Strong Approximation of Monotone Stochastic Partial Differential Equations Driven by Multiplicative Noise

Abstract

We establish a general theory of optimal strong error estimation for numerical approximations of a second-order parabolic stochastic partial differential equation with monotone drift driven by a multiplicative infinite-dimensional Wiener process. The equation is spatially discretized by Galerkin methods and temporally discretized by drift-implicit Euler and Milstein schemes. By the monotone and Lyapunov assumptions, we use both the variational and semigroup approaches to derive a spatial Sobolev regularity under the Lωp Lt∞ H1+γ-norm and a temporal H\"older regularity under the Lωp Lx2-norm for the solution of the proposed equation with an H1+γ-valued initial datum for γ∈ [0,1]. Then we make full use of the monotonicity of the equation and tools from stochastic calculus to derive the sharp strong convergence rates O(h1+γ+τ1/2) and O(h1+γ+τ(1+γ)/2) for the Galerkin-based Euler and Milstein schemes, respectively.

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