随机全变分流的概率弱解和强解的数值逼近

IF 0.6 4区 数学 Q4 STATISTICS & PROBABILITY
Lubomir Banas, Martin Ondrejat
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引用次数: 0

摘要

我们提出了一个完全实用的模拟随机全变分流的数值方案。该近似是基于正则化STVF方程的稳定时隐有限元时空近似。该近似还涉及噪声的有限维离散化,这使得该方案完全可以在物理硬件上实现。我们证明了所提出的数值格式在规律上收敛于一个在随机变分不等式(SVIs)意义上定义的解。在强化的假设下,可以证明收敛性在概率上是成立的。作为我们的收敛分析的副产品,我们提供了随机偏微分方程(SPDEs)的概率弱解的概念推广到svi的设置。我们还证明了当路径唯一性保持时,数值格式在概率上收敛于一个概率强解。我们进行数值模拟,以说明所提出的数值方案的行为,以及它的不符合变量在图像去噪的背景下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Numerical approximation of probabilistically weak and strong solutions of the stochastic total variation flow
We propose a fully practical numerical scheme for the simulation of the stochastic total variation flow (STVF). The approximation is based on a stable time-implicit finite element space-time approximation of a regularized STVF equation. The approximation also involves a finite dimensional discretization of the noise that makes the scheme fully implementable on physical hardware. We show that the proposed numerical scheme converges in law to a solution that is defined in the sense of stochastic variational inequalities (SVIs). Under strengthened assumptions the convergence can be show to holds even in probability. As a by product of our convergence analysis we provide a generalization of the concept of probabilistically weak solutions of stochastic partial differential equation (SPDEs) to the setting of SVIs. We also prove convergence of the numerical scheme to a probabilistically strong solution in probability if pathwise uniqueness holds. We perform numerical simulations to illustrate the behavior of the proposed numerical scheme as well as its non-conforming variant in the context of image denoising.
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来源期刊
Esaim-Probability and Statistics
Esaim-Probability and Statistics STATISTICS & PROBABILITY-
CiteScore
1.00
自引率
0.00%
发文量
14
审稿时长
>12 weeks
期刊介绍: The journal publishes original research and survey papers in the area of Probability and Statistics. It covers theoretical and practical aspects, in any field of these domains. Of particular interest are methodological developments with application in other scientific areas, for example Biology and Genetics, Information Theory, Finance, Bioinformatics, Random structures and Random graphs, Econometrics, Physics. Long papers are very welcome. Indeed, we intend to develop the journal in the direction of applications and to open it to various fields where random mathematical modelling is important. In particular we will call (survey) papers in these areas, in order to make the random community aware of important problems of both theoretical and practical interest. We all know that many recent fascinating developments in Probability and Statistics are coming from "the outside" and we think that ESAIM: P&S should be a good entry point for such exchanges. Of course this does not mean that the journal will be only devoted to practical aspects.
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