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Convolution-Based Model-Solving Method for Three-Dimensional, Unsteady, Partial Differential Equations

Zha, Wenshu; Zhang, Wen*; Li, Daolun; Xing, Yan; He, Lei; Tan, Jieqing
Science Citation Index Expanded
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摘要

Neural networks are increasingly used widely in the solution of partial differential equations (PDEs). This letter proposes 3D-PDE-Net to solve the three-dimensional PDE. We give a mathematical derivation of a three-dimensional convolution kernel that can approximate any order differential operator within the range of expressing ability and then conduct 3D-PDE-Net based on this theory. An optimum network is obtained by minimizing the normalized mean square error (NMSE) of training data, and L-BFGS is the optimized algorithm of second-order precision. Numerical experimental results show that 3D-PDE-Net can achieve the solution with good accuracy using few training samples, and it is of highly significant in solving linear and nonlinear unsteady PDEs.

关键词

COMPACT ADI METHOD NEURAL-NETWORKS DATA-DRIVEN IDENTIFICATION