Physics-informed machine learning

被引:0
|
作者
George Em Karniadakis
Ioannis G. Kevrekidis
Lu Lu
Paris Perdikaris
Sifan Wang
Liu Yang
机构
[1] Brown University Providence,Division of Applied Mathematics
[2] Brown University Providence,School of Engineering
[3] Johns Hopkins University,Department of Chemical and Biomolecular Engineering
[4] Johns Hopkins University,Department of Applied Mathematics and Statistics
[5] Massachusetts Institute of Technology,Department of Mathematics
[6] University of Pennsylvania,Department of Mechanical Engineering and Applied Mechanics
[7] University of Pennsylvania,Graduate Group in Applied Mathematics and Computational Science
来源
Nature Reviews Physics | 2021年 / 3卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Despite great progress in simulating multiphysics problems using the numerical discretization of partial differential equations (PDEs), one still cannot seamlessly incorporate noisy data into existing algorithms, mesh generation remains complex, and high-dimensional problems governed by parameterized PDEs cannot be tackled. Moreover, solving inverse problems with hidden physics is often prohibitively expensive and requires different formulations and elaborate computer codes. Machine learning has emerged as a promising alternative, but training deep neural networks requires big data, not always available for scientific problems. Instead, such networks can be trained from additional information obtained by enforcing the physical laws (for example, at random points in the continuous space-time domain). Such physics-informed learning integrates (noisy) data and mathematical models, and implements them through neural networks or other kernel-based regression networks. Moreover, it may be possible to design specialized network architectures that automatically satisfy some of the physical invariants for better accuracy, faster training and improved generalization. Here, we review some of the prevailing trends in embedding physics into machine learning, present some of the current capabilities and limitations and discuss diverse applications of physics-informed learning both for forward and inverse problems, including discovering hidden physics and tackling high-dimensional problems.
引用
收藏
页码:422 / 440
页数:18
相关论文
共 50 条
  • [1] Physics-informed machine learning
    Karniadakis, George Em
    Kevrekidis, Ioannis G.
    Lu, Lu
    Perdikaris, Paris
    Wang, Sifan
    Yang, Liu
    [J]. NATURE REVIEWS PHYSICS, 2021, 3 (06) : 422 - 440
  • [2] A Taxonomic Survey of Physics-Informed Machine Learning
    Pateras, Joseph
    Rana, Pratip
    Ghosh, Preetam
    [J]. APPLIED SCIENCES-BASEL, 2023, 13 (12):
  • [3] Numerical analysis of physics-informed neural networks and related models in physics-informed machine learning
    De Ryck, Tim
    Mishra, Siddhartha
    [J]. ACTA NUMERICA, 2024, 33 : 633 - 713
  • [4] Physics-informed machine learning for modeling multidimensional dynamics
    Abbasi, Amirhassan
    Kambali, Prashant N.
    Shahidi, Parham
    Nataraj, C.
    [J]. NONLINEAR DYNAMICS, 2024,
  • [5] Physics-informed Machine Learning for Modeling Turbulence in Supernovae
    Karpov, Platon I.
    Huang, Chengkun
    Sitdikov, Iskandar
    Fryer, Chris L.
    Woosley, Stan
    Pilania, Ghanshyam
    [J]. ASTROPHYSICAL JOURNAL, 2022, 940 (01):
  • [6] Physics-Informed Machine Learning for DRAM Error Modeling
    Baseman, Elisabeth
    DeBardeleben, Nathan
    Blanchard, Sean
    Moore, Juston
    Tkachenko, Olena
    Ferreira, Kurt
    Siddiqua, Taniya
    Sridharan, Vilas
    [J]. 2018 IEEE INTERNATIONAL SYMPOSIUM ON DEFECT AND FAULT TOLERANCE IN VLSI AND NANOTECHNOLOGY SYSTEMS (DFT), 2018,
  • [7] A Review of Physics-Informed Machine Learning in Fluid Mechanics
    Sharma, Pushan
    Chung, Wai Tong
    Akoush, Bassem
    Ihme, Matthias
    [J]. ENERGIES, 2023, 16 (05)
  • [8] Physics-informed machine learning for inorganic scintillator discovery
    Pilania, G.
    McClellan, K. J.
    Stanek, C. R.
    Uberuaga, B. P.
    [J]. JOURNAL OF CHEMICAL PHYSICS, 2018, 148 (24):
  • [9] Predicting glass structure by physics-informed machine learning
    Mikkel L. Bødker
    Mathieu Bauchy
    Tao Du
    John C. Mauro
    Morten M. Smedskjaer
    [J]. npj Computational Materials, 8
  • [10] Physics-Informed Machine Learning for metal additive manufacturing
    Farrag, Abdelrahman
    Yang, Yuxin
    Cao, Nieqing
    Won, Daehan
    Jin, Yu
    [J]. PROGRESS IN ADDITIVE MANUFACTURING, 2024,