论文标题

部分微分方程符合深神经网络:调查

Partial Differential Equations Meet Deep Neural Networks: A Survey

论文作者

Huang, Shudong, Feng, Wentao, Tang, Chenwei, Lv, Jiancheng

论文摘要

科学和工程中的许多问题可以通过数学建模来代表一组部分微分方程(PDE)。长期以来,基于机制的计算是研究诸如计算流体动力学,多物理模拟,分子动力学甚至动态系统等主题的必不可少的范式。这是一个充满活力的多学科领域,具有越来越重要的重要性和非凡的潜力。同时,有效地解决PDE是一个长期的挑战。通常,除了直接可直接获得分析解决方案的几个微分方程之外,更多的方程式必须依赖于数值方法,例如有限差异方法,有限元方法,有限体积方法和要求解的边界元素方法。这些数值方法通常将连续的问题域分为离散点,然后集中于在每个点上解决系统。尽管这些传统数值方法的有效性,但伴随每一步的大量迭代操作大大降低了效率。最近,另一种同样重要的范式以深度学习为代表的基于数据的计算已成为解决PDE的有效手段。令人惊讶的是,仍然缺乏对这个有趣的子领域的全面评论。这项调查旨在对PDES的深神经网络(DNN)进行分类和审查。我们讨论了过去几十年来在该子领域发表的文献,并以共同的分类法呈现,然后概述和分类这些相关方法在科学研究和工程方案中的应用。还介绍了该子领域每个潜在方向上的原点,发展历史,性格,排序以及未来趋势。

Many problems in science and engineering can be represented by a set of partial differential equations (PDEs) through mathematical modeling. Mechanism-based computation following PDEs has long been an essential paradigm for studying topics such as computational fluid dynamics, multiphysics simulation, molecular dynamics, or even dynamical systems. It is a vibrant multi-disciplinary field of increasing importance and with extraordinary potential. At the same time, solving PDEs efficiently has been a long-standing challenge. Generally, except for a few differential equations for which analytical solutions are directly available, many more equations must rely on numerical approaches such as the finite difference method, finite element method, finite volume method, and boundary element method to be solved approximately. These numerical methods usually divide a continuous problem domain into discrete points and then concentrate on solving the system at each of those points. Though the effectiveness of these traditional numerical methods, the vast number of iterative operations accompanying each step forward significantly reduces the efficiency. Recently, another equally important paradigm, data-based computation represented by deep learning, has emerged as an effective means of solving PDEs. Surprisingly, a comprehensive review for this interesting subfield is still lacking. This survey aims to categorize and review the current progress on Deep Neural Networks (DNNs) for PDEs. We discuss the literature published in this subfield over the past decades and present them in a common taxonomy, followed by an overview and classification of applications of these related methods in scientific research and engineering scenarios. The origin, developing history, character, sort, as well as the future trends in each potential direction of this subfield are also introduced.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源