离散化
数学
随机偏微分方程
应用数学
随机微分方程
偏微分方程
水准点(测量)
变量(数学)
欧拉公式
反向欧拉法
常量(计算机编程)
数学分析
计算机科学
大地测量学
程序设计语言
地理
作者
Kevin Kamm,Stefano Pagliarani,Andrea Pascucci
标识
DOI:10.1016/j.matcom.2022.12.029
摘要
In this paper, we show how the Itô-stochastic Magnus expansion can be used to efficiently solve stochastic partial differential equations (SPDE) with two space variables numerically. To this end, we will first discretize the SPDE in space only by utilizing finite difference methods and vectorize the resulting equation exploiting its sparsity. As a benchmark, we will apply it to the case of the stochastic Langevin equation with constant coefficients, where an explicit solution is available, and compare the Magnus scheme with the Euler–Maruyama scheme. We will see that the Magnus expansion is superior in terms of both accuracy and especially computational time by using a single GPU and verify it in a variable coefficient case. Notably, we will see speed-ups of order ranging form 20 to 200 compared to the Euler–Maruyama scheme, depending on the accuracy target and the spatial resolution.
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