Papers
Communities
Events
Blog
Pricing
Search
Open menu
Home
Papers
2003.05385
Cited By
hp-VPINNs: Variational Physics-Informed Neural Networks With Domain Decomposition
11 March 2020
E. Kharazmi
Zhongqiang Zhang
George Karniadakis
Re-assign community
ArXiv
PDF
HTML
Papers citing
"hp-VPINNs: Variational Physics-Informed Neural Networks With Domain Decomposition"
7 / 7 papers shown
Title
Reliable and Efficient Inverse Analysis using Physics-Informed Neural Networks with Distance Functions and Adaptive Weight Tuning
Shota Deguchi
Mitsuteru Asai
PINN
AI4CE
71
0
0
25 Apr 2025
EquiNO: A Physics-Informed Neural Operator for Multiscale Simulations
Hamidreza Eivazi
Jendrik-Alexander Tröger
Stefan H. A. Wittek
Stefan Hartmann
Andreas Rausch
AI4CE
41
0
0
27 Mar 2025
Dual Cone Gradient Descent for Training Physics-Informed Neural Networks
Youngsik Hwang
Dong-Young Lim
AI4CE
20
2
0
27 Sep 2024
A Primer on Variational Inference for Physics-Informed Deep Generative Modelling
Alex Glyn-Davies
A. Vadeboncoeur
O. Deniz Akyildiz
Ieva Kazlauskaite
Mark Girolami
PINN
49
0
0
10 Sep 2024
Exact imposition of boundary conditions with distance functions in physics-informed deep neural networks
N. Sukumar
Ankit Srivastava
PINN
AI4CE
34
239
0
17 Apr 2021
B-PINNs: Bayesian Physics-Informed Neural Networks for Forward and Inverse PDE Problems with Noisy Data
Liu Yang
Xuhui Meng
George Karniadakis
PINN
170
616
0
13 Mar 2020
An Energy Approach to the Solution of Partial Differential Equations in Computational Mechanics via Machine Learning: Concepts, Implementation and Applications
E. Samaniego
C. Anitescu
S. Goswami
Vien Minh Nguyen-Thanh
Hongwei Guo
Khader M. Hamdia
Timon Rabczuk
X. Zhuang
PINN
AI4CE
120
1,010
0
27 Aug 2019
1