Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4616127 | Journal of Mathematical Analysis and Applications | 2014 | 14 Pages |
Abstract
In this paper we are interested in the numerical approximation of the marginal distributions of the Hilbert space valued solution of a stochastic Volterra equation driven by an additive Gaussian noise. This equation can be written in the abstract Itô form asdX(t)+(â«0tb(tâs)AX(s)ds)dt=dWQ(t),tâ(0,T];X(0)=X0âH, where WQ is a Q-Wiener process on the Hilbert space H and where the time kernel b is the locally integrable potential tÏâ2, Ïâ(1,2), or slightly more general. The operator A is unbounded, linear, self-adjoint, and positive on H. Our main assumption concerning the noise term is that A(νâ1/Ï)/2Q1/2 is a Hilbert-Schmidt operator on H for some νâ[0,1/Ï]. The numerical approximation is achieved via a standard continuous finite element method in space (parameter h) and an implicit Euler scheme and a Laplace convolution quadrature in time (parameter Ît=T/N). We show that for Ï:HâR twice continuously differentiable test function with bounded second derivative,|EÏ(XhN)âEÏ(X(T))|⩽Cln(Th2/Ï+Ît)(ÎtÏν+h2ν), for any 0⩽ν⩽1/Ï. This is essentially twice the rate of strong convergence under the same regularity assumption on the noise.
Keywords
Related Topics
Physical Sciences and Engineering
Mathematics
Analysis
Authors
Mihály Kovács, Jacques Printems,