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Physics-informed Neural Networks for Solving Inverse Problems of
  Nonlinear Biot's Equations: Batch Training

Physics-informed Neural Networks for Solving Inverse Problems of Nonlinear Biot's Equations: Batch Training

18 May 2020
T. Kadeethum
T. Jørgensen
H. Nick
    PINN
    AI4CE
ArXivPDFHTML

Papers citing "Physics-informed Neural Networks for Solving Inverse Problems of Nonlinear Biot's Equations: Batch Training"

4 / 4 papers shown
Title
Neural Networks Based on Power Method and Inverse Power Method for
  Solving Linear Eigenvalue Problems
Neural Networks Based on Power Method and Inverse Power Method for Solving Linear Eigenvalue Problems
Qihong Yang
Yangtao Deng
Yu Yang
Qiaolin He
Shiquan Zhang
21
13
0
22 Sep 2022
Non-intrusive reduced order modeling of natural convection in porous
  media using convolutional autoencoders: comparison with linear subspace
  techniques
Non-intrusive reduced order modeling of natural convection in porous media using convolutional autoencoders: comparison with linear subspace techniques
T. Kadeethum
F. Ballarin
Y. Cho
Daniel O’Malley
H. Yoon
N. Bouklas
AI4CE
18
61
0
23 Jul 2021
Non-intrusive reduced order modeling of poroelasticity of heterogeneous
  media based on a discontinuous Galerkin approximation
Non-intrusive reduced order modeling of poroelasticity of heterogeneous media based on a discontinuous Galerkin approximation
T. Kadeethum
F. Ballarin
N. Bouklas
AI4CE
53
26
0
28 Jan 2021
On Large-Batch Training for Deep Learning: Generalization Gap and Sharp
  Minima
On Large-Batch Training for Deep Learning: Generalization Gap and Sharp Minima
N. Keskar
Dheevatsa Mudigere
J. Nocedal
M. Smelyanskiy
P. T. P. Tang
ODL
308
2,892
0
15 Sep 2016
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