Importance sampling for stochastic reaction–diffusion equations in the moderate deviation regime

IF 1.4 3区 数学 Q2 MATHEMATICS, APPLIED
Ioannis Gasteratos, Michael Salins, Konstantinos Spiliopoulos
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引用次数: 2

Abstract

We develop a provably efficient importance sampling scheme that estimates exit probabilities of solutions to small-noise stochastic reaction–diffusion equations from scaled neighborhoods of a stable equilibrium. The moderate deviation scaling allows for a local approximation of the nonlinear dynamics by their linearized version. In addition, we identify a finite-dimensional subspace where exits take place with high probability. Using stochastic control and variational methods we show that our scheme performs well both in the zero noise limit and pre-asymptotically. Simulation studies for stochastically perturbed bistable dynamics illustrate the theoretical results.

Abstract Image

随机反应扩散方程在中等偏差状态下的重要性采样
我们开发了一种可证明的高效重要性采样方案,该方案可从稳定平衡的缩放邻域估算小噪声随机反应扩散方程解的出口概率。适度偏差缩放允许用线性化版本对非线性动力学进行局部近似。此外,我们还确定了一个有限维子空间,在该子空间中出口发生的概率很高。利用随机控制和变分法,我们证明了我们的方案在零噪声极限和渐近前均表现良好。随机扰动双稳态动力学的模拟研究说明了理论结果。
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来源期刊
CiteScore
2.70
自引率
13.30%
发文量
54
期刊介绍: Stochastics and Partial Differential Equations: Analysis and Computations publishes the highest quality articles presenting significantly new and important developments in the SPDE theory and applications. SPDE is an active interdisciplinary area at the crossroads of stochastic anaylsis, partial differential equations and scientific computing. Statistical physics, fluid dynamics, financial modeling, nonlinear filtering, super-processes, continuum physics and, recently, uncertainty quantification are important contributors to and major users of the theory and practice of SPDEs. The journal is promoting synergetic activities between the SPDE theory, applications, and related large scale computations. The journal also welcomes high quality articles in fields strongly connected to SPDE such as stochastic differential equations in infinite-dimensional state spaces or probabilistic approaches to solving deterministic PDEs.
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