Computer methods in applied mechanics and engineering2025,Vol.433Issue(Pt.2) :1.1-1.37.DOI:10.1016/j.cma.2024.117518

Kolmogorov-Arnold-Informed neural network: A physics-informed deep learning framework for solving forward and inverse problems based on Kolmogorov-Arnold Networks

Wang, Yizheng Sun, Jia Bai, Jinshuai Anitescu, Cosmin Eshaghi, Mohammad Sadegh Zhuang, Xiaoying Rabczuk, Timon Liu, Yinghua
Computer methods in applied mechanics and engineering2025,Vol.433Issue(Pt.2) :1.1-1.37.DOI:10.1016/j.cma.2024.117518

Kolmogorov-Arnold-Informed neural network: A physics-informed deep learning framework for solving forward and inverse problems based on Kolmogorov-Arnold Networks

Wang, Yizheng 1Sun, Jia 2Bai, Jinshuai 3Anitescu, Cosmin 4Eshaghi, Mohammad Sadegh 5Zhuang, Xiaoying 5Rabczuk, Timon 4Liu, Yinghua6
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作者信息

  • 1. Tsinghua University Department of Engineering Mechanics||Bauhaus University Weimar Institute of Structural Mechanics
  • 2. Tsinghua University Department of Engineering Mechanics||CNPC Engn Technol RD Co Ltd
  • 3. Tsinghua University Department of Engineering Mechanics||Queensland University of Technology School of Mechanical Medical and Process Engineering||Queensland Univ Technol
  • 4. Bauhaus University Weimar Institute of Structural Mechanics
  • 5. Leibniz Univ Hannover
  • 6. Tsinghua University Department of Engineering Mechanics
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Abstract

AI for partial differential equations (PDEs) has garnered significant attention, particularly with the emergence of Physics-informed neural networks (PINNs). The recent advent of Kolmogorov- Arnold Network (KAN) indicates that there is potential to revisit and enhance the previously MLP-based PINNs. Compared to MLPs, KANs offer interpretability and require fewer parameters. PDEs can be described in various forms, such as strong form, energy form, and inverse form. While mathematically equivalent, these forms are not computationally equivalent, making the exploration of different PDE formulations significant in computational physics. Thus, we propose different PDE forms based on KAN instead of MLP, termed Kolmogorov-Arnold-Informed Neural Network (KINN) for solving forward and inverse problems. We systematically compare MLP and KAN in various numerical examples of PDEs, including multi-scale, singularity, stress concentration, nonlinear hyperelasticity, heterogeneous, and complex geometry problems. Our results demonstrate that KINN significantly outperforms MLP regarding accuracy and convergence speed for numerous PDEs in computational solid mechanics, except for the complex geometry problem. This highlights KINN's potential for more efficient and accurate PDE solutions in AI for PDEs.

Key words

PINNs/Kolmogorov-Arnold Networks/Computational mechanics/AI for PDEs/AI for science/MESHFREE METHOD

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出版年

2025
Computer methods in applied mechanics and engineering

Computer methods in applied mechanics and engineering

SCI
ISSN:0045-7825
参考文献量55
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