Optimizing Variational Physics-Informed Neural Networks Using Least Squares

被引:0
|
作者
Uriarte, Carlos [1 ]
Bastidas, Manuela [2 ]
Pardo, David [1 ,3 ,4 ]
Taylor, Jamie M. [5 ]
Rojas, Sergio [6 ]
机构
[1] Univ Pais Vasco Euskal Herriko Unibertsitatea UPV, Leioa, Spain
[2] Univ Nacl Colombia, Medellin, Colombia
[3] Basque Ctr Appl Math BCAM, Bilbao, Spain
[4] Basque Fdn Sci Ikerbasque, Bilbao, Spain
[5] CUNEF Univ, Madrid, Spain
[6] Monash Univ, Melbourne, Australia
关键词
Neural networks; Variational problems; Gradient-descent optimization; Least squares;
D O I
10.1016/j.camwa.2025.02.022
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Variational Physics-Informed Neural Networks often suffer from poor convergence when using stochastic gradient-descent-based optimizers. By introducing a least squares solver for the weights of the last layer of the neural network, we improve the convergence of the loss during training in most practical scenarios. This work analyzes the computational cost of the resulting hybrid leastsquares/gradient-descent optimizer and explains how to implement it efficiently. In particular, we show that a traditional implementation based on backward-mode automatic differentiation leads to a prohibitively expensive algorithm. To remedy this, we propose using either forward- mode automatic differentiation or an ultraweak-type scheme that avoids the differentiation of trial functions in the discrete weak formulation. The proposed alternatives are up to one hundred times faster than the traditional one, recovering a computational cost-per-iteration similar to that of a conventional gradient-descent-based optimizer alone. To support our analysis, we derive computational estimates and conduct numerical experiments in one- and two-dimensional problems.
引用
收藏
页码:76 / 93
页数:18
相关论文
共 50 条
  • [31] PINNProv: Provenance for Physics-Informed Neural Networks
    de Oliveira, Lyncoln S.
    Kunstmann, Liliane
    Pina, Debora
    de Oliveira, Daniel
    Mattoso, Marta
    2023 INTERNATIONAL SYMPOSIUM ON COMPUTER ARCHITECTURE AND HIGH PERFORMANCE COMPUTING WORKSHOPS, SBAC-PADW, 2023, : 16 - 23
  • [32] Physics-Informed Neural Networks for Power Systems
    Misyris, George S.
    Venzke, Andreas
    Chatzivasileiadis, Spyros
    2020 IEEE POWER & ENERGY SOCIETY GENERAL MEETING (PESGM), 2020,
  • [33] Physics-informed graph neural networks enhance scalability of variational nonequilibrium optimal control
    Yan, Jiawei
    Rotskoff, Grant M.
    JOURNAL OF CHEMICAL PHYSICS, 2022, 157 (07):
  • [34] The variational physics-informed neural networks for time-fractional nonlinear conservation laws
    Li, Changpin
    Li, Dongxia
    IFAC PAPERSONLINE, 2024, 58 (12): : 472 - 477
  • [35] 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
  • [36] Advancing fluid dynamics simulations: A comprehensive approach to optimizing physics-informed neural networks
    Zhou, Wen
    Miwa, Shuichiro
    Okamoto, Koji
    PHYSICS OF FLUIDS, 2024, 36 (01)
  • [37] GaborPINN: Efficient Physics-Informed Neural Networks Using Multiplicative Filtered Networks
    Huang X.
    Alkhalifah T.
    IEEE Geoscience and Remote Sensing Letters, 2023, 20
  • [38] Referenceless characterization of complex media using physics-informed neural networks
    Goel, Suraj
    Conti, Claudio
    Leedumrongwatthanakun, Saroch
    Malik, Mehul
    OPTICS EXPRESS, 2023, 31 (20) : 32824 - 32839
  • [39] Quantification of gradient energy coefficients using physics-informed neural networks
    Shang, Lan
    Zhao, Yunhong
    Zheng, Sizheng
    Wang, Jin
    Zhang, Tongyi
    Wang, Jie
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2024, 273
  • [40] Numerical Simulation of Streamer Discharge Using Physics-Informed Neural Networks
    Peng, Changzhi
    Sabariego, Ruth V.
    Dong, Xuzhu
    Ruan, Jiangjun
    IEEE TRANSACTIONS ON MAGNETICS, 2024, 60 (03) : 1 - 4