结合机器学习和区域分解方法求解偏微分方程综述

Q1 Mathematics GAMM Mitteilungen Pub Date : 2021-03-17 DOI:10.1002/gamm.202100001
Alexander Heinlein, Axel Klawonn, Martin Lanser, Janine Weber
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引用次数: 35

摘要

科学机器学习(SciML)是机器学习和科学计算技术相结合的一个研究领域,已经变得越来越重要并受到越来越多的关注。在这里,我们的重点是在SciML中一个非常具体的领域,该领域是由域分解方法(DDMs)和求解偏微分方程的机器学习技术相结合给出的。本工作的目的是试图审查这一领域内现有的和新的办法,并在一个统一的框架内提出一些已知的结果;没有提出完整性的要求。作为机器学习增强ddm的一个具体例子,提出了一种使用神经网络减少自适应ddm的计算工作量同时保持其鲁棒性的方法。更准确地说,深度神经网络用于预测约束的几何位置,这些约束需要定义一个鲁棒的粗空间。此外,在统一的框架中介绍了最近发表的两种深度域分解方法。这两种方法都使用物理约束的神经网络来代替计算域给定分解的子域问题的离散化和求解。最后,简要概述了几种进一步的方法,这些方法将机器学习与ddm的思想相结合,以提高现有算法的性能或创建全新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Combining machine learning and domain decomposition methods for the solution of partial differential equations—A review

Scientific machine learning (SciML), an area of research where techniques from machine learning and scientific computing are combined, has become of increasing importance and receives growing attention. Here, our focus is on a very specific area within SciML given by the combination of domain decomposition methods (DDMs) with machine learning techniques for the solution of partial differential equations. The aim of the present work is to make an attempt of providing a review of existing and also new approaches within this field as well as to present some known results in a unified framework; no claim of completeness is made. As a concrete example of machine learning enhanced DDMs, an approach is presented which uses neural networks to reduce the computational effort in adaptive DDMs while retaining their robustness. More precisely, deep neural networks are used to predict the geometric location of constraints which are needed to define a robust coarse space. Additionally, two recently published deep domain decomposition approaches are presented in a unified framework. Both approaches use physics-constrained neural networks to replace the discretization and solution of the subdomain problems of a given decomposition of the computational domain. Finally, a brief overview is given of several further approaches which combine machine learning with ideas from DDMs to either increase the performance of already existing algorithms or to create completely new methods.

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来源期刊
GAMM Mitteilungen
GAMM Mitteilungen Mathematics-Applied Mathematics
CiteScore
8.80
自引率
0.00%
发文量
23
期刊最新文献
Issue Information Regularizations of forward-backward parabolic PDEs Parallel two-scale finite element implementation of a system with varying microstructure Issue Information Low Mach number limit of a diffuse interface model for two-phase flows of compressible viscous fluids
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