Recent advance in machine learning for partial differential equation

被引:0
作者
Ka Chun Cheung
Simon See
机构
[1] NVIDIA Corp,NVIDIA AI Technology Centre
来源
CCF Transactions on High Performance Computing | 2021年 / 3卷
关键词
Machine learning; Partial differential equations; Physics informed neural network; Fourier neural operator;
D O I
暂无
中图分类号
学科分类号
摘要
Machine learning method has been applied to solve different kind of problems in different areas due to the great success in several tasks such as computer vision, natural language processing and robotic in recent year. In scientific computing community, it is well-known that solving partial differential equations, which are naturally derived from physical rules that describe some of phenomena, is a challenging task in terms of computational efficiency and model accuracy. On the other hand, machine learning models are data-driven that purely reply on learning the pattern of the data distribution. Researcher recently proposed a few new frameworks to solve certain kind of partial differential equations with machine learning technique. In this paper, we discuss two newly developed machine learning based methods for solving partial differential equations.
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页码:298 / 310
页数:12
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