Hybrid acceleration techniques for the physics-informed neural networks: a comparative analysis

被引:0
|
作者
Fedor Buzaev
Jiexing Gao
Ivan Chuprov
Evgeniy Kazakov
机构
[1] Huawei Technologies Co.,Moscow Research Center, 2012 Labs
[2] Ltd.,undefined
来源
Machine Learning | 2024年 / 113卷
关键词
Physics-informed neural networks; Sinusoidal learning space; Fourier neural operators; Koopman neural operators;
D O I
暂无
中图分类号
学科分类号
摘要
Physics-informed neural networks (PINN) has emerged as a promising approach for solving partial differential equations (PDEs). However, the training process for PINN can be computationally expensive, limiting its practical applications. To address this issue, we investigate several acceleration techniques for PINN that combine Fourier neural operators, separable PINN, and first-order PINN. We also propose novel acceleration techniques based on second-order PINN and Koopman neural operators. We evaluate the efficiency of these techniques on various PDEs, and our results show that the hybrid models can provide much more accurate results than classical PINN under time constraints for the training, making PINN a more viable option for practical applications. The proposed methodology in the manuscript is generic and can be extended on a larger set of problems including inverse problems.
引用
收藏
页码:3675 / 3692
页数:17
相关论文
共 50 条
  • [1] Hybrid acceleration techniques for the physics-informed neural networks: a comparative analysis
    Buzaev, Fedor
    Gao, Jiexing
    Chuprov, Ivan
    Kazakov, Evgeniy
    MACHINE LEARNING, 2024, 113 (06) : 3675 - 3692
  • [2] Numerical analysis of physics-informed neural networks and related models in physics-informed machine learning
    De Ryck, Tim
    Mishra, Siddhartha
    ACTA NUMERICA, 2024, 33 : 633 - 713
  • [3] Physics-Informed Hybrid GRU Neural Networks for MPC Prediction
    Zarzycki, Krzysztof
    Lawrynczuk, Maciej
    IFAC PAPERSONLINE, 2023, 56 (02): : 8726 - 8731
  • [4] Enforcing Dirichlet boundary conditions in physics-informed neural networks and variational physics-informed neural networks
    Berrone, S.
    Canuto, C.
    Pintore, M.
    Sukumar, N.
    HELIYON, 2023, 9 (08)
  • [5] Sensitivity analysis using Physics-informed neural networks
    Hanna, John M.
    Aguado, Jose, V
    Comas-Cardona, Sebastien
    Askri, Ramzi
    Borzacchiello, Domenico
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 135
  • [6] Quantum Physics-Informed Neural Networks
    Trahan, Corey
    Loveland, Mark
    Dent, Samuel
    ENTROPY, 2024, 26 (08)
  • [7] Separable Physics-Informed Neural Networks
    Cho, Junwoo
    Nam, Seungtae
    Yang, Hyunmo
    Yun, Seok-Bae
    Hong, Youngjoon
    Park, Eunbyung
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [8] Understanding Physics-Informed Neural Networks: Techniques, Applications, Trends, and Challenges
    Farea, Amer
    Yli-Harja, Olli
    Emmert-Streib, Frank
    AI, 2024, 5 (03) : 1534 - 1557
  • [9] Physics-Informed Deep Neural Networks for Transient Electromagnetic Analysis
    Noakoasteen, Oameed
    Wang, Shu
    Peng, Zhen
    Christodoulou, Christos
    IEEE OPEN JOURNAL OF ANTENNAS AND PROPAGATION, 2020, 1 (01): : 404 - 412
  • [10] A unified framework for the error analysis of physics-informed neural networks
    Zeinhofer, Marius
    Masri, Rami
    Mardal, Kent-Andre
    IMA JOURNAL OF NUMERICAL ANALYSIS, 2024,