Conservative physics-informed neural networks on discrete domains for conservation laws: Applications to forward and inverse problems

被引:543
|
作者
Jagtap, Ameya D. [1 ]
Kharazmi, Ehsan [1 ]
Karniadakis, George Em [1 ,2 ]
机构
[1] Brown Univ, Div Appl Math, 182 George St, Providence, RI 02912 USA
[2] Pacific Northwest Natl Lab, Richland, WA 99354 USA
关键词
cPINN; Mortar PINN; Domain decomposition; Machine learning; Conservation laws; Inverse problems; EQUATIONS;
D O I
10.1016/j.cma.2020.113028
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We propose a conservative physics-informed neural network (cPINN) on discrete domains for nonlinear conservation laws. Here, the term discrete domain represents the discrete sub-domains obtained after division of the computational domain, where PINN is applied and the conservation property of cPINN is obtained by enforcing the flux continuity in the strong form along the sub-domain interfaces. In case of hyperbolic conservation laws, the convective flux contributes at the interfaces, whereas in case of viscous conservation laws, both convective and diffusive fluxes contribute. Apart from the flux continuity condition, an average solution (given by two different neural networks) is also enforced at the common interface between two sub-domains. One can also employ a deep neural network in the domain, where the solution may have complex structure, whereas a shallow neural network can be used in the sub-domains with relatively simple and smooth solutions. Another advantage of the proposed method is the additional freedom it gives in terms of the choice of optimization algorithm and the various training parameters like residual points, activation function, width and depth of the network etc. Various forms of errors involved in cPINN such as optimization, generalization and approximation errors and their sources are discussed briefly. In cPINN, locally adaptive activation functions are used, hence training the model faster compared to its fixed counterparts. Both, forward and inverse problems are solved using the proposed method. Various test cases ranging from scalar nonlinear conservation laws like Burgers, Korteweg-de Vries (KdV) equations to systems of conservation laws, like compressible Euler equations are solved. The lid-driven cavity test case governed by incompressible Navier-Stokes equation is also solved and the results are compared against a benchmark solution. The proposed method enjoys the property of domain decomposition with separate neural networks in each sub-domain, and it efficiently lends itself to parallelized computation, where each sub-domain can be assigned to a different computational node. Published by Elsevier B.V.
引用
收藏
页数:27
相关论文
共 50 条
  • [31] Application of Physics-Informed Neural Networks for forward and inverse analysis of pile-soil interaction
    Vahab, M.
    Shahbodagh, B.
    Haghighat, E.
    Khalili, N.
    INTERNATIONAL JOURNAL OF SOLIDS AND STRUCTURES, 2023, 277
  • [32] Splines Parameterization of Planar Domains by Physics-Informed Neural Networks
    Falini, Antonella
    D'Inverno, Giuseppe Alessio
    Sampoli, Maria Lucia
    Mazzia, Francesca
    MATHEMATICS, 2023, 11 (10)
  • [33] Physics-informed and graph neural networks for enhanced inverse analysis
    Di Lorenzo, Daniele
    Champaney, Victor
    Ghnatios, Chady
    Cueto, Elias
    Chinesta, Francisco
    ENGINEERING COMPUTATIONS, 2024,
  • [34] Adaptive fractional physics-informed neural networks for solving forward and inverse problems of anomalous heat conduction in functionally graded materials
    Ma, Xingdan
    Qiu, Lin
    Zhang, Benrong
    Wu, Guozheng
    Wang, Fajie
    INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2025, 236
  • [35] Physics-Informed Bayesian Neural Networks for Solving Phonon Boltzmann Transport Equation in Forward and Inverse Problems With Sparse and Noisy Data
    Li, Ruiyang
    Zhou, Jiahang
    Wang, Jian-Xun
    Luo, Tengfei
    ASME JOURNAL OF HEAT AND MASS TRANSFER, 2025, 147 (03):
  • [36] Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations
    Raissi, M.
    Perdikaris, P.
    Karniadakis, G. E.
    JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 378 : 686 - 707
  • [37] Estimates on the generalization error of physics-informed neural networks for approximating a class of inverse problems for PDEs
    Mishra, Siddhartha
    Molinaro, Roberto
    IMA JOURNAL OF NUMERICAL ANALYSIS, 2022, 42 (02) : 981 - 1022
  • [38] Spatiotemporal parallel physics-informed neural networks: A framework to solve inverse problems in fluid mechanics
    Xu, Shengfeng
    Yan, Chang
    Zhang, Guangtao
    Sun, Zhenxu
    Huang, Renfang
    Ju, Shengjun
    Guo, Dilong
    Yang, Guowei
    PHYSICS OF FLUIDS, 2023, 35 (06)
  • [39] Generative adversarial physics-informed neural networks for solving forward and inverse problem with small labeled samples
    Li, Wensheng
    Wang, Chuncheng
    Guan, Hanting
    Wang, Jian
    Yang, Jie
    Zhang, Chao
    Tao, Dacheng
    COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2025, 183 : 98 - 120
  • [40] Physics-Informed Deep-Learning For Elasticity: Forward, Inverse, and Mixed Problems
    Chen, Chun-Teh
    Gu, Grace X. X.
    ADVANCED SCIENCE, 2023, 10 (18)