Preface |
|
v | |
|
|
1 | (10) |
|
1.1 Why random and Brownian motion (white noise)? |
|
|
1 | (3) |
|
|
4 | (3) |
|
1.3 Specific topics of this book |
|
|
7 | (4) |
|
2 Brownian motion and stochastic calculus |
|
|
11 | (42) |
|
2.1 Gaussian processes and their representations |
|
|
11 | (6) |
|
2.2 Brownian motion and white noise |
|
|
17 | (8) |
|
2.2.1 Some properties of Brownian motion |
|
|
18 | (3) |
|
2.2.2 Approximation of Brownian motion |
|
|
21 | (4) |
|
2.3 Brownian motion and stochastic calculus |
|
|
25 | (4) |
|
2.4 Stochastic chain rule: Ito formula |
|
|
29 | (2) |
|
2.5 Integration methods in random space |
|
|
31 | (15) |
|
2.5.1 Monte Carlo method and its variants |
|
|
31 | (3) |
|
2.5.2 Quasi-Monte Carlo methods |
|
|
34 | (1) |
|
2.5.3 Wiener chaos expansion method |
|
|
35 | (2) |
|
2.5.4 Stochastic collocation method |
|
|
37 | (3) |
|
2.5.5 Application to SODEs |
|
|
40 | (6) |
|
|
46 | (4) |
|
|
50 | (3) |
|
3 Numerical methods for stochastic differential equations |
|
|
53 | (50) |
|
3.1 Basic aspects of SODEs |
|
|
53 | (7) |
|
3.1.1 Existence and uniqueness of strong solutions |
|
|
54 | (2) |
|
|
56 | (4) |
|
3.2 Numerical methods for SODEs |
|
|
60 | (9) |
|
3.2.1 Derivation of numerical methods based on numerical integration |
|
|
60 | (2) |
|
|
62 | (2) |
|
|
64 | (2) |
|
|
66 | (3) |
|
3.2.5 Summary of numerical SODEs |
|
|
69 | (1) |
|
3.3 Basic aspects of SPDEs |
|
|
69 | (11) |
|
|
72 | (1) |
|
3.3.2 Solutions in different senses |
|
|
73 | (3) |
|
3.3.3 Solutions to SPDEs in explicit form |
|
|
76 | (1) |
|
3.3.4 Linear stochastic advection-diffusion-reaction equations |
|
|
77 | (1) |
|
3.3.5 Existence and uniqueness |
|
|
77 | (1) |
|
3.3.6 Conversion between Ito and Stratonovich formulation |
|
|
78 | (2) |
|
3.4 Numerical methods for SPDEs |
|
|
80 | (14) |
|
3.4.1 Direct semi-discretization methods for parabolic SPDEs |
|
|
82 | (3) |
|
3.4.2 Wong-Zakai approximation for parabolic SPDEs |
|
|
85 | (1) |
|
3.4.3 Preprocessing methods for parabolic SPDEs |
|
|
86 | (2) |
|
3.4.4 What could go wrong? Examples of stochastic Burgers and Navier-Stokes equations |
|
|
88 | (2) |
|
3.4.5 Stability and convergence of existing numerical methods |
|
|
90 | (3) |
|
3.4.6 Summary of numerical SPDEs |
|
|
93 | (1) |
|
3.5 Summary and bibliographic notes |
|
|
94 | (2) |
|
|
96 | (7) |
|
Part I Numerical Stochastic Ordinary Differential Equations |
|
|
|
4 Numerical schemes for SDEs with time delay using the Wong-Zakai approximation |
|
|
103 | (32) |
|
4.1 Wong-Zakai approximation for SODEs |
|
|
104 | (2) |
|
4.1.1 Wong-Zakai approximation for SDDEs |
|
|
105 | (1) |
|
4.2 Derivation of numerical schemes |
|
|
106 | (13) |
|
4.2.1 A predictor-corrector scheme |
|
|
107 | (4) |
|
4.2.2 The midpoint scheme |
|
|
111 | (2) |
|
4.2.3 A Milstein-like scheme |
|
|
113 | (6) |
|
4.3 Linear stability of some schemes |
|
|
119 | (4) |
|
|
123 | (6) |
|
4.5 Summary and bibliographic notes |
|
|
129 | (3) |
|
|
132 | (3) |
|
5 Balanced numerical schemes for SDEs with non-Lipschitz coefficients |
|
|
135 | (30) |
|
|
135 | (2) |
|
|
137 | (8) |
|
5.2.1 On application of Theorem 5.2.3 |
|
|
140 | (1) |
|
5.2.2 Proof of the fundamental theorem |
|
|
141 | (4) |
|
5.3 A balanced Euler scheme |
|
|
145 | (8) |
|
|
153 | (5) |
|
5.4.1 Some numerical schemes |
|
|
153 | (2) |
|
|
155 | (3) |
|
5.5 Summary and bibliographic notes |
|
|
158 | (1) |
|
|
159 | (6) |
|
Part II Temporal White Noise |
|
|
|
6 Wiener chaos methods for linear stochastic advection-diffusion-reaction equations |
|
|
165 | (26) |
|
6.1 Description of methods |
|
|
165 | (8) |
|
6.1.1 Multistage WCE method |
|
|
166 | (4) |
|
6.1.2 Algorithm for computing moments |
|
|
170 | (3) |
|
6.2 Examples in one dimension |
|
|
173 | (4) |
|
6.2.1 Numerical results for one-dimensional advection-diffusion-reaction equations |
|
|
175 | (2) |
|
6.3 Comparison of the WCE algorithm and Monte Carlo type algorithms |
|
|
177 | (4) |
|
6.4 A two-dimensional passive scalar equation |
|
|
181 | (5) |
|
6.4.1 A Monte Carlo method based on the method of characteristics |
|
|
184 | (1) |
|
6.4.2 Comparison between recursive WCE and Monte Carlo methods |
|
|
185 | (1) |
|
6.5 Summary and bibliographic notes |
|
|
186 | (2) |
|
|
188 | (3) |
|
7 Stochastic collocation methods for differential equations with white noise |
|
|
191 | (24) |
|
|
191 | (2) |
|
7.2 Isotropic sparse grid for weak integration of SDE |
|
|
193 | (9) |
|
7.2.1 Probabilistic interpretation of SCM |
|
|
193 | (1) |
|
7.2.2 Illustrative examples |
|
|
194 | (8) |
|
7.3 Recursive collocation algorithm for linear SPDEs |
|
|
202 | (4) |
|
|
206 | (6) |
|
7.5 Summary and bibliographic notes |
|
|
212 | (2) |
|
|
214 | (1) |
|
8 Comparison between Wiener chaos methods and stochastic collocation methods |
|
|
215 | (32) |
|
|
215 | (1) |
|
8.2 Review of Wiener chaos and stochastic collocation |
|
|
216 | (4) |
|
8.2.1 Wiener chaos expansion (WCE) |
|
|
216 | (1) |
|
8.2.2 Stochastic collocation method (SCM) |
|
|
217 | (3) |
|
|
220 | (16) |
|
8.3.1 Error estimates for WCE |
|
|
221 | (6) |
|
8.3.2 Error estimate for SCM |
|
|
227 | (9) |
|
|
236 | (8) |
|
8.5 Summary and bibliographic notes |
|
|
244 | (1) |
|
|
245 | (2) |
|
9 Application of collocation method to stochastic conservation laws |
|
|
247 | (20) |
|
|
247 | (2) |
|
9.2 Theoretical background |
|
|
249 | (3) |
|
9.2.1 Stochastic Euler equations |
|
|
250 | (2) |
|
9.3 Verification of the Stratonovich- and Ito-Euler equations |
|
|
252 | (3) |
|
9.3.1 A splitting method for stochastic Euler equations |
|
|
252 | (1) |
|
9.3.2 Stratonovich-Euler equations versus first-order perturbation analysis |
|
|
253 | (1) |
|
9.3.3 Stratonovich-Euler equations versus Ito-Euler equations |
|
|
254 | (1) |
|
9.4 Applying the stochastic collocation method |
|
|
255 | (3) |
|
9.5 Summary and bibliographic notes |
|
|
258 | (3) |
|
|
261 | (6) |
|
Part III Spatial White Noise |
|
|
|
10 Semilinear elliptic equations with additive noise |
|
|
267 | (26) |
|
|
267 | (2) |
|
10.2 Assumptions and schemes |
|
|
269 | (2) |
|
10.3 Error estimates for strong and weak convergence order |
|
|
271 | (11) |
|
10.3.1 Examples of other PDEs |
|
|
272 | (3) |
|
10.3.2 Proofs of the strong convergence order |
|
|
275 | (3) |
|
10.3.3 Weak convergence order |
|
|
278 | (4) |
|
10.4 Error estimates for finite element approximation |
|
|
282 | (6) |
|
|
288 | (1) |
|
10.6 Summary and bibliographic notes |
|
|
289 | (2) |
|
|
291 | (2) |
|
11 Multiplicative white noise: The Wick-Malliavin approximation |
|
|
293 | (38) |
|
|
293 | (2) |
|
11.2 Approximation using the Wick-Malliavin expansion |
|
|
295 | (2) |
|
11.3 Lognormal coefficient |
|
|
297 | (3) |
|
11.3.1 One-dimensional example |
|
|
299 | (1) |
|
11.4 White noise as coefficient |
|
|
300 | (11) |
|
|
303 | (7) |
|
|
310 | (1) |
|
11.5 Application of Wick-Malliavin approximation to nonlinear SPDEs |
|
|
311 | (2) |
|
11.6 Wick-Malliavin approximation: extensions for non-Gaussian white noise |
|
|
313 | (12) |
|
|
318 | (3) |
|
11.6.2 Malliavin derivatives for Poisson noises |
|
|
321 | (4) |
|
11.7 Summary and bibliographic notes |
|
|
325 | (4) |
|
|
329 | (2) |
|
|
331 | (8) |
|
12.1 A review of this work |
|
|
331 | (3) |
|
|
334 | (5) |
|
|
|
|
339 | (6) |
|
|
339 | (1) |
|
|
339 | (1) |
|
A.2 Conditional expectation |
|
|
340 | (1) |
|
A.2.1 Properties of conditional expectation |
|
|
341 | (1) |
|
A.2.2 Filtration and Martingales |
|
|
342 | (1) |
|
A.3 Continuous time stochastic process |
|
|
343 | (2) |
|
B Semi-analytical methods for SPDEs |
|
|
345 | (2) |
|
|
347 | (6) |
|
|
347 | (3) |
|
C.2 Gauss-Hermite quadrature |
|
|
350 | (3) |
|
D Some useful inequalities and lemmas |
|
|
353 | (4) |
|
E Computation of convergence rate |
|
|
357 | (2) |
References |
|
359 | (32) |
Index |
|
391 | |