Fourier warm start for physics-informed neural networks

被引:2
|
作者
Jin, Ge [1 ,2 ]
Wong, Jian Cheng [2 ,3 ]
Gupta, Abhishek [4 ]
Li, Shipeng [1 ]
Ong, Yew-Soon [2 ,3 ]
机构
[1] Beijing Inst Technol, Sch Aerosp Engn, Beijing 100081, Peoples R China
[2] Nanyang Technol Univ, Sch Comp Sci & Engn, Singapore 639798, Singapore
[3] ASTAR, Singapore 138632, Singapore
[4] Indian Inst Technol IIT Goa, Sch Mech Sci, Ponda 403401, Goa, India
关键词
Fourier warm start; Physics-informed neural networks; Spectral bias; Neural tangent kernel; Multi-frequency; MSCALEDNN;
D O I
10.1016/j.engappai.2024.107887
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Physics-informed neural networks (PINNs) have shown applicability in a wide range of engineering domains. However, there remain some challenges in their use, namely, PINNs are notoriously difficult to train and prone to failure when dealing with complex tasks with multi-frequency patterns or steep gradients in the outputs. In this work, we leverage the Neural Tangent Kernel (NTK) theory and introduce the Fourier Warm Start (FWS) algorithm to balance the convergence rate of neural networks at different frequencies, thereby mitigating spectral bias and improving overall model performance. We then propose the Fourier Analysis Boosted PhysicsInformed Neural Network (Fab-PINN), a novel integrated architecture based on the FWS algorithm. Finally, we present a series of challenging numerical examples with multi-frequency or sparse observations to validate the effectiveness of the proposed method. Compared to standard PINN, Fab-PINN exhibits a reduction of relative L2 errors in solving the heat transfer equation, the Klein-Gordon equation, and the transient Navier-Stokes equations from 9.9 x 10-1 to 4.4 x 10-3, 5.4 x 10-1 to 2.6 x 10-3, and 6.5 x 10-1 to 9.6 x 10-4, respectively.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] Enforcing Dirichlet boundary conditions in physics-informed neural networks and variational physics-informed neural networks
    Berrone, S.
    Canuto, C.
    Pintore, M.
    Sukumar, N.
    [J]. HELIYON, 2023, 9 (08)
  • [2] Separable Physics-Informed Neural Networks
    Cho, Junwoo
    Nam, Seungtae
    Yang, Hyunmo
    Yun, Seok-Bae
    Hong, Youngjoon
    Park, Eunbyung
    [J]. ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [3] Quantum Physics-Informed Neural Networks
    Trahan, Corey
    Loveland, Mark
    Dent, Samuel
    [J]. ENTROPY, 2024, 26 (08)
  • [4] SOBOLEV TRAINING FOR PHYSICS-INFORMED NEURAL NETWORKS
    Son, Hwijae
    Jang, Jin woo
    Han, Woo jin
    Hwang, Hyung ju
    [J]. COMMUNICATIONS IN MATHEMATICAL SCIENCES, 2023, 21 (06) : 1679 - 1705
  • [5] Enhanced physics-informed neural networks for hyperelasticity
    Abueidda, Diab W.
    Koric, Seid
    Guleryuz, Erman
    Sobh, Nahil A.
    [J]. INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN ENGINEERING, 2023, 124 (07) : 1585 - 1601
  • [6] Physics-informed neural networks for diffraction tomography
    Saba, Amirhossein
    Gigli, Carlo
    Ayoub, Ahmed B.
    Psaltis, Demetri
    [J]. ADVANCED PHOTONICS, 2022, 4 (06):
  • [7] Physics-informed neural networks for consolidation of soils
    Zhang, Sheng
    Lan, Peng
    Li, Hai-Chao
    Tong, Chen-Xi
    Sheng, Daichao
    [J]. ENGINEERING COMPUTATIONS, 2022, 39 (07) : 2845 - 2865
  • [8] Physics-Informed Neural Networks for shell structures
    Bastek, Jan-Hendrik
    Kochmann, Dennis M.
    [J]. EUROPEAN JOURNAL OF MECHANICS A-SOLIDS, 2023, 97
  • [9] On physics-informed neural networks for quantum computers
    Markidis, Stefano
    [J]. FRONTIERS IN APPLIED MATHEMATICS AND STATISTICS, 2022, 8
  • [10] fPINNs: FRACTIONAL PHYSICS-INFORMED NEURAL NETWORKS
    Pang, Guofei
    Lu, Lu
    Karniadakis, George E. M.
    [J]. SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2019, 41 (04): : A2603 - A2626