Discretization, Uniform-in-Time Estimations and Approximation of Invariant Measures for Nonlinear Stochastic Differential Equations with Non-Uniform Dissipativity
Abstract
The approximation of invariant measures for nonlinear ergodic stochastic differential equations (SDEs) is a central problem in scientific computing, with important applications in stochastic sampling, physics, and ecology. We first propose an easily applicable explicit Truncated Euler-Maruyama (TEM) scheme and prove its numerical ergodicity in the Lp-Wasserstein distance (p≥slant 1). Furthermore, by combining truncation techniques with the coupling method, we establish a uniform-in-time 1/2-order convergence rate in moments for the TEM scheme. Additionally, leveraging the exponential ergodicity of both the numerical and exact solutions, we derive a 1/2-order convergence rate for the invariant measures of the TEM scheme and the exact solution in the L1-Wasserstein distance. Finally, two numerical experiments are conducted to validate our theoretical results.
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