Some approximation results for mild solutions of stochastic fractional order evolution equations driven by Gaussian noise
Journal article, 2023

We investigate the quality of space approximation of a class of stochastic integral equations of convolution type with Gaussian noise. Such equations arise, for example, when considering mild solutions of stochastic fractional order partial differential equations but also when considering mild solutions of classical stochastic partial differential equations. The key requirement for the equations is a smoothing property of the deterministic evolution operator which is typical in parabolic type problems. We show that if one has access to nonsmooth data estimates for the deterministic error operator together with its derivative of a space discretization procedure, then one obtains error estimates in pathwise Hölder norms with rates that can be read off the deterministic error rates. We illustrate the main result by considering a class of stochastic fractional order partial differential equations and space approximations performed by spectral Galerkin methods and finite elements. We also improve an existing result on the stochastic heat equation.

Fractal Wiener process

Stochastic partial differential equation

Spectral Galerkin method

Stochastic integro-differential equation

Finite element method

Stochastic Volterra equation

Fractional partial differential equation

Wiener process

Author

K. Fahim

Sepuluh Nopember Institute of Technology

Erika Hausenblas

Montanuniversität Leoben

Mihaly Kovacs

Pázmány Péter Catholic University

Budapest University of Technology and Economics

Chalmers, Mathematical Sciences

Stochastics and Partial Differential Equations: Analysis and Computations

21940401 (ISSN) 2194041X (eISSN)

Vol. 11 3 1044-1088

Subject Categories

Computational Mathematics

Probability Theory and Statistics

Mathematical Analysis

DOI

10.1007/s40072-022-00250-0

More information

Latest update

1/3/2024 9