Central limit theorems for spatial averages of the stochastic heat equation via Malliavin-Stein's method
Abstract
Suppose that \u(t\,, x)\t >0, x ∈Rd is the solution to a d-dimensional stochastic heat equation driven by a Gaussian noise that is white in time and has a spatially homogeneous covariance that satisfies Dalang's condition. The purpose of this paper is to establish quantitative central limit theorems for spatial averages of the form N-d ∫[0,N]d g(u(t\,,x))\, d x, as N→∞, where g is a Lipschitz-continuous function or belongs to a class of locally-Lipschitz functions, using a combination of the Malliavin calculus and Stein's method for normal approximations. Our results include a central limit theorem for the Hopf-Cole solution to KPZ equation. We also establish a functional central limit theorem for these spatial averages.
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