Taylor Approximations for Stochastic Partial Differential Equations
This book presents a systematic theory of Taylor expansions of evolutionary-type stochastic partial differential equations (SPDEs). The authors show how Taylor expansions can be used to derive higher order numerical methods for SPDEs, with a focus on pathwise and strong convergence. In the case of multiplicative noise, the driving noise process is assumed to be a cylindrical Wiener process, while in the case of additive noise the SPDE is assumed to be driven by an arbitrary stochastic process with Hölder continuous sample paths. Recent developments on numerical methods for random and stochastic ordinary differential equations are also included since these are relevant for solving spatially discretised SPDEs as well as of interest in their own right. The authors include the proof of an existence and uniqueness theorem under general assumptions on the coefficients as well as regularity estimates in an appendix.
- Provides the reader with access to a rapidly developing field that will be widely applied in future years
- A rich source of information for those interested in using and further developing numerical methods for stochastic partial differential equations
- Suitable as source material for graduate courses
Product details
December 2011Paperback
9781611972009
235 pages
250 × 172 × 13 mm
0.39kg
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Table of Contents
- Preface
- List of figures
- 1. Introduction
- Part I. Random and Stochastic Ordinary Partial Differential Equations:
- 2. RODEs
- 3. SODEs
- 4. SODEs with nonstandard assumptions
- Part II. Stochastic Partial Differential Equations:
- 5. SPDEs
- 6. Numerical methods for SPDEs
- 7. Taylor approximations for SPDEs with additive noise
- 8. Taylor approximations for SPDEs with multiplicative noise
- Appendix: regularity estimates for SPDEs
- Bibliography
- Index.