly Nonlinear Cases and the Green Function Method
199
In Chapter 10 it is known that / \\Gh(t)\\i,idt
e>0.
Taking v = Gh in (11.13) it leads to Dz9{z,T)=
f Dt(0,Gh)dt= Jo
f Jo
[{euGh)+L*(Gh,Q)]dt
= [ [{0uGh) + L(0,Gh)]dL= [ Jo Jo
rh(Gh)dt
and the superconvergence estimate \\Gh\\1Adt < C 2 ft-°- 5 - £ [e(T)]f i00 .
l|0(T)||ilOO < C(e)[ e (T)]? i00 /
(11.17)
Jo
Using the estimate of e we get the following inequality | | e ( i ) l | l , o o < P | l , o o + ||^||l,oo
< dh'-1]
, „
lnh\ + C 2 /i-°- 5 - £ max ||e(a)||? 00 . 0<s
t o x
(n-18)
'
Now adopt a simplified continuation argument as follows. From Chapters 9 and 10 it is known that for h G (0, hi], ||e(t)||i,oo < C i A ^ l l n f c l < e/2,
t G J.
This requires Cih'[~1\ lnhi\ < e/2 and it implies that Uh(t) G Ne/2(u). for the time being that u^it) G Ne(u) for h G (0, ho] and IKOIkoo <2C1hr~1\\nh\
<e
for
he(0,h0],
Suppose
* G J.
(11.19)
Hence by (11.19) and (11.17) it also leads to HeWlh.oo^lleWllLoo + PWIIi.oo < d / T ^ l l n / i l +C 2 /i-°- 5 - £ (2Ci/i T "- 1 |ln/i|) 2 Clhr-1\\nh\+Clhr-l\\nh\{±C1C2hr-l*-'L\\nh\).
= Taking hi such that
4CiC2h5~°- 8 - £ |ln/i2|
we have (11.19) and Uh{t) e Ne(u).
Hence
200
Chapter 11. Nonlinear Problems
Finally, taking v = gh{t) in (11.13) and using the semidiscrete Green function defined by (9.7) we have, from (11.14) and Lemma 9.4, that \9(z,T)\
< | /
rh{gh)dt\
JO
< Cmj«||e(t)||; \\9h{t)hAdt < Ch2r~2\\nh\3 i00 f f T <
Jo
which is a superconvergence estimate and thus ||e(*)||o,oo < ||e(t)||0foo + ||fl(t)||0|oo <
Chr\\nh\3.
The proof of the theorem is complete. To conclude, the following special results are quoted: 1. In the weakly nonlinear case where do = 0, there are \rh(v)\ < Cmax(||e( S )||i i00 || e ( S )||o, 00 )||i;||i, 1 S
and superconvergence estimates |fl(t)||i l oo
||^)||0|oo
e>0,
teJ.
2. In the semilinear case where do = d\ = 0, we can get K^I^Cmaxlle^ll^ll^ll!,! s
'
and the better superconvergence estimates |^)||i,oc
11.2
e>0,
\\8(t)\\0jOO
teJ.
Weakly Nonlinear Cases and the Energy Method
Consider now the energy method in d-dimensional domains and the nonlinear problems that can be solved by this method. By the Ritz—Volterra projection Vhu(t) e S!? mentioned in Chapter 3, e = (uh — Vhu) + (VHU — u) = 8 + p, where l|pt||
11.2. Weakly Nonlinear Cases and the Energy Method
201
and \\p{t)\\o,p < Chr[u{t))r,p,
2 < P < OO
< Chr\ Inh\[u(t)]rjOQ,
p = oo, d = 2.
From (11.13), 9 = uh - Vhu e S£ satisfies (flt, v) + L(0, v) - -(pt, v) + rh(v),
v £ S*
0(0) = 0.
Taking v — #, it leads to
ir>t||0||2 + i>||0||?
<\\pt\M\ +Joc fwewhdsph + fam < \\\Ptt + \\\ef
+ j\ml
+Cf
\\e\\lds + \rh{9)\.
(11.20)
First, in the strongly nonlinear case, by the inverse estimates ||i>||o,4 < Ch~d/A\\v\\ and ||v||i < C7i _1 |M|, we have \rh(v)\ < C[e(t)];, 4 ||0Wlli < \\\e\\\ + C[e{t)]\A
< |ll*ll? + cfc 4 - 4 + Ch-d-*[e{t)\l[e{t)]\, where 4r — 4 > 2r. Then, A | | 0 | | 2 + ||0||? < Ch2r + ||0|| 2 +
C2h-d-2[6]2[0\l
Assuming for the moment that C2h-d-2{6}2
< |,
(11.21)
eliminating ||0||i on the right-hand side, integrating in t and using Gronwall lemma, we obtain ||0|| 2 + |||0|||?
< CC2h2r-2-d
-> 0
if
d<2r-2
Chapter 11. Nonlinear Problems
202 and IHkoo < Ch-x-d'2\\6\\
< Chr-l-d'2
-> 0, uh(t) €
Nt(u).
Hence for r > 3 and d < 4 the assumption (11.21) is valid and the above error estimates hold. However, for the case r — 2 and d — 2, the above argument is invalid. Secondly, in the weakly nonlinear case there is M * ) | < C[eto]i,oo[e(«)]o||0(*)lli
<
j¥\\\+Ch^-^CW)\2W)]loo
< \P\?i + Ch4r~2 + C2h-y{t)?[9(t)]\. Suppose that C2h-d[6(t)}2
< i//2,
(11.23)
and again (11.22) is obtained. Now we need to check the assumption (11.23). From (11.22) we have C2h-d[6(t)]2
< CC2h2r-d
-> 0
if
d < 2r
and ||0||o,oo < Ch-d'2\\6\\
< Chr-dl2
-» 0,
||ufc(t) - «(t)||o,oo < e,
i.e. for r > 2 and d < 3 the assumption (11.23) is valid and the above estimates hold. In conclusion, we mention an important case explored by French and Wahlbin [52]. Assume that a^ are weakly nonlinear while hi are strongly non linear. We have \rh{0)\ < C [ \eDe\\D6\dx + C [ [ Jci Jo Jn
\De{s)\2\D0{t)\dxds
< C(||e|| M ||e|| 0 ,4 + C ft\\p(s)\\l4ds)\\e\\1+C Jo
/ * ||0(s)||?d*||0(i)|| liOO Jo
< ^\\9\\i + C||e||5i4||e||gi4 + C( j f \\P\\2Ads)2 + Ch~d(J* Mi**)* < \w\ti + Ch*-* + C||0||? I4 ||0||S I4 + Ch-^J* \\e\\\ds)2.
11.2. Weakly Nonlinear Cases and the Energy Method
203
By the inverse estimate ||^||o,4 < Ch~d/A\\v\\, it leads to
All^f + II^II^^C^ + d/i-^ll^ll^lp (11.24)
+C2h-d{f\\9{s)\\\ds?. Jo
Suppose that
C i ^ l l ^ l 2 < 1/2,
h~d f \\6{s)\\\ds < C3,
(11.25)
Jo
and note that the last inequality is a weaken condition. From these we get
A||0||2 + \\\e\\l < ch* + \\ef + c2c3 J* \\9(s)\\lds. Integrating in t and using Gronwall lemma, (11.22) is also derived. In order to check the assumptions in (11.25), from (11.22) we have
h~d{\\e\\2 + WWW)
if
d<2r.
For r > 2 and d < 3 our assumptions (11.25) are valid and PWIIo.oo < Ch-d'2\\9\\
< Chr-d'2
-> 0, \\uh(t) - «(t)|| 0 l 0 0 < e.
Since bi are arbitrary functions with respect to po and p, it needs to show the uniform boundedness of \Duh(t)\ with respect to h < HQ and t G J , i.e. uh{t) e Ne(u). For r > 3 and d < 3, from (11.22) we have
l|0(*)l|i,oo < Ch-'-^wew < chr-1-*'2 - o, uh(t) e Ne(u). However, in the case of r = d = 2, the Uh(t) € Nu(u) cannot be confirmed by the estimates mentioned above. In order to guarantee the uniform boundedness of the function bi(uh, Dun) we consider a class of functions with strong nonlinearity with increasing order m > 2, i.e. |fc(po,p)| + (bl + l)\bij{poiP)\ + (bl 2 + l)\bijk(po,p)\ <^(|po|)tWm + l), 2 < m < o o . Now it requires that the solution uh(t) satisfies the following condition uh{t) €
Nl'm{u)
= {v{t) e WUm(Q),
t) = 0 o n m,
\\v(t) - u(t)\\hm
< e, t € J } .
Chapter 11. Nonlinear Problems
204
Therefore from the error estimate ||0|| < Chr, even ii fn the case of r = d = 2, one can derive the desired bound for 0 in W1'™, l ||0||i,m \\0\\o.m <
and l|u„(t) < ||0||l,m \\e\|1>m ++ IMIl.m ||p||i,TO--> 0, K ( t ) -- uu(t)||i, (t)||l,m > 0, m < i.e. uh{t) G Nl'm(u) for t G J and h < h0. Many results on finite element estimates in weakly nonlinear cases were done by Yanik and Fairweather [167], Cannon and Lin [12,13], Y.P. Lin [96], T. Zhang [173] and etc.
11.3
Solution to System of Nonlinear Equations
We now turn to the full discretization of nonlinear PIDE (11.1), for example, the following backward Euler scheme f ( ( £ / " - Un-1)/k,v)+a(Un,v) = Qn(b(U,v)), 0 \| U U°=u =u0h n = l,2,..-,N, l,2,---,AT, 0h,
v« € S52| ft,,
„, n i (11.26. 1L26) (
where Qn(f) is any quadrature rule with accuracy 0(k). When U^1 G Sh, (11.26) is a nonlinear system for Un G Sh. Our main purpose in this section is to discuss how fast this nonlinear system can be solved. It is well known that the basic method to solve the nonlinear system F(u) = 0 is Newton's algorithm of quadratic convergence. Assume that the mth approximation wm, m > 0, is known, one can construct a tangent equation at nm, DF(um).(um+1-um) = -F(um) and then get the (m + l)th approximation nm+1. The iterative process converges quickly to the exact solution u if the initial approximation u° is close to u. But in the multivariate case, the computation and storage of the matrix DF(um) are vast. Although the improved quasi-Newton algorithms are adopted, the computation complexity is still unexpected. Two ways to solve the nonlinear problems are introduced as follows. 1) The solution based on two-level nets (see J.C. Xu [164], and Y.Q. Huang and Y.P. Chen (1994) for nonlinear elliptic cases). Assume that SH and Sh are two finite dimensional subspaces based on triangulations JH and Jh respectively. For simplicity, assume that Sh C
11.3.
Solution
to System
of Nonlinear
Equations
205
SH a n d h
= 0,
v e SH
and
a(w/l,v)=0,
veS
h
.
First suppose t h a t t h e solution u # of t h e problem a(it/f, i>) = 0 with v € SH, it has already been solved exactly by a certain method, such as Newton's iterative algorithm. Now, use Taylor expansion at UH , a(uh, v) - a(uH, v) = A(uH; uh - uH,v) + rh(uH;
uh -uH,v),
v G Sh,
and construct a linear system of equations for u^ G Sh, A(uH',Uh
-V>H,V)
v G Sh.
= -a(uH,v),
(11.27)
This is a linearized defective equation which can b e easily solved by various methods. In order t o prove t h a t Uh is a highly accurate approximation t o Uh, we notice, for v G Sh a n d z = u^ — UH, t h a t A(uH] uh - uh, v) = A{uH\ uh-uH m
= A(uH , z,v) +
+ (uH - uh), v)
a(uH,v)
= A(uH; z, v) + a(
z, v)
+ dlMll.ooMlo.oo + | | < o o ) I M I l , l -
Taking v — Gh G Sh a n d using t h e known results, \\uH
~ ^lli,oo = 0{H),
\\uH - u|| 0 ,oc = 0(H2 In tf),
we get t h e following important error estimate K
- ^ l l i , o o < C\ In h\{d0H2 + d ^ l In h\ + # 4 | In /*| 2 ).
(11.28)
Moreover, when H « \ / ^ , it leads t o t h e following optimal order estimate: \\uh - u | | i , o o < \\UH - w||i,oo + ||^/i - ^ | | i , c x > < C h | l n / i | . Therefore in order t o get a n approximation Tih t o u^ it is enough t o solve a nonlinear problem CL(UH,V) — 0, v G S ^ on a coarse grid JH a n d then solve a linearized defective equation A(uH',Uh — UH,V) = 0, v G Sh on a fine grid Jh, H « \ / ^ . W h e n do = 0 or do = di = 0, one may choose t h e larger step H « / i 1 / 3 or /i 1 / / 4 respectively.
Chapter 11. Nonlinear Problems
206
Obviously this algorithm can also be applied to full discretization of non linear PIDE. The details are omitted here. 2) Interpolated coefficient method. Consider the following weakly nonlinear parabolic problem f ut - V(a(u)Vu) = / W(b(u{s))Vu{s))ds ) Jo u = 0 on Oft x J, I u(0) = UQ in Vt. Denote
pU
4- f(u) (11.29)
rU
F(u) = I a(y)dy Jo
and
G(u) = / b(y)dy, Jo
VF(u) = a(u)Vu
and
VG(u) = b(u)Vu.
then (11.29) can be rewritten in the following form: (uuv) + (VF{u),Vv)=
[ (VG(u(a)),Vv)d8 Jo
+ (f(u)9v)9
Let {4>j}i be the basis of the finite element subspace Sh. classical Galerkin method, we find
v € H*.
(11.30)
According to the
N
uh(t) =Y,aj{t)
e Sh
.7 = 1
such that (uhu v) + ( V F K ) , Vv) = I (VG(u h ), Vv)ds + ( / K ) , v), ^ ( 0 ) = u0h
in
t; € S'1,
fi,
(11.31) while by the interpolated coefficient method, Uh(t) satisfies the following equa tion: I K t , v) + (VFhi Vv) = J (VGh(s), Vv)ds + (/^, v ) , [ uh(0) = u0h
in
v e Sh,
( n
32)
ft,
where Fh is the interpolant of the function F(uh) (similar for Gh and fh) , N
Fh(t,x)=Y,F{<Xj(t))
207
11.3. Solution to System of Nonlinear Equations Hence (11.32) can be rewritten in the form (
N
fl ^ [ ( ^ • , ^ K ( * ) + ( V ^ , V ^ ) ( ^ ( ^ ( 0 - / G(*i{8))d8)\ J
3=1
{
°
N
= ]T/(ai(*))to,¥>i),
(11.33) t = l,2,---,JV,
I ai(Q) = a0i, n
where aoj are coefficients of the expansion u^h = ]C a0jPj € S'/li=i
The two discrete schemes (11.31) and (11.32) are different. They can be solved by the iterative method, but the latter only needs to compute and store once the coefficient matrix [((frj, (/>I)]NXN, and the iterative process is repeated only on three scalar functions F(aj), G(ctj) and f(oij), therefore both the computation and storage requirements are saved. The interpolated coefficient method in the parabolic case is proposed by Zlamal. Then Larsson and Thomee (1989) proved the error estimate \\uh~u\\ = (9(/i), and Chen, Larsson and Zhang [24] improved the estimate \\uh — u\\ — 0(h2 In h) on piecewise uniform grid by using the super convergence techniques.
Chapter 12
Hyperbolic Problems This chapter discusses the initial boundary value problem for the hyperbolic integrodifferential equation (HIDE) + Au= + f(t) I uttt+Au= Bu(s)ds + < Jo
in
QT = ^Q x J,
i « = 0 on an, ]( u(0) tx = 0= ^oon and an, « t (0)
(12 11 (12.1) KlA l)
' = ^i in Q, [ u(0) = u0 and ti t (0) = t*i in fJ, and its finite element approximations, where A is a positive-definite elliptic operator of second order and B is an arbitrary partial differential operator of second order. In studying the hyperbolic problems the energy method is a main tool. First we will discuss the regularity of solution for continuous problem (12.1) and then analyse the semidiscrete and fully discrete finite element approximations to (12.1). Finally their analogues for nonlinear problems are discussed. 12.1
Solvability of Linear Problems
First consider the solvability of the linear problem (12.1). Denote mm H ' (Cl) =={u{i)\D?DP H™>™(n) {u{t)\D?Dgu(t) L 2 (ft), a+|(3\< a + |/?| <m}, m}, xu{t) e eL\V),
\Ht)\\H^ ||«(*)|| m (O) = ( ff ».»
£
a+\P\<m
2 1/2 \\D*DZu(t)\\ \\D?D^ xu(t)\\ ) ,
where 1 (Q), S0 = {v\v£H {v\vGH11<'\n),
v = 0 on 209
dtl} dQ}
Chapter 12. Hyperbolic Problems
210 and
= (/
\ffdxdt)1'*.
JQT
Multiplying (12.1) by v € So and then integrating in Q, the weak solution u(t) £ So satisfies
<
(utuv) ,ft*
+ A(u,v)=
|
14(0) =
B(u(s),v)ds
+ (f,v),
v <E S 0 ,
Jo
(12-2)
UQ,
{ ut(0) = ui
in
Q.
Theorem 12.1. For the weak solution u{t) G So °f (12.2) we have the following energy estimate
ll«t(*)ll + ll«(*)lli < C(|Klli + IKII + HI/HI). Proof. First suppose that u is smooth enough. Taking v = ut in (12.2) and integrating in £ we have (ut, ut) + A(u, u) = (u t (0), ut(0)) + A(u(0), u(0)) + / A t (u, u)ds Jo +2 / [B(u(s),u(t))~ Jo -2 [
B(u(s),u(s))]ds
[ Bt{u{s),u(r))dsdT
+2 [
JO JO
(f,ut)ds,
JO
and then IKII 2 + v\\u\\\ < C||uo||5 + C||^i!| 2 + C f \\u\\\ds + C [ UtillKbHulh JO
JO
+C f [T\\u(3)\\l\\u(T)\\1dsdT+
HI/HI IIHH
JO JO
< |ll«|l? + C(||«,o||? + H^ll 2 + j T ( | k | | 2 + \\u\\*)d8 + HI/HI2)The theorem can be proved by Gronwall inequality and a smoothing procedure. The existence and uniqueness of the weak solution for (12.2) are easily derived from Theorem 12.1. Below we consider the higher order regularity of the weak solution. Theorem 12.2. Let Q be a smooth or convex domain. Assume that the coefficients of A are independent of t and ^o e f/ 2 (ft)p|tf 0 \
ui € ^ ( f i ) ,
/ and ft G L 2 (Q T ),
12.1. Solvability of Linear Problems
211
then (12.1) has the solution u G iJ 2 ' 2 (0) and Nt)IU».»(n) < Cdlriolla + IKIli + ll/WH + Ill/till).
(12.3)
In order to prove the theorem, recall an analogous result for the purely hyperbolic problem (i.e. B = 0) which was obtained by Ladyzenskaja (1953). Consider the eigenvalue problem A
u{t,x) =
S
^dj(t)ipj(x).
Substituting into (12.1) (with B = 0) and making the inner product with (fj then dj(i) satisfies
^ w + ^ w = /,-(«) = (/,%), d
i(0) = fao, <^) = a j ,
^ ( 0 ) = (uU(pj) = 0j.
By the theory of ordinary differential equation one can determine 1 /** 4, (£) = OLJ cos pjt + PjPj1 sin pj£ H / fj (s) sin p^(£ — s)ds Pj Jo and its derivatives d'j = —OLjpj sin pjt + /^ cos /^£ -h / /^ (5) cos pj (t — s)ds, Jo
d" = —otjpj cos pjt — /3jPj sin pjt + fj (t) — pj / fj (s) sin pj (t — s)ds. to Jo The last term contains a factor pj, but after integration by parts it becomes Pj I fj ( 5 ) s i n Pj (* ~ s)ds = fj (*) - / i (0) cos pjtJo
/ / j (5) cos pj (t - s)ds, Jo
where fj (0) can be estimated by the following expression
/i(0) = £(*)- Jo fWds.
Chapter 12. Hyperbolic Problems
212 Note that
11^11 = 1, ll^-ll? = C A ( ^ , ^ . ) < P ? , and \\
\Mt)\\w)
(l^l 2 + (1 + P?)|dJI2 + (1 + p? 4- p j ) ^ )
< ^ E ( " M + ^ + i/,i2+/ wa*)Obviously, by Bessel's inequality,
E(/> + /i/
oo
j=l
3=1
Finally, using the equality A(u\,
W
I -
E^'^)
= A(«!, «i) - 2 ^ ^ A(u!, ^-) +' E tfjA&i' VJ )
= J 4(n 1 , W l )-53^ 2 / 9 j 2 , it also leads to oo
^P^P^Aiu^u^^CWmWl
(12.4)
3=1
Together with the above three estimates we have proved (12.3) for the purely hyperbolic case.
12.1.
Solvability of Linear Problems
213
Proof of Theorem 12.2. Rewrite (12.1) in the following form utt +Au = F(t) = I Bu(s)ds + /(*), Jo
(12.5)
where 3u(t) + Bu{t) + / BBtu(s)ds + ft(t) tu(, Jo and
II*II
+ infill < ^ ( E w\D>\\\ + II/WII + III/*III)l«ll<2
By the estimate (12.3) just derived for the purely hyperbolic case, we get at once I H * ) H 2 H ^ ) < C(||«o||i + ||«i||? + ||F(t)|| 2 + IHFtlll2) < C(||«o||l + Ikill 2 + ll/ll 2 + Ill/till2) + C f
\Hs)\\\ds.
Jo
Therefore Theorem 12.2 follows by Gronwall lemma. If the domain Q and coefficients of the equation are suitably smooth, and the data have higher differentiability and some compatibility conditions are satisfied, then the weak solution will also possess higher regularity. For simplicity, only the following result is exhibited here. Theorem 12.3. Let O G C 3 . Assume that
u0 e fr3(«)p|tf0\
ui e # 2 f|#o\
fJuftt e L2(Q)
and /(0) - Au0 = 0 on
dfl.
3 3
Then u(t) G if ' (ft) and K*)||H3.3 ( n) < C(||tio||3 + llmlb + ll/ll + ||/(0)||i + ||/t(t)|| + |||/«|||). Proof. Consider first the purely hyperbolic case. First analyse the term d'j'(t) carefully. Noting that g(t) = / f(s) cos p(t — s)ds = / f(t — s) cos psds Jo Jo and g"(t)
= -f(0)psinpt
+ /'(0) cos/rt + / / " cos psds, Jo
214
Chapter 12. Hyperbolic Problems
we have d
7 = (aJp2j ~ fj(°))Pj +f'j(0)cospjt+
sin
Pjt
~ PjP* cozPjt
/ /"(£ -s) Jo
cospjtds.
From the assumption that G(x) = /(0) — AUQ = 0 o n dQ, we know that />(0) - ajfi
= (/(0),¥>i) {uo,Vj)\ = (f{0)-Avo,
and then, similar to (12.4), oo
£ ( / ; ( 0 ) - «jfi)2fi < A{G,G) < C\\G\\l < C(\\uoh + ll/(0)||i)2. 3= 1
In addition, there are 0jP* =
(WI,¥>J)AJ
- (wi, Ay?j) = (Aui,^-)
and
E^
4
= E ( ^ ' ^ ) 2 ^ c'H^iii2 ^ c,ii«iiil-
From these estimates we are able to derive, for the purely hyperbolic case, that
IWt)||tf3,a(n) < CdltlolU + IKIh + 11/11 + H/WIK + HAH + Hl/ttlll). Finally we return to HIDE. For F(t) denned by (12.5), we see that F(0) AUQ = /(0) - Ait0 e HQ and F« = Bu t + 2Btu(t) + / Bttu{s)ds + / t t ( t ) . Using the regularity proved above for the purely hyperbolic case, we get
Kt)l&3. 3(n) < C(||t*,||I + |K||| + H/ll2 + \\ftf + ||/(0)||2 + |||/ tt ||| 2 ) +C\\u(t)\\2H2a{il) + C I \\u\\2H^(a)da. Therefore by Theorem 12.2 and Gronwall lemma, Theorem 12.3 follows. Remark 1. In the case when the coefficients of A are dependent on t, the desired regularities can be derived by the freezing coefficient method.
12.2. Discretization for Linear Problem
215
Remark 2. From Theorem 12.2 we see that there is a big difference in the regularity estimate between the parabolic and hyperbolic cases: the right-hand side of (12.3) contains both ||/|| and |||/t|||. In addition, in the homogeneous parabolic case the multiplier d^ i)( = t ) ^= d( i0( 0) )ee-- V ^t is decreasing exponentially, so that the solution u with initial datum u(0) G L2(9) has the following decay estimate for t > 0 P*u(«)||
k>0, fc>0,
while in the homogeneous hyperbolic case, the multiplier is dj(t) = a-; a, cos cosOjt OjtHH fafa sinp sinp,i, 7 £, Pi which does not possess the decay property. Hence higher order regularities of the solution u can be guaranteed only by higher differentiabilities of the data and some compatibilities. There are much to be done regarding the regularities of solutions in various spaces.
12.2
Discretization for Linear Problem
Consider the following semidiscrete finite element approximation uh(t) G S* for (12.2) satisfying (
ff
(uhtt,v)+A(uh,v)=
J \
/ B{uh(s),v)ds J° = uOh °
IS* i t ™ Uh(0)
= Rhu0
+ (f,v),
vGS*
where ulh G S? is an approximation of uu \\ulh - u,\\ < Ch^u^. (12.6) and (12.2), the error e = uh - u satisfies
(12'6) (12'6) From
(12.7) B(e(s), v)ds, v G S*. f( B(e(a), S*. Jo Jo As in the parabolic case, denote e=(uhVhu) + {Vhu - u) = 0 + p and dhen 6 = uh - Vhu € S£ satisfies (ett, v) + A(e, v)=
f (ett,v) + A(e,v)= f B(e(s),v)ds-(Ptt,v),
I)
Jo
^ flt(0) 0t(O) = (Vfcu)t(O)-uifc.
ves?
(12.8) (12 8)
216
Chapter 12. Hyperbolic Problems
We shall show the following result (see Lin, Thomee and Wablbin [97]). Theorem 12.4. Assume that the initial values UQH = Rh^o a nd \\uih — ui\\ < C7im||tfci||m, m = r,r — 1. Assume that Uh(t) £ S^ and u(i) G So are the solutions of (12.6) and (12.2) respectively, then we have ||c(t)Hl < ChT-1
(||«o||r-l + ||«l||r-l + j
IKtHr-lda)
and the following superconvergence estimate \\uh(t)
- VhUftW!
< Chr(\\uo\\r
+ \\ui\\r + /
Kt||r^).
Proof. Taking v = 0t in (12.8), Dt\\Ot\\2 + DtA(0,O) = At(9,O) + 2Dt f
B(0(s),6(t))ds
Jo
-2B(0(t), 6(t)) - 2 f Bt{0(a), 9(t))ds - 2{ptt, 0t), Jo and using integration in t and Gronwall lemma, we have
||0 t || 2 +1|0||? < c||flt(o)||2 + c f WpttWPtWds. Jo
Denoting \\8t{t)\\ = sup \\et(s) 0<s
and noting
it leads to
l|et|H-IMIi
||«tt||mda), m = r , r - l , (12.9)
where (see Chapter 3) \M0)\\ = WiVk^t^-ur
+ ^-um)]]
+ \\Wl\\m),
m = r,r-l
12.2. Discretization for Linear Problem
217
is used. The case where m = r is of superconvergence. Finally the theorem follows from the known estimates of p. Remark. By (12.9) we also get the estimate of 0, and hence Hell < Ch " ( i k o l l r
+ |hl||r +
/
||Utt||rdsJ,
but the right-hand side contains higher order derivatives of u. To decrease the regularity requirement on u we shall adopt the operator method mentioned in Chapter 3 to improve the result as follows. Theorem 12.5. Assume that the discrete initial values are uoh = Rh^o and u\h — PhUi. Then ||e(t)|| < C^(||^o||. + y
||t*t||r
Proof. For simplicity, assume that the operator A is independent of £, and Ah — PhA is a discrete analogue of A (similarly Bh = PhB). Denote T = A'1 and Th = (Ah)'1. We rewrite (12.1) and (12.6) in the following form
)
Tutt + u=
I TBu(s)ds + Tf, Jo
(12.10)
I ThBhuh{s)ds Jo
(12.11)
u(0) = u0, { ut(0) = u1}
and Thutt + uh=
+ Thf,
uh{0) = u0h, u't(0) = ulh. Then the error e — Uh — u satisfies Thett + e= / ThBhe(s)ds + rh, ) Jo j e(0) = u0h - u0, ^ et(0) = u\h — ui (orthogonal to S^), where rh = ~{Th - T)Au + / Th{Bh - B)u(s)ds. Jo Making the inner product with 2et and integrating in t we have (Theuet)
+ \\ef = ( 1 ^ ( 0 ) , e*(0)) + ||e(0)|| 2
(12.12)
218
Chapter 12. Hyperbolic Problems pt
pr
+2
rt
(ThBhe(s),et{T))dsdT
+2
Jo Jo = ||e(0)|| 2 + 2 / (ThBhe(T),e(t) Jo -2 f
{rh{s),et{s))ds Jo
- e(r))dT
f (ThBhTe{s),e(T))dsdT
+
2{rh(t),e(t))
70 JO
-2(rfc(0),e(0))-2 [ Jo
(r'h(s),e(s))ds.
Noting that Th is positive-definite in HQ and T^Bh is bounded in L 2 , so l|e(*)||2 < C(||e(0)|| + J* \\e\\ds + \\rh(t)\\ + ||r fc (0)|| + j T \\r'h\\ds) max ||e(*)||, and, by Gronwall lemma, ||e(t)|| < C(||e(0)|| + ||r h (*)|| + ||r h (0)|| + J
\\r'h\\ds),
(12.13)
where ||e(0)|| <
Chr\\u0\\r,
||(T h - T)Au)\\ < Chr\\Au\\r_2
< ChT\\u\\T,
and \\Th(Bh - B)u{s)\\ = \\(Bh -
B)u\\-2th
< C(\\(Ph - I)Bu\\_2 + h2\\(Ph < Chr\\Bu\\r_2
I)Bu\\)
< Chr\\u\\r.
Obviously the estimates for r'h(s) will contain the derivatives ut(s). Finally together with these estimates and the estimate of ||p||, the theorem is proved. Next we turn to full discretization. Follow Pani, Thomee and Wahlbin [128], we shall consider, in particular, the symmetric scheme of second order accuracy. Let dUn = (Un+1-Un)/k and dUn = (Un-Un-l)/k be the forward and backward difference quotients respectively, then ddUn = d(Un - U^/k
= ( t / n + 1 - 2Un +
U71'1)/^
is the central difference quotient of second order. To apply the middle rectan gular quadrature rule to the memory term, we denote the averages
12.2. Discretization for Linear Problem
n+1 1 1 Un+ +V2 +Unn)/2 )/2 /* = (U (ir+ +U
219
at tn+1/3 n+1/2 =
(n+-)k
and 1n Un Un = = {Un+l (Un++2U +2Un
1 n+l+un-i)/2 + + Un-l Un-)/4={u )/4 = ([/"+*
+f/"-i)/2
&t
fc _ at ^tn ==„nk.
Obviously, n+1 £{T-ir / » _ £ / » = ((U ^ f / "n. - 2C/" 2Un + [/"-i)/4 £/"- 1 )/4 = y¥-ddU t rn+i _
Now define our complete discrete scheme by n (00CT*,«) (ddU ,v) + A(Un,,v)v) = Qnn(B{U,v)) (B{U, v)) + (fn,v),
» vee 5S$, f,
(12.14)
with given initial values U° and U1 € S£, and the following trapezoidal quadrature rule
^) d *' yi-* = (y+^- 1 )/2.
Q»(») = E *»'"*«/
Denote W(t) = Vfcti(t) and *7" - un = (Un - Wn) + {Wn - un) = 6n + pn, from (12.2) at t = tn and (12.14) we have n
n
n
[f {dBe {dBen,, v) v) + + A{fa, A{fa, v) v) = =Q Qn{B(6, {B(e, v)) v)) -- (r (rn,, v), v),
1[tZ^-uK £:£:£,
vv eG Ssrrftft,,
(12.15) (12 15)
'
where rn = = rr?j + r„ + r2 rj+ + r%+ rj +rj,
r? r? = ddpnn,
r% rl = ddu(tn) - utt(tn),
r£ r% = = A h(W" - W"), Wn),
nn r j = gqnn(B (BhW) ( ShW) h ^ ) - f " B hBW(s)ds. h W) = Q (B hW(s)ds. Jo
To construct the discrete initial values U° and C/\ let u 2 = u t t (0) = /(0) - Au0 and define F(t) = uQ + uxt + u2t2/2 and U1 = V0 +fcVi+ V2A;2/2, where [7° = V0, Vj = PhUj, j = 0,1,2. L e m m a 1 2 . 1 . Assume that C/° = V0 and C/1 = RhF(k), IIV0 - «o||i + fc||Vi - «i||i < Ch"ChT1~\ ,
\\ViWx
220
Chapter 12. Hyperbolic Problems \\V1-u1\\+k\\V2-u2\\
Then, for 9n = Un-Wn,
there is
l|30°ll + l|0 1/2 lli < C(«)(/i r - 1 + k2). Proof. Because 0° = U° - W° = 0, it remains to estimate 01 = U1 - W1. Prom the following estimates
11^Hi < ll^1 - u'lli + lb1 Hi < IIV0 - «o||i + \\Vt - «i||ifc +C(ll^||i + IMIi)*2 + Up1 ||i < Chr~x + Ck2, and by the expansion W1 = W(0) + Wt(0)k + Wtt(0)k2/2 +
0(kz),
k-'p'W < \\Vi - Wt(0)|| + \\V2 - Wtt(0)||fc/2 + O(fc2) < cv-' + Ck2, then Lemma 12.1 follows. Theorem 12.6. Under the assumptions of Lemma 12.1, for n > 1 and t < t* \\Un+1'2 - tt(tn+l/2)||l < C(tt)(ft r - 1 + k2). v
Proof. For simplicity, assume that A and B are independent of t. Taking = mn+l/2 in (12.15) it leads to
(dden, den+1/2) + A(en, 90n+1/2) = Qn(B(e,den+1/2)) - (rn,den+1^2), (12.16) where (dd0n,mn+l'2)
= {d0n - d0n-\d6n
A0,den+1/2) =
+ 96>n-1)/2fc =
-d\\d9nf,
-dA{on+1'2,en+l/2)
and N
N
n
k ^ Qn{B(6,d6n+V2) = kJ2Y, n=\ N
B 9J y2
( ~ ,0n+1/2
- 9n-112)
n=lj=l N
N
= k
^2J2£(0j"1/2,#n+1/2
- 0n~1/2) = kJ2B(6j-l!2,0N+1/2
3=1 n=j
-
j=l
Summing (12.16) from n = 1 to AT, we obtain
\\deN\\2 + v\\eN^2\\2 N
< \\de°\\2 + c\\eli2\\\ N
+ CkJ2 ||^- 1 / 2 ||imax||^+ 1 /2|| 1 + C f c y | H | m a x p T | | 3= 1
j = l
e^1'2).
12.2. Discretization for Linear Problem
221
and then, after cancelling the common factor and using Gronwall lemma, N
\\d9N\\ + | | ^ + 1 / 2 | | i < C||00°|| + C||0 1 / 2 ||i + Ck Y, \K\\-
(12.17)
n=l
It remains to show that N
t
t
k V ||r"|| < Chr [ " \\utt\\rds + Ck2 f "+\\\uW\\ + \\utt\\2)ds. J J n=l ° ° In fact, by Taylor expansion, un+1 - un = u'{tn)k + f " + 1 u"(s)(tn+1
= u'(tn)k + u"(tn)k2/2
+ u'"(tn)k3/6
(12.18)
- s)ds
+ I f " + 1 u<<4\s)(tn+1 -
s)3ds,
we have fc||^pn||
<
f ^
< Chr
\\Ptt\\ds
k\\ddu(tn) ~ utt(tn)\\
< \k2 D
f
f
"^
T +1
'
\\utt\\rds,
\\u^(s)\\ds,
Jtn-!
and k\\Ah(W" - Wn)\\
f
n+l
\\AhWtt(s)\\ds
< Ck2 f " + 1 \\utt\\2ds.
Jtn. —I
Jtn-\
In addition, the quadrature error satisfies \\qn(BhW)\\
(" \\{BhW)ss\\ds Jo
^ Jo
\\utt\\2ds.
Therefore by (12.17) and Lemma 12.1, the theorem follows. Pani, Thomee and Wahlbin have further proved the following error esti mates in L 2 , ||C/" +1 /2 - u(tn+1/2)\\ < C(u)(hr + k2). It is important that the economic schemes for both parabolic and hyperbolic cases are studied and only the energy method is used.
222
Chapter 12. Hyperbolic Problems
12.3
Nonlinear Cases
Our purpose in this section is to discuss a nonlinear HIDE (utt,v)+a(u,v)= / b(u(s),v)ds, I Jo < u — 0 on dQ x J, u(0) = u 0 , (^ tit(O) = i^i
in
v £ So, (12.19)
Q,
and its semidiscrete finite element solution Uh(t) £ S^ satisfying {uhtuv) + a(uh,v) = / 6(^(5), v)ds, Jo uh(0) = u0h, ufh(0) = i ^ in ft.
v E S*, (12.20)
Follow the tangent operator method used in Chapter 11, define an auxiliary linear projection Uh{t) E S^ such that e = u^ — u satisfies the following linear equation (ett,v) + A(e;v) = / B(e(s),v)ds,
_
Jo
Uh(Q) =
v £ 5*, (12.21)
u0h,
u'h(0) = ulh
in
ft.
Then 6 = u^, — u^, E 5^ satisfies f (0„, v) + A(0, t;) = y B(0(s), v)ds + r , »
v
E S*
(12.22)
[ 0(0) = 0'(O) = 0 in° ft, where r f c (v)= / (aijkDje{t)Dke(t)
- / bijkDje(s)Dke(s)ds)Divdx,
(12.23)
and ttijfc — /
a
ijk(t>-> x,u-\- ere, Dit -f aDe)(a — l)dcr,
(similar for fr^fc).
Recall the superconvergence estimate in Theorem 12.4 (denote W = V^u) and the embedding theorem, for p < 2d/(d — 2), d > 2 and p < 00, d — 2, we have
||«h - W\\0lP < C\\uh - w\u < Chr,
12.3. Nonlinear Cases
223
and then, by the inverse property, \\uh - W\\ltP < Ch'Wr-WWuH
- Wh <
Chr'\
Therefore from L p -estimate of p = W — u (see Chapter 3), we get, for p mentioned above, that \\e\\o,P
and
\\e\\i,p < Chr~\
(12.24)
It remains to estimate 9. We shall show the following results. Theorem 12.7. Let d be the dimension of domain f£, d < 4. Assume that a is weakly nonlinear and b is strongly nonlinear. Then for the semidiscrete finite element solution uh(t) G S^ of (12.20) we have \\uh(t) - u(t)\\ + h\\uh(t) - u(t)||! < C(u)hr and the superconvergence estimate
IMt)-5 h (i)lli
+2 f Jo
- 2 f [ Bt(9(s),6(T))dsdT Jo Jo
+2 [ Jo
B(6(s),6(t))ds rh(9t)ds
< e\\0\\l + C f \\9\\l + 2 f rh{9t)ds. Jo Jo Since a is weakly nonlinear, therefore \rh,a(9t)\ =
1
/ JQ
(12.25)
aijkDjeDkeDiOtdxl '
||0t||2 + \\0\\l < C / V M M I C M + l|e||i,4)2||e||2,4dt.
Chapter 12. Hyperbolic Problems
224
Assuming at the moment that IMIo,4 < Chr
and
||e||i, 4 < Chr~\
(12.26)
we immediately derive that ||0t|| + \\0h
(12.27)
From this we can come back to check the case that r > 2, there are < Ch2r~3 < Chr~\
||0||i, 4 < Ch-^pWi
\\9\\QA < C\\9\\i < Ch\
and then ||e||i,4 < ||e||i,4 + ||fl||i,4 < Chr-\
||e||0,4 < Chr.
Therefore the assumptions (12.26) are reasonable. This proves the theorem when both a and b are weakly nonlinear. Motivated by the argument in French and Wablbin [52] for nonlinear PIDE, we further consider the case when b is strongly nonlinear. Here we only analyse the following case that rh,b{0t) =
bijkDje(s)Dke(s)dsDi0t(t)dx. JftJo
Integrating in £, and using Dirichlet formula and integration by parts (this is very important!), there is
1
/ r/i,fc(0t) =\ Jo * * JnJo Jo = \ f
f
bijkDje(s)Dke(s)dsDi9t(r)drdx\ '
(A0(T)5 iifc |5 -
[ f (\D6(t)\ + Jo i n
< Cmax||0(s)||i s
/
Die{r)bijkrdr)Dje{s)Dke{s)dsdx\[
\D6(s)\)\De(s)\2dxds
/ \\e\\\Ads + Cmax||0(«)||li00 Jo
< em^\\9(s)\\l+c(^
'
/ \\0W\ds
s
Ml4)\ch-\J^
J0
\\9\\lds)2.
So from (12.25) we have ||0 t || 2 + IMIi < Ch4r~4 + Ch-^j1
\\9\\\ds)2.
12.3. Nonlinear Cases
225
Assuming for the moment that hTd [ \\0\\*ds < C, Jo
(12.28)
then by Gronwall lemma we once again get (12.27). When d < 4 and r > 2, a simple induction procedure shows that (12.26) and (12.28) are valid for h < ho. Therefore Theorem 12.7 is also proved when b is strongly nonlinear. Further works related to the numerical solution for weakly nonlinear HIDE have also been studied.
Chapter 13
Problems with Positive Memory The last chapter is devoted to the following initial boundary value problem with a positive type memory term, \ ut + / K(t - s)Au(s)ds = f(t) in Q x J, < ^° (131) { | ti = 0 on d f t x J , ° } y u(0) = UQ in fi, where A is a self-adjoint positive-definite elliptic operator of second order, and the kernel K(t) G ^(J) is positive-definite, i.e. for each T > 0 it satisfies / JO
y{t) [ K(t-s)y{s)dsdt>0
for all
yeC(J).
(13.2)
JO
It is known that after integration in t the wave equation utt -f Ait = / has the form (13.1) with K(t) = 1, and that if K(i) is a delta function, (13.1) is the heat equation. But (13.1) contains a more extensive class of equations, see Chapter 1. We shall see that for smooth K on R+, (13.1) is of hyperbolic type whereas if K has a weak singularity at t = 0 , such as if K(i) = ta~1/T(a)) 0 < a < 1, then it adopts a more parabolic behaviour, more so if the singularity is stronger. This latter kernel is of particular interest, see Coleman and Gurtin [32], and Jin Choi and MacCamy [86]. The main contents in this chapter are based on the paper by Mclean and Thomee [118]. 227
Chapter 13. Problems with Positive Memory
228
13.1
Regularity of the Solution
For any kernel K G L 1 (0, oo) it follows from PlanchelePs theorem that (13.2) holds if and only if /»oo
ReK(i6) = / K(t) cos(6t)dt > 0, V0 G # \ (13.3) Jo where K denotes the Laplace transform of K. When K € L1 (0, oo) f] C1 (0, oo), we can integrate by parts over the period interval and thereby obtain a wellknown sufficient condition for positive-definiteness i.e. K' is non-decreasing. Such a kernel must also satisfy K > 0 and K' < 0, otherwise it would not tend to zero at infinity. Note further that if Kj is a sequence of positive definite kernels in L 1 (0, oo) and if Kj converges to K in L 1 (0, T) for all finite T > 0, then (13.2) holds. As an example K(t) = t Q _ 1 = lim tct~1e~t^ is positivej—>oo
definite for 0 < a < 1. It is evident that for any positive-definite kernel K, T
t
D(u) = I I K{t- s)A(u(s), u(t))dsdt > 0 for u G H%(Sl). (13.4) Jo Jo In fact, let {Aj,?}f° denote the eigenpairs of A, by the following spectral expression oo
obviously, we have D(u) = y^\j
I
/ K(t-s)uj(s)uj(t)dsdt>
0.
Rewrite (13.1) in the following weak form: {uuv) + j
K(t-s)A{u(s)1v)ds
= (f,v),
vGH*(n), ( 13 - 5 )
u = 0 on° 9 f i x J, ^ u(0) = UQ in ft,
one can simply derive the energy estimate for the solution as follows. L e m m a 13.1. Let A be a positive-definite self-adjoint operator in Hilbert space H and K be a positive-definite kernel, then for the solution u(t) of (13.5) we have
IK*)ll
13.1. Regularity of the Solution
229
Proof. Let v = u in (13.5) and integrating with respect to t, it leads to HT)||2+ / / K(t-s)A(u(s),u{t))dsdt=\\u0\\2 Jo Jo
+2 [ Jo
(f,u )dt,
and the lemma follows from (13.4). In this section some results on the regularity of the solution of (13.1) by the spectral decomposition will be presented. Using the following Laplace convolution f*9(t)= -9(t)=
I ff(t f(t-s)g(s)ds, Jo
t>0,
(13.1) may be written as v! 4- K * Au = / ,
u = 0 on <9f£,
^(0) = u$ in O.
Then the Fourier coefficient Uj(t) = (u(i),ipj) of the solution satisfies u'j + \jK * Uj = fj where fj = (f,ifj)
and
UQJ
=
for t > 0,
(13.6)
Suppose that Wj satisfies
(UQ^J).
w'j+\jK*wj=0
Uj(0) — v>oj,
fort>0,
^ ( 0 ) = 1.
(13.7)
Obviously, from Lemma 13.1, |wj(£)| < 1, and a solution of (13.6) is provided by Uj =WjU0j
+Wj * fj.
Thus, a formal solution of (13.1) is given by u(t) = E(t)u0 + E*f,
t>0,
(13.8)
E(t)u0 = X > j ( * ) K , ^ > j -
(13-9)
where the linear operator E(t) is defined by oo
By |iOj(t)| < 1 and Bessel inequality we have \\E{t)u0\\ < ||uo|| for
t>0,
and by (13.8), \\u(t)\\<\\u0\\+
Jo
fwfWds.
(13.10)
Chapter 13. Problems with Positive Memory-
230
Denote by \v\r the norm of v G Hr(Q)1 see Chapter 2. In discussing the regularity of it, it will be convenient to deal with the two terms in (13.8) separately. Theorem 13.1. Let m > 0 and suppose K® G ^(O.T) for some T > 0, where I < max(0,ra — 1), then \E{rn\t)v\r
0
r>0,
where C depends on K,T,m and A^, and [x] is the largest integer < x. Proof. In view of (13.9), it is sufficient to show that Wj(t) G C( m >[0,T], and | ^ m ) ( 0 ) | < CXf/2] and \w$m\t)\ < Cxfm+1)/2]. Obviously, by (13.10) these also hold for m = 0. Applying induction on m > 1, and differentiating (13.7) m — 1 times, we have ra-2 l
wf \t)
l 1)
+ \iK*wf -
= -\j Y, K^m-2-l\t)wf\0) z=o
= b^X^t),
(13.11)
and k j m ) ( 0 ) | < |& m _ 1 (A j) 0)| < C7 A ] + 1 ( m - 2 ) / 2 ] =
Cxf/2].
Replacing m by ra-fl in (13.11), it gives an equation of the form (13.6) for Wj l \ therefore w<m\t) = Wj(t)w<;m)(0) + Wj * bm(Xj,t) and m—l
< | ^ m ) ( 0 ) | +C\j ^ k f (0)1 < C7AS(m+1)/2). z=o The proof is thus complete. Theorem 13.2. Let m > 0 and assume that K^ G 1^(3), where I < max(0, TTi — 2), then, if UQ = 0, we have for the solution of (13.8), \w^\t)\
||u(-)(t)||
\\f{m)(s)\\ds,
t€J.
Jo
1=0
Proof. Put UQ = 0 in (13.8) and differentiate m times, we get m— 1 u (™)(t)=
^fj(m-1-()(t)/(0(0) (=0
+ £ s ,_/(« l ) )
(13-12)
13.1. Regularity of the Solution
231
and the desired result follows from Theorem 13.1. In order to discuss the regularity in space, it is convenient to introduce the brief notation
11/IUr = 11/11 Theorem 13.3. Let m > 0 and r > 1 be integers. Assume that l (m+2r-\) If u0 = 0, then for the solution of (13.1), we have K € L (J). m+2r-2
r (
IML,2r
|/ ')(0)|2 [(m+2r-Z)/2]
Z=0
+J
+ > , ||/||m+2Z-l,2r-2Z 1=1
\\f(m+2T)\\ds).
Proof. Differentiate (13.1) to obtain K(0)Au + K'*Au
= f - u",
(13.13)
and treat it as a Volterra equation for Au. Since K is positive-definite it is easy to see that if (0) > 0 (unless K = 0). Let G{t) be the resolvent convolution kernel of (13.13) which satisfies K(G)G+K'*G = K', then G ( m + 2 r " 2 ) € L X (J) and K (0)Au = f — u" — G * (/' — u"). Since w = 0 o n 9Q, we conclude from the elliptic regularity theory that, for 0 < / < r — 1, IM|m+2Z,2r-2Z < C\\f
~U
|| m +2/,2r-2Z-2
f
< C (||/|| m +2Z+l,2r-2Z-2 + ||^||m+2Z+2,2r-2Z-2),
whence, by repeated application, r \\u\\m,2r
< C 22 l l / I U + 2 Z - l , 2 r - 2 Z + C l M l m - i ^ O . 1=1
The proof is now complete by using Theorem 13.2 to bound the last term. In the second part of this section we shall turn to the case when K (t) is a weakly singular kernel, for example, K0i{t)^t(X-1lT{a))
0
t > 0,
which is positive-definite. However, since K'{t)eLl(J), Theorems 13.1 and 13.2 apply only when m = 1, while Theorem 13.3 does not apply at all. We shall see that, even for the special case with / = 0 and UQ = (fj we have
Chapter 13. Problems with Positive Memory
232
u(m)(t) « C m £ Q : + 1 _ m for small t, in particular, utt is weakly singular and Uttt^L1(J). See also Chapter 7. L e m m a 13.2. Assume K = Ka, 0 < a < 1, then the solution of (13.7) is given by wj{t) = w(\)/ll+a)t) for t > 0 , where 00
fn(l+a)
»W = E ( - l ) " r ( 1 + n ( 1 + n=0
v
v
°° a)) /;
= E(-l)B^(l+a,W. n=0
Proof. Since K i + a = K a for a > 0 and K\ — 1, by the semi-additive relation K a * K^ = Ka+/3 for a, /3 > 0, it follows that oo
w'>' = £ ( - l ) " i r n ( 1 + a ) = ^ ( - l ) n + 1 t f a * if 1+n(1+a) = - # « * ti;. n=0
n—\
Since w(0) = 1, w is the solution of (13.7) in the special case A = 1. Therefore Wj(t) defined by (13.7) satisfies ^ ( 0 ) = 1, and for b = A 1 / ( 1 + a ) , w'At) = bw'(bt) = -b{Ka
* w)(bt) =-b
K{bt -
s)w{s)ds
Jo = -b2 j K{b(t - s))w(bs)ds = -b1+a f Jo Jo = -\j{K*Wj)(t),
K(t-s)Wj(s)ds
as claimed. We observe that w(t) = e~t if a = 0 and w{t) = cost if a = 1, which are two limiting cases. For 0 < a < 1, Lemma 13.2 shows that w^^t) « C m t a + 1 _ m for small t, while for large £ the following asymptotic expansion - 1 °° w{t) ~ — V sin(no:7r)r(n(a + l ) ) ^ " * 1 )
(13.14)
n=l
is also obtained. We are now able to prove our regularity results for (13.1) with the weakly singular kernel Ka. Theorem 13.4. Let K = Ka, 0 < a < 1, and r £ R1, then \E(t)v\r+2i < C T - ( a + 1 ) > | r ,
t>0,
0 < £ < 1,
13.1. Regularity of the Solution
233
with C depends on a. When m > 1, we have |^m)(^|r+2/
t>0,
- 1 < I < 1,
where C depends on a and m. Proof. By Lemma 13.2 and (13.14), we have \w(t)\ ^ C m i n ^ , * " 1 - " ) and by Lemma 13.2, \wj(t)\ < C [ ( A V ( 1 + a ) t ) - 1 - ° f - C\-lt-^^\ = 0 ( ^ + 1 _ m ) for small t and w^
Similarly, since w^ large t, we have Iw^it)]
< ct-(a+Vl-m,
\wlm)(t)\
0 < I < 1. = O^-"" 1 - 7 7 1 ) for
< CAT1*-*1-1-")1-™
\l\ < 1.
Thus the theorem follows. We see that the solution of the homogeneous equation is more smooth than the initial data by two orders of differentiation, for t > 0, with a bound which deteriorates faster as t —> 0 for weaker singularity. As a —> 0 we recognise for mally the smoothness property of the parabolic equation. We also note that although the smoothness with respect to x is limited to second-order deriva tives, the solution is infinitely differentiable with respect to t. Here, the bound studied in Theorem 13.4 may be chosen to be less singular than t~m by sacri ficing some of the spatial regularity. This is useful in the following discussions which are of interest for error estimates, see Section 4 of this chapter. Theorem 13.5. Let K = Kaj0 < a < 1, and m > 1,T > 0. If \lj\ < 1 for 0 < j < m — 2, then we have for the solution of (13.1) with u$ = 0, m-2
{rn)
\u
(t)\\
+ll/ (m "" 1) (0)|| + f* \\flm)\\d8, Jo
teJ.
Further, if 0 < e < 1,
N*)||2 < c ( ^ + 1 ) - | / ( o ) | 2 e + ||/'(o)|| + jT \\f"\\ds),
Chapter 13. Problems with Positive Memory
234
and
1KWH2 < c(i/(o)|2+t«°+»-°\f{o)\2e + iirwii + jT iinicfa). Proof. The estimate for ||u( m )(£)|| follows at once from (13.12) and The orem 13.4. To estimate ||ii(t)|| 2 , from Ka * Au = f — u' and the well-known Abel inversion formula, there is Au = (Id * Au)' = ( # ! _ * * (/ - u'))f = K^a
* (/' - u"),
(13.15)
where in the last step we used the fact that /(0) — u'(0) = (Ka * Au)(Q) = 0. Thus, from the elliptic regularity, we get ||«(t)|| 2 < C\\Au(t)\\ < C f\t
- s)-a\\f'(s)
-
u"(s)\\ds,
Jo
and the desired estimate follows by the bound just obtained: ||«"(t)|| < C ^ + ^ l / W b + ||/'(0)|| + f \\f\\ds.
(13.16)
Jo
Next, differentiate (13.15) to obtain Au' = / f 1 _ a * ( / , / - u ' ' ' ) . Noting that f'(0)-u"(0) = (Ka*Au)'(0) = 0 because (Ka*Au)' Ko.Au' and ^(0) = u$ = 0. It is already known that \W"{t)\\ < c(t"-i\f{Q)\2
+ * £ ( 1 + a ) - 1 | / ' ( 0 ) k + ||/"(0)|| + f
= Au(Q)Ka +
\\f"\\ds),
so the bound for ||w'(£)||2 follows.
13.2
Semidiscretization in Space
Consider the semidiscrete finite element approximation Uh{t) G 5^ satisfying J (uht,v)+
K(t-8)A(uh(s),v)d8
[ uh(0) = U0h = Rh,v>o-
= (f,v),
veS?,
(13.17)
13.2. Semidiscretization
in Space
235
Let RhU G 5^ be the Ritz-projection associated with A and denote u^ — u = {v,h — RHU) H- (RhU — u) = 9 + p, where 9 = u^ — RHU satisfies
W:, v) +
/ HT(t - s)A(0(s), ^)ds - - ( ^ £ , v),
v £ S£, 0(0) = 0.
(13.18)
Jo
By the standard argument procedure, one may derive the following estimates which are similar to those in the parabolic case. Theorem 13.6. Let K be a positive-definite kernel, then for the solutions of (13.17) and (13.5), \\uh(t)
- U(t)||i < C\\U0H - Uo\\l + Chr~l
(\\u0\\r
+
/
KHrds),
1 = 0,1.
Proof. Choosing v = 9 in (13.18) and integrating in £, we have i ( | | 0 ( T ) f - ||0(O)f) + ^ = - /
(p t ,0)di< /
JO
jf* 7f(t - S )A(0( S ), 0(i))d«ft
||pt||||0||d£,
Jo
and by (13.4), ||0(T)||< ||fl(0)||+2
Jo
jT\\pt\\dt.
Therefore the estimate for \\uh - u\\ can be obtained from the bound of \\pt\\. Next, set v = Ah9 in (13.18), iD t A(9,9) + [ K(t - s)(Ah9{s), * Jo = -(PuAh9)
= -A(PhPu9(t))
<
Ah9(t))ds C\\PhPth\\9\\i,
then after integration over (0,T) and by (13.4), it becomes
l|fl(r)||5
HPfc^llillflllicft
Jo or
||tf(r)||i
Chapter 13. Problems with Positive Memory
236
In addition, the early paper of Neta [122] treated a nonlinear case that K is smooth and Au is replaced by the one-dimensional operator — (a(ux))x where a' is positive, then there is an error estimate of the form r-l
IK-'HIL2^1) <
C{u)h
Jin Choi and MacCamy [86] considered the weakly singular kernel K(t) = CtOL~x e~l:, 0 < a < 1, here the exponential is included so that K € L1(i?_j_). Let Ha denote the Hilbert space defined by — [Vll"'llifl/2(L2) + IMIi/-«/2(Hl)) u \Hr<* u Tn =
where the fractional order Sobolev norms in time are defined in terms of the Laplace transform, they showed that
IK-«ll 5tt
13.3
Ch2\\u\\L2{H2y
Positive-Definite Quadrature Rules
In order to treat the fully discrete case, one needs to discuss quadrature for mulas suitable for positive-definite kernels of the convolution type. Consider the quadrature formula n
Qn(y) = ^ >
rtn n j
y * /
K(tn -
s)y(s)ds,
its quadrature error qn(y) = Qn(y) - f " K(tn - s)y(s)d, Jo
13.3. Positive-Definite Quadrature Rules
237
and the global quadrature error
eN(y) = kJT\\q"(y)\\. 71=1
It is natural to assume that the quadrature form analogous to the double integral in (13.4) is N N
J
D (y) = k £Qn(y)yn>0,
Vy = (y°,y\
■ ■ • ,yn)T.
(13.19)
71=1
We shall call such a quadrature rule Qn positive. Note that, in general, if some of the u>no are nonzero, (13.19) cannot hold since DN(y) lacks the term for y°. However, for the backward Euler scheme we may assume that u>nQ = 0 for n > 1, since the quadrature rules of first-order accuracy have this property. In addition, cjnn > 0 for n > 1 is a prerequisite for Qn to be positive. This means that the matrix coefficient of Un contains a term in the stiffness matrix corresponding to A; in particular, this scheme is implicit. For quadrature rules of second-order accuracy, one needs to include in it the term for y° and (13.19) is not satisfied. We say that Qn is weakly positive if DN(y) > 0 for all y with y° = 0 and Qn is o;0-positive if DN(y)
> -MV0)2,
V N>l,y
(y0,y\...,yN)T.
=
Note that 0-positive is the same as positive, and that u)nn > 0 for n > 1 is necessary for the weak positivity. Lemma 13.3. Let {^}o° D e a sequence of positive numbers such that oo
b(6) = J2 bj cos(j<9) > 0 for
9 € R,
N>1.
(13.20)
j=o
Then N
71
N
P (y) = J212b^yjyn*°> n=l
» = fe1.■•-.»*)■
j=l
0
In particular, if {ajjg is positive and convex, then (13.20) holds when bo = ao/2 and bj = a3- for j > 1. Proof. Let " denote the Fourier transform, so that, for example, CO
j=0
Chapter 13. Problems with Positive Memory
238
we have, by a simple calculation and orthogonality, r2n
/
N
N
b(9)\y2\d6 =J2Y,
p2n
bmy^ynei^^-^ede
N
12 2wbmyiyn = 2nDN(y).
=E n=l
Since DN\y)
m-\-j=n
is real-valued and Re6 = b > 0, then DN
1
/"27r
(y) = 2^Jo
m\y\2de>o.
The second conclusion can be found in Zygmund [175], p.181 of volume 1. To analyse the errors of quadrature formulas and their positivities, we shall assume first that the kernel K is smooth and satisfies KeC2(R+)
and
(-l)j K^j) (t) > 0 for
t > 0, j = 0,1,2.
(13.21)
Consider the following right-hand rectangular rule: n
Qn{y) = kY,Kn-jyj
with
Kj=K(tj),
(13.22)
J=I
such that that u>no = 0 and unj — kKn-j for j = 1,2, • • • ,ra (note that the left-hand rectangular rule does not satisfy the weak positivity since cjnn = 0 for n > 1). L e m m a 13.4. Assume that K e C(J) and that (13.21) holds, then the right-hand rectangular rule (13.22) is positive. Further, if K G Cl{J), we have the global quadrature error eN(v)
for
tN < T.
Proof. As a result of (13.21) the sequence {Kj}™ is positive, bounded and convex. From Lemma 13.3 with 60 = Ko/2, bj = Kj for j > 1, we have, for all y,
DN(y) =fc2( E b0(yn)2 + E E 6„_,VVn) > \k2K0 E ll/"|2 > 0. n=l
n = l jf=l
n=l
13.3. Positive-Definite Quadrature Rules
239
The quadrature error satisfies |9 n (»)| < Ck / Jo
\Ds{K(tn
< Ckj\\\y\\
-
s)y(s))\ds
\Mds)-
+ \\yt\\)ds < Ck(\\y(0)\\+r
The desired estimate follows by summation over n. Next, we consider the following trapezoidal rule
Qn(y) = k(-Koyn + J2K"-JyJ
+ 2Kny°)
with
Kj = K{tj)
'
(13 23)
'
j=i
Lemma 13.5. Assume that K G C(J) and that (13.21) holds, then the trapezoidal rule (13.23) is cjQ-positive with UJ0 = k2K0/4:. Further, provided K e C2(J), there is eN ( 2 / ) < ^ 2 ( | | y ( 0 ) | | + | | y t ( 0 ) | | + | £ | | ^ | | ^ )
for
tN
Proof. Setting 60 = KQ/2 and bj = Kj for j > 1, (13.23) may be written as
Qn(y) = k(J2b"-iyJ
+
2bnV°)-
Therefore,
DN(y) = k^f2J2bn-jyjyn + ^ E WV)> n = l ,7 = 1
n=l
or, after a simple rearrangement,
^(w) = ^ 2 ( E E b-nfivn + £ £ b^yjyn - bo(y0)2) ■ n=0 .7=0
n = l j'=l
Since K satisfies (13.21), an application of Lemma 13.3 shows that the two sums on the right-hand side are non-negative (the first after a simple shift of indices). Hence Qn is ^-positive with U>Q — k2bo/2 = k2Ko/4. The quadrature error can be handled by the argument similar to Lemma 13.4, but now it is \qn(y)\ < Ck2 ftN \D2s(K(tN - a)y(a))\da. Jo
Chapter 13. Problems with Positive Memory
240
Below we turn to the case when the kernel K is weakly singular at t = 0. For a piecewise constant function y(t) taking the value y{tj) in (tj-i,tj], we have the quadrature rule of product-integration type,
Qn(y) = E / 3
K
-s>>y^ds = $>«-;!/&),
^
( 13 - 24 )
where H
= /
K(t)dt.
Jtj
Lemma 13.6. Assume that K G ^ 1 (J r ) and satisfies (13.21), then the quadrature rule (13.24) is positive and eN(y)
fN Jo
\\yt\\ds
for
tN < T.
Proof. The sequence {ujj}^ is convex since LJJ+2
- 2o; j+ i + cjj = /
(K(s + 2k) - 2K(s + k) + K(s))ds > 0,
Jtj
and u>j are also bounded. We conclude from Lemma 13.3 that the quadrature formula is positive. In addition, by the definition of LJJ we have
i?n(w)i = I E /*' *(*» - *)(»&) - » w H ^ E /3
K
^ - *) / ' ly'(s)lrfsd* < E W " - J / ' l2/'(s)lds-
Summing over n and reversing the order of the summation, we arrive at
kit\\qn(y)\\ < * E ( E w » - i ) / 3 \Mds ^ k fN K^dt fN \Mds' n=l
j=l
n=j
Jt
J-i
^0
J0
In the special case that K(t) = £ _ 1 / 2 / r ( l / 2 ) = (7rt) - 1 / 2 , using an argu ment involving generating functions, Sanz—Serna [141] proposed the following quadrature rule Qn(y) = fcJ/2 Ytln-jV*, 1= 1
where
7j
= (-1)> ( ~ 1 / 2 ) -«? ,/ \v
(2j - 1)!! («)H
13.3.
Positive-Definite
Quadrature
Rules
241
and proved an error estimate for / = 0 by the spectral method. This analysis was improved further by Lopez and Marcos [106] by the argument presented in this section. It is easy to see t h a t {7j}o° is convex and t h a t 7j —> 0 as j —» oo, so t h e q u a d r a t u r e rule is positive. To derive the q u a d r a t u r e error it suffices to study t h e difference between t h e q u a d r a t u r e rule and (13.24), i.e. n
dn(y)
= k1/2^26n-jy(tj)
where
6j = 7j -
k~1/2ujj.
Mclean, T h o m e e and Wahlbin[119] shown t h a t
\dn(y)\ < Ck(t?'2\y(0)\ +XX+7!2-; r V
\y"(s)\ds)>
h
3=1
i~^
n
*1
'
and then eN(y)
+J"
\\yt\\ds)
for
tN < T,
which slightly improved the result of Sanz—Serna. Finally we consider a second-order q u a d r a t u r e rule which is weakly posi tive for any positive-definite kernel K(t). To do so, replace y in t h e integrand by its continuous piecewise linear interpolant, i.e. set
Qn(y) = J2k^ I' j=l
K
^-sWi
-sW~l + < s -*i-i)y^ ds = X>»>v.
Jt
:i-i
j=0
(13.25) where, with t h e help of t h e hat function H(i) = max(l — |i|, 0), min(fc, tn-j)
/
K(tn_j
-
s)H(s/k)ds.
min(k,tj)
L e m m a 1 3 . 7 . Assume t h a t K £ ^ 1 ( J ) is a positive-definite kernel, then t h e product-integration rule (13.25) is weakly positive and \eN(y)\
f \\yt\\ds + Ck2 I " \\ytt\\ds Jo Jk m
for
tN
P r o o f . Denoting by y(t) t h e piecewise constant function, and taking t h e value yj = y(tj) in (tj-i,tj], one may write N
y(t) = J^ijj{t)yj
in
(0,^),
242
Chapter 13. Problems with Positive Memory
where i/jj is the characteristic function in (tj-i,tj]. that 0 < I(y) = I"
[ K(t-
s)y(s)y(t)dsdt
A simple calculation shows
= V
V&n,VV\
where, with cvnj defined in (13.25), ptn
pmin(tj,t)
bnj = I
/
K(t — s)dsdt = kujnj.
Thus, DN(y) = I(y)/k > 0 with y° = 0. The accuracy of Qn will be discussed later. Using the Taylor expansion %
y(U) - y(t) = f
y'{s)ds = (U - t)tf(t) + /
%
y"(s){s - U)ds,
and calculating the interpolation error *i-(*) = i(h - t)vj~x + (* - tj-i)yj)/k
- y(t)
= {(tj - t) f ' ' y'(s)ds + (t - ^ _ i ) I l
or = ((tj -t) ^
y"(s)(s - tj^ds
3
y\s)ds)j/k
+ (t - t^)
j ' y"(s)(s -
trfds^/k,
we have with UJ = fi'+1 \K(t)\dt, Hi
n j=i
ru
J
h-i
rk
n
~tj
\y'(s)\d8 + kY^vn-j JO
j = 2
\v"(a)\d8. Jtj-i
From which the estimate of eN(y) follows as in the proof of Lemma 13.6.
13.4
Full Discretization
Now consider the full discretization of (13.1) and analyse first the backward Euler scheme, i.e. Un G S^ satisfies (dtUn,v)+Qn(A(U,v))
= (fh,v),
veS*,
U° = u0h.
(13.26)
13.4. Full Discretization
243
Lemma 13.8. Assume that K is positive-definite and that Qn is positive. Then the solution of (13.26) has N
II£/" II < I K h | | + 2 f c £ | | . T | |
for
N>1.
n=l
Proof. Setting v = Un in (13.26) it becomes \dt\\U"f
+ ^\\dtUn\\2 + Qn(A(C/, IT)) = (/», £/").
Summing over n and noting that Y, kQn(A(U, Un)) = J2
kA
(Qn(U),
Un)
n=l
= J2HQn(A1h/2U),A1h/2Un)
= I DN{A]l2U)dx Jn
> 0,
we get N
||C/»||2<||[/°||2+2A;^||r||||C/"||, n=l
and the desired inequality. Theorem 13.7. Assume that K is positive-definite and that Qn is posi tive. If u0h is chosen so that \\uoh — UQ\\ < Chr\\uo\\r, then for the solution of (13.26) we have \\Un - u(tn)\\ < Chr (\\u0\\r + /
N
\\ut\\rds) +Ck
fN
\\utt\\ds +
2eN(Au).
Proof. Write en = Un - u(tn) = 9n + /9n, then 9n = Un - Rhu(tn) <E S? satisfies (5tfl n ,t;) + A(QB(«>))T;) = (r» ) t;), v€S?, (13.27) where r n = r? + r% + r£ = ut(tn) - 3 t u(t n ) - qn(Au) Applying Lemma 13.8 we have 110*11 <||6>°|| + 2 k f > » | | , n=l
dtpn.
244
Chapter 13. Problems with Positive Memory
where Chr\\u0\\r,
||0°|| < \\u0h - u0\\ + ||ixo - RhuQ\\ <
and the estimates for r™, ,7 = 1,3, are the same as before. This together with the bound of ||p|| proves the theorem. We next discuss the second-order backward difference scheme (D[2)Un,v)
+ Qn(A(U,v))
(BtU\v)
= (fn,v),
+ Q\A(U,v))
veS?r
= (f\v),
n>2,
(13.28)
U° = u0h,
where Qn is some second-order quadrature rule and Dl2)Un = dtUn + ^kd2tUn. L e m m a 13.9. Assume that K is positive-definite and that Qn is ex positive, then the solution of (13.28) has N
\\UN\\ < \\U°\\ + 3 ^ / 2 | | 4 / 2 W 0 | | +BkJ2
ll/nH
for
N > 1.
n=l
In particular, if Qn is weakly positive and u^h = 0, then N
\\UN\\<3kJ2\\fn\\
for
N>1.
71=1
Proof. It suffices to prove the first statement. With AjUn = Un for j = 1,2, we may write kD[2)Un = ^Un - 2Un~l + \un-2 &
£
= 2A1Un -
&
Un"j,
-A2Un.
Since 2(A J t/ n , Un) = Aj\\Un\\2 + H A ^ f , we have /c(Z^P ) ^ rx , C7^) = ZS.allC^^H2 — ^zX^il^^lP-f- ll^it^7"!!2 — ^HZ^s^^li2 for n > 2. By summation from 2 to AT, N
5>i||£H| a n=2
JA 2 ||C/I 2 )
= |||c/"f - Iwu^f
- l\\uY + \\\u°f,
13.4. Full Discretization
245
and since A2Un = Aif7 n + Ait/ 7 1 - 1 , we obtain
£(||A![r ||2 - \\\A2Unf)) > f^dlAx^il 2 " jdlAi^ll + IIAitT-1!!)2) n=2
n=2
2 1 2 2 > i2 ^^(IIAjtn - "IIAif/!!" )' = 2idlAi^H - HAiC/Y). v V " ' " * n=2
Hence, TV
k&U1,!/1) + fc£(Dt(2)£/",[/") > idlC^Ml2 - ||C/°||2 + HA^II2) 72 = 2
+I(||A1tf"||2 - IIA^U2) + i ( 3 | | ^ | | 2 - ll^" 1 !! 2 - SU^II2 + \\U°f) > j(3||t/ i V || 2 - l l ^ " 1 ! ! 2 - SHC/1!!2 + \\U°\\2).
(13.29)
However, by (13.28), N
r
N
n=2
^^
n=l
and by o;o-positivity and (13.29) this yields, with z = Ah
\\uNf < liwu^f
U°,
+ Ht/T + \\u°f) + \kJ2{f\un) + |Wolk||2.
As in the first order case, suppose ||C/ m || = max ||C/ n ||, then 0
m
A
m 2
\\u f < -\\u \\ + -(llt/l + \\u°\\ + 4kJ2 ll/"ll) lltHI + f^oPII2, 1
1
n=l
such that 771
-
2
lltHI < gOl^ll + l|f/°ll +4fc^ lini)!!^!! +2a;0|kl|2, n=l
and then _m_
1
|I7-||2 < _ (ll^l ,| + ||y0|| +
4fc
£ n=l
2
||r||)
+ 4 || W() |
z\\\
Chapter 13. Problems with Positive Memory
246
from which we conclude that
l|£/m|| < kWU'W + 1|tf°ll) + 2A; JT \\fn|| + 2»l,2\\z\\. Z
n=l
Since (U1 - U°, U1) + kA{Q\U),
U1) = k(f\
U1),
we easily obtain, from u;o-positivity for N = 1, that
and then
||^||<||f/ 0 || + (2W0)1/2N| + fc||/1||. The proof is now complete. As a consequence of Lemma 13.9, we have the following error estimate. Theorem 13.8. Assume that K is positive-definite, and that Qn is weakly positive, then for the solution of (13.28) with u^h — Rhuo w e have \\Un - u(tn)\\ < C 7 i r ( | K I | , + j " llutllrds) +Ck /
\\utt\\ds + Ck2 /
JO
\\uttt\\ds + eN(Au).
Jk
n
If Q is a;o-positive and uoh is chosen so that \\uoh - u0\\ -h h\\u0h - uo\\i < Chr\\u0\\r, then the error estimate above remains valid after the addition of a term Cft r - 1 o;o /2 ||tio|| to the error bound. Proof. Similar to that of Theorem 13.7, here r and 9n satisfy p f V , v) + A(Qn(6), v) = (rn, v),
n>2,
where rn = r™ + r^ -f r j , rnx = ut(tn) - Dl2)u(tn),
r£ = -qn(Au),
rj =
~D[2)pn.
It is easy to see that N
p2k
r
* E H"ll ^ n=2
Ck
/
Jo
ntN
ds
IMI +
Cfc2
/ \\ut»\\ds
Jk
13.4. Full Discretization
247
and
kT\\r^\\
fN \\ut\\rds.
n=2
Also, using the estimates for the standard backward Euler method for n = 1 we have * l k i l l < f e / \\utt\\d8 and Jo
k\\r\\\
[ Jo
\\ut\\rds.
For the case where Qn is positive, these estimates complete the proof by Lemma 13.9. In the a;o-Positive case one must also note that ||0°|| +3u;10/2\\A1h/2e0\\ < ||0°|| + C u ; J / V | | 1 < C(fc' + ^ / V - 1 ) | | « 0 | | r . The proof of the theorem is complete. Finally, we consider the Crank—Nicolson scheme (dtUn, v) + Qn-^2(A(U,
v)) = ( / n " 1 / 2 , v) for n > 1,
U° = u0h.
(13.30)
As we shall see below, it is difficult to combine the positivity of Qn in the above sense. For this we shall propose an alternative discretization in which, Q1/2(y) = QHv)/2,
Qn-1/2(y)
= (Qn(y) +
Qn~\y))/2.
This is a second-order approximation of the integral -1/2
/
K{tn-i/2
-
s)Au(s)ds.
However, such a procedure does not necessarily yield the positivity required in our above framework. In order to demonstrate this, we consider the quadrature formula over [0, ti] and [0,£n] by means of the trapezoidal rule, i.e.
Q\y) = \k{^K0y' and, for n > 2, n-l
i=i
+ \KlV°)
Chapter 13. Problems with Positive Memory
248
n-2
= \k(±K0yn
+ (Kx + \K0)yn-1
+£(#„_, +
Kn_x^
+i(Kn_1+Kn)2/°). This Qn is not weakly positive. In fact, D2(y) is non-negative for all y = {y°, Vli 2/2)> since the matrix as k —> 0 satisfies K0 Kx + K0/2
Ki+Ko/2 K0
\ )
Ao
( 1 \3/2
3/2 \ 1 )
is indefinite for small k if K € C(J). Despite this, the scheme will yield a viable method of order 0(hr -\-k2). Its proof suggests a modification to the definition of positivity for the quadrature rule. Lemma 13.10. If K e C(J) and (13.21) holds, then the solution of the Crank—Nicolson scheme (13.30) satisfies N
1
||^||<||^0|| + ^(0)A;2p^o^||+2A:^||r-1/2||
for
N
>
L
n=l
Proof. Taking v = Un = {Un + C/ n ~ 1 )/2 for n > 1 in (13.30) we have \\Unf
- WU71-1^ + 2k{Qn-1^{AhU),Un)
= 2k(fn-^2,Un).
(13.31)
Put U° = 0 and observe that Q"~V\U)
= Q»(tO - | ( t f n _ ! - Kn)U°
for
n > 1,
SO AT
2kY,(Qn-1/2(AhU),Un) n=l
= 2 / DN{A]!2U)dx
- ^ £ ( # „ _ ! - Kn)(AhU°,
Un).
By Lemma 13.5, the trapezoidal rule Qn is weakly positive, hence after sum ming over n = 1, • • •, N in (13.31), we arrive at
\\Unf < \\U°f + ^\\AhU°\\ J2 \Kn-i ~ Kn\\\Un\\ + 2kjr\\fn-1/2\\\\Un\\. n=l
n=l
13.4. Full
Discretization
249
Since (13.21) implies TV
Y,
N
~ Kn\ = ^ ( t f n - 1 ~ Kn)
\Kn-l
n=l
= K0 ~ Kn < K0,
n=l
and if m is chosen so t h a t ||(7 m || = "
"
1
m 2
m a x ||C/ n ||, then 0
" N
2
iit/ n < (\\u°\\ + -K0k \\Ahu°\\+2kY, \\r~1/2\\) w m n=2
T h e result follows at once. Applying this stability estimate to 6n = Un — Rhu(tn), as in t h e proof of Theorem 13.7, we see t h a t if K is smooth and UQ^ = RhV>o, then N
||Q"||<2fc5>1, 71=1
where rn = ut(tn)
- dtu(tn)
- qn-y2(Au)
3tpn.
-
From this we can easily conclude t h a t \\Un — u(tn)\\ = 0(hr + k2). Now, combining t h e theorems mentioned above with various q u a d r a t u r e rules we can derive some applicable results as follows. 1. For t h e backward Euler scheme with t h e smooth kernel K G C2{J) and t h e right-hand rectangular rule, we have, from Theorem 13.7 with r = 2,
llc^-u^ii^c^K^ + fc), where
C(u) = C(\\u0\\2 + J (KII2 + ||«tt||)dt)
< C*(KU + |/(0)|2 + |/'(0)|a + H/Iko + j
||/'»||
which requires t h a t u0 = Au0 = / ( 0 ) - / ; ( 0 ) = 0
on
dSl.
(13.32)
T h e second-order scheme will require more restrictions on UQ and / .
Chapter 13. Problems with Positive Memory
250
2. For the first-order scheme with a weakly singular kernel K(t) = t*"1 /T{OL), 0 < a < 1 and the quadrature rule (13.24), we obtain the same error estimate as before in the case of smooth kernel. By Theorem 13.4, \\E'(t)uQ\\ < Ct^W-uoh,
\E,(t)u0\2
< C^+1>-1K|2+2e,
combining these estimates with (13.16) and the last estimate of Theorem 13.5, we have C(u) < c ( K | 2 + e + |/(0)| 2 + |/'(0)| 2 e + ||/"(0)|| + J
\\f'"\\da)
< oo
for 0 < e < 1. If 6 < 1/4, then only the boundary conditions UQ = /(0) = 0 on dQ, should be satisfied. 3. For the second-order scheme with a weakly singular kernel K(t) — tol~1/T(a), 0 < a < 1 and the quadrature rule (13.25), we have, from Theorem 13.8 and Lemma 13.7,
\\UN - u(tN)\\ < Ch2(\\Uoh + J" p2k
+Ck
Wnhds) ptN
(\\ut\\2 + \\utt\\)ds + Ck2 / Jo Jo
(||«tt||2 + ||«t«||)d»,
provided UQ^ = Rh^o- For simplicity, we restrict f = 0 and obtain from Theorem 13.4, with I = 2(1 + 2 a ) / ( l + a) > 2, I W b + ||ti«|| < C^-^tiolz
and
\\utt\\2 + \\uttt\\ <
Ct°-2\u0\i,
which means that \\UN - u(tN)\\ < C(h2 + k^luolL
(13.33)
Thus, even though the regularity of the solution is not high enough to take full advantage of the second-order method, an improvement over a first-order method is manifest, and if the kernel is less singular, there would be more improvement. The following numerical example will confirm this conclusion. Remark 1. The economical schemes mentioned in Chapter 5 cannot be expected to have weak positiveness. However, the problem of saving storages can be solved by an additive scheme (see Sectoin 2 of Chapter 5). Mclean, Thomee and Wahlbin [119] discussed the cases with variable time steps for both BES and CNS, and used the additive quadrature rule. They also considered
13.4. Full Discretization
251
a case with a singular kernel when the quadrature rule of product-integration type and the graded net tn = (nfc)CT, cr > 1 near t = 0 are used. Remark 2. Lubich, Sloan and Thomee [109] further studied the case with both the singular kernel and the nonsmooth data. To conclude this section we shall cite two numerical examples with A = -D2X, Q. = (0,1), r = 2 and h = 1/m. The eigenvalues and eigenfunctions of A are 2 A O'T T)2 V2smJ7rx for jj > 1. 1. A,^ = (jV) and Vjip(x) ^ s i n j ™ for j(x) = v In this case, Rhu is just the piecewise linear interpolant to u. Problem 1. Let K be the smooth function K(t) = ee~22t* Since K' = -2K,
for
«t > 0 .
(13.7) is equivalent to
v/j + 2w'j + XjWj = 0, t > 0,
^ (0) (0) Wj
= 1,
wj(0) = 0,
which has the solution 1 ^•(t) = e-^cosbjt e-^cosb,-* + Wj{t) = + 6J b"1 sin V ) ,
We choose u0 = sinnx and f{t,x)
&,- = v ^A~^T1 hj AJ3!1
= sin2™. The exact solution of (13.1) is
1 u(t,x)=e-((cosb smb1t)cosirx u(t, x) = e - ( ( c1to s M + br1 b^sinftxtJcosTra:
+ _J +
( 2 - e«(2cos b2t - (b2 - bo K11)) sinb sin b22t)) t)) sinsin2^. 2nx. e<(2cosM
Problem 2. Take the weakly singular kernel as K(t) #(*) = = (TT**(**) 11//22
for for
t >t>0. 0.
By Lemma 13.2, OO
w}(t) = V y "((--ll))""((A A^^33//22 )) " / r ( l + 3n/2),
t > > 0.
n=n=0
So, with no = sinTrx and f(t, s) = sin7rx the exact solution is 00
+
i1
*■*> - B-^lfa^)
+
r(2^))^3/2)"si—
Chapter 13. Problems with Positive Memory
252
We used a composite four-point Gauss rule to evaluate the 1?-norms, which is of accuracy 0(hA) if u is a smooth function of x. The same quadrature formula is applied to (fn,v). Tables 1—4 list the errors when the backward Euler scheme is applied to Problems 1 and 2, with the right-hand rectangular rule and the quadrature rule (13.24) respectively. We see that for the two problems, \\Un - u(tn)\\ = 0(h2 + k).. In Tables 1 and 2 with k = h the errors behave as 0 ( r a - 1 ) , except at t = 0 where the errors \\uoh — u0\\ = 0(m~~2). When k = h2, the errors reduce to 0(m~2) as shown in Tables 3 and 4. Table 1
t 0 0.5 1.0 1.5 2.0
m=4 0.216 .717E-1 0.245 .737E-1 0.124
Problem 8 .577E-1 .393E-1 0.161 .585E-1 .876E-1
1, k = h 10 .140E-1 .287E-1 .934E-1 .414E-1 .553E-1
Table 2
32 .352E-2 .182E-1 .503E-1 .256E-1 .315E-1
m=4 0.216 0.271 .636E-1 .551E-1 .612E-1
Problem 8 .557E-1 0.173 .248E-1 .467E-1 .350E-2
Table 3
t 0 0.5 1.0 1.5 2.0
m=4 0.216 .817E-1 .864E-1 .570E-1 .669E-1
Problem 1, k = Kz 8 10 .557E-1 .140E-1 .236E-1 .612E-2 .256E-1 .690E-2 .208E-1 .593E-2 .202E-1 .541E-2
2, k = h 10 .140E-1 0.104 .779E-2 .314E-1 .550E-2
| 32 .352E-2 .590E-1 .171E-2 .185E-1 1 .472E-2
Table 4
32 .352E-2 .153E-2 .177E-2 .153E-2 .136E-2
m=4 0.216 .946E-1 .171E-1 .269E-1 .102E-2
Problem 2, k = K2 8 10 .557E-1 .140E-1 .270E-1 .716E-2 .401E-2 .957E-3 .883E-2 .238E-2 .374E-2 .108E-2
\ 32 .352E-2 .184E-2 .236E-3 .600E-3 .287E-3
Problem 1 was also solved by the second-order backward differencing scheme (Table 5) and the Crank—Nicolson scheme (Table 6) respectively. We see that for the two schemes,
\\Un-u(tn)\\=0(h2 So even with k = h the errors are of
0(m~2).
+ k2).
13.4. Full Discretization
253
Table 5
t 0 0.5 1.0 1.5 | 2.0
Table 6
Second order scheme, k = h m=4 8 10 32 0.216 .557E-1 .140E-1 .352E-2 0.117 .372E-1 .106E-1 .284E-2 .866E-1 .372E-1 .117E-1 .310E-2 .265E-1 .100E-1 .283E-2 .567E-1 .720E-1 .622E-2 .174E-2 .194E-1
Crank—Nicolson scheme, k = h ] m=4 32 8 10 0.216 .557E-1 .130E-1 .353E-2 0.118 .302E-1 .763E-2 .192E-2 .793E-1 .204E-1 .506E-2 .125E-2 .852E-1 .222E-1 .555E-2 .139E-2 .319E-1 .933E-2 .246E-2 .625E-3
Finally, Problem 2 was solved by the second-order backward difference scheme with the quadrature rule (13.25). We know, from (13.33), that
\\Un-u(tn)\\=0(h2
+ kV2).
Table 7 with k — h and Table 8 with k « /i 4 / 3 exhibit that their errors are 0(ra~ 3 / 2 ) and 0 ( r a - 2 ) , respectively. Table 7
t 0 0.5 1.0 1.5 2.0
m=4 0.216 .420E-1 .497E-1 .143E-1 .340E-1
Problem 8 .557E-1 .333E-1 .118E-1 .783E-2 .751E-2
2, k = h 10 .140E-1 .165E-1 .250E-2 .255E-2 .161E-2
Table 8
32 .352E-2 .592E-2 .256E-3 .622E-3 .419E-3
Problem 2, m=4 8 0.216 .557E-1 .212E-1 .126E-1 .134E-1 .336E-2 .191E-1 .507E-2 .928E-2 .222E-2
k « h 4/ 3 10 .140E-1 .267E-2 .109E-2 .108E-2 .457E-3
\ 32 .352E-2 .626E-3 .369R-3 .249E-3 .118E-3
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Index Formula Approximation property 104 Dirichlet 154 Ah, discrete analogue of operator A 38 - Thomee-Zhang 87 Function Blow-up 12 - Discrete delta 6h 155 - Mollifier 156 Case - Semilinear 112,190 - Strongly nonlinear 190 - Weakly nonlinear 190 Coercive in So 20 Compatibility conditions 22 (Laplace) Convolution 113 Convex sequence 231 Cfc'A-type domain 18 Dominated 28,67 Duality argument (Nitsche's trick) 36 Equation - Hyperbolic integrodifferential (HIDE) 203 - Parabolic integrodifferential (PIDE) 17 - Volterra integral 24 - Tangent 189 Extension 39 Extrapolation 181 - Splitting 186
Graded grid 103 Green Function - Regularized g 156 - Gradient type G 156,171 - Fully discrete g™ 167 - Semidiscrete gh 162 Gronwall inequality 22 - Discrete 59 - Generalized 114 Interpolant 34 Interpolated coefficient method 200 Inverse property 34 Isolated solution 187 Kernel K(t, s) - Degenerated 76 - (Weakly) singular 113 - Positive-definite 221 - Resolvent convolution 225
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Index
Lipschitz domain 39 L u m p e d mass m e t h o d 64 Multiple index 17 ^-Neighborhood N£(u)
188
Operator -
Adjoint A* of A 153 Interpolation Ih 37 L2-projection Ph 37 Ritz (elliptic) projection Rh 34 Ritz—Volterra projection Vh 44 Solution T, Th 39
Positive (type) memory 221 Q u a d r a t u r e error qn 58 - Global e n 231 Q u a d r a t u r e rule Qn 58 - Left rectangular rule 58 - Right rectangular rule 232 - Simpson's rule 59 - Trapezoidal rule 58 - Modified Simpson's rule 69,72 - Modified trapezoidal rule 68 - Product-integration type rule 123 - Positive-definite q u a d r a t u r e rule 230 - cj-Positive q u a d r a t u r e rule 231 - Weakly positive q u a d r a t u r e rule 231 Regularity assumption AZ,, 35 Scheme - Additive backward Euler (ABES) 76 - Additive Crank—Nicolson (ACNS) 76
- Backward Euler (BES) 57 - C r a n k - N i c o l s o n (CNS) 57 - Economic backward Euler (EBES) 67 - Economic Crank—Nicolson (ECNS) 71 - Second-order backward difference 143 Semigroup 25 Simplified continuation argument 193 Smoothing property 104 Spectral representation 148 Super approximation property 41 Superconvergence 33 Triangulation - Quasiuniform 34 - Strongly regular - Piecewise strongly regular 183 - Six pieces strongly regular 184 Two-level grids 198 Uniform Lipschitz curve 39 Volterra integral (memory term) 2 Weights - Dominating 68 - Persistent dominated 68,103 - Double 177