Papers
Communities
Events
Blog
Pricing
Search
Open menu
Home
Papers
2308.06672
Cited By
A practical PINN framework for multi-scale problems with multi-magnitude loss terms
13 August 2023
Yuanbo Wang
Yanzhong Yao
Jiawei Guo
Zhiming Gao
AI4CE
Re-assign community
ArXiv
PDF
HTML
Papers citing
"A practical PINN framework for multi-scale problems with multi-magnitude loss terms"
5 / 5 papers shown
Title
Improved physics-informed neural network in mitigating gradient related failures
Pancheng Niu
Yongming Chen
Jun Guo
Yuqian Zhou
Minfu Feng
Yanchao Shi
PINN
AI4CE
26
0
0
28 Jul 2024
Unveiling the optimization process of Physics Informed Neural Networks: How accurate and competitive can PINNs be?
Jorge F. Urbán
P. Stefanou
José A. Pons
PINN
45
6
0
07 May 2024
Finite Basis Physics-Informed Neural Networks (FBPINNs): a scalable domain decomposition approach for solving differential equations
Benjamin Moseley
Andrew Markham
T. Nissen‐Meyer
PINN
48
210
0
16 Jul 2021
On the eigenvector bias of Fourier feature networks: From regression to solving multi-scale PDEs with physics-informed neural networks
Sizhuang He
Hanwen Wang
P. Perdikaris
131
439
0
18 Dec 2020
Multi-scale Deep Neural Network (MscaleDNN) for Solving Poisson-Boltzmann Equation in Complex Domains
Ziqi Liu
Wei Cai
Zhi-Qin John Xu
AI4CE
270
122
0
22 Jul 2020
1