维数之咒
卷积神经网络
偏微分方程
人工神经网络
索波列夫空间
规范(哲学)
球体
计算机科学
应用数学
趋同(经济学)
数学优化
人工智能
数学
算法
物理
数学分析
天文
政治学
法学
经济
经济增长
作者
Guanhang Lei,Zhen Lei,Lei Shi,Chenyu Zeng,Ding‐Xuan Zhou
出处
期刊:Cornell University - arXiv
日期:2023-01-01
被引量:2
标识
DOI:10.48550/arxiv.2308.09605
摘要
Physics-informed neural networks (PINNs) have been demonstrated to be efficient in solving partial differential equations (PDEs) from a variety of experimental perspectives. Some recent studies have also proposed PINN algorithms for PDEs on surfaces, including spheres. However, theoretical understanding of the numerical performance of PINNs, especially PINNs on surfaces or manifolds, is still lacking. In this paper, we establish rigorous analysis of the physics-informed convolutional neural network (PICNN) for solving PDEs on the sphere. By using and improving the latest approximation results of deep convolutional neural networks and spherical harmonic analysis, we prove an upper bound for the approximation error with respect to the Sobolev norm. Subsequently, we integrate this with innovative localization complexity analysis to establish fast convergence rates for PICNN. Our theoretical results are also confirmed and supplemented by our experiments. In light of these findings, we explore potential strategies for circumventing the curse of dimensionality that arises when solving high-dimensional PDEs.
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