Solving a class of multi-scale elliptic PDEs by Fourier-based mixed physics informed neural networks

被引:9
作者
Li, Xi'an [1 ]
Wu, Jinran [2 ]
Tai, Xin [1 ]
Xu, Jianhua [3 ]
Wang, You -Gan [4 ]
机构
[1] Ceyear Technol CO LTD, Qingdao 266555, Peoples R China
[2] Australian Catholic Univ, Brisbane 4000, Australia
[3] 41st Inst China Elect Technol Grp Corp, Qingdao 266555, Peoples R China
[4] Univ Queensland, Brisbane, Qld 4067, Australia
基金
国家重点研发计划;
关键词
Multi-scale; Rough coefficient; FMPINN; Fourier feature mapping; Flux variable; Reduce order; FINITE-ELEMENT-METHOD; HOMOGENIZATION; ALGORITHM; EQUATIONS; MSCALEDNN; DESIGN;
D O I
10.1016/j.jcp.2024.113012
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Deep neural networks have garnered widespread attention due to their simplicity and flexibility in the fields of engineering and scientific calculation. In this study, we probe into solving a class of elliptic partial differential equations (PDEs) with multiple scales by utilizing Fourierbased mixed physics informed neural networks (dubbed FMPINN), its solver is configured as a multi -scale deep neural network. In contrast to the classical PINN method, a dual (flux) variable about the rough coefficient of PDEs is introduced to avoid the ill -condition of neural tangent kernel matrix caused by the oscillating coefficient of multi -scale PDEs. Therefore, apart from the physical conservation laws, the discrepancy between the auxiliary variables and the gradients of multi -scale coefficients is incorporated into the cost function, obtaining a satisfactory solution of PDEs by minimizing the defined loss through some optimization methods. Additionally, a trigonometric activation function is introduced for FMPINN, which is suited for representing the derivatives of complex target functions. Handling the input data by Fourier feature mapping will effectively improve the capacity of deep neural networks to solve high -frequency problems. Finally, to validate the efficiency and robustness of the proposed FMPINN algorithm, we present several numerical examples of multi -scale problems in various dimensional Euclidean spaces. These examples cover low -frequency and high -frequency oscillation cases, demonstrating the effectiveness of our approach. All code and data accompanying this manuscript will be publicly available at https://github.com/Blue-Giant/FMPINN.
引用
收藏
页数:23
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