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Variational Physics Informed Neural Networks: the role of quadratures
  and test functions

Variational Physics Informed Neural Networks: the role of quadratures and test functions

5 September 2021
S. Berrone
C. Canuto
Moreno Pintore
ArXivPDFHTML

Papers citing "Variational Physics Informed Neural Networks: the role of quadratures and test functions"

8 / 8 papers shown
Title
The Finite Element Neural Network Method: One Dimensional Study
The Finite Element Neural Network Method: One Dimensional Study
Mohammed Abda
Elsa Piollet
Christopher Blake
Frédérick P. Gosselin
71
0
0
21 Jan 2025
Computable Lipschitz Bounds for Deep Neural Networks
Computable Lipschitz Bounds for Deep Neural Networks
Moreno Pintore
Bruno Després
26
1
0
28 Oct 2024
HyResPINNs: Hybrid Residual Networks for Adaptive Neural and RBF Integration in Solving PDEs
HyResPINNs: Hybrid Residual Networks for Adaptive Neural and RBF Integration in Solving PDEs
Madison Cooley
Robert M. Kirby
Shandian Zhe
Varun Shankar
PINN
AI4CE
36
0
0
04 Oct 2024
Neural-Integrated Meshfree (NIM) Method: A differentiable
  programming-based hybrid solver for computational mechanics
Neural-Integrated Meshfree (NIM) Method: A differentiable programming-based hybrid solver for computational mechanics
Honghui Du
QiZhi He
AI4CE
60
5
0
21 Nov 2023
Deep Learning in Deterministic Computational Mechanics
Deep Learning in Deterministic Computational Mechanics
L. Herrmann
Stefan Kollmannsberger
AI4CE
PINN
43
0
0
27 Sep 2023
Solving Forward and Inverse Problems of Contact Mechanics using
  Physics-Informed Neural Networks
Solving Forward and Inverse Problems of Contact Mechanics using Physics-Informed Neural Networks
T. Şahin
M. Danwitz
A. Popp
PINN
34
20
0
24 Aug 2023
An overview on deep learning-based approximation methods for partial
  differential equations
An overview on deep learning-based approximation methods for partial differential equations
C. Beck
Martin Hutzenthaler
Arnulf Jentzen
Benno Kuckuck
30
146
0
22 Dec 2020
hp-VPINNs: Variational Physics-Informed Neural Networks With Domain
  Decomposition
hp-VPINNs: Variational Physics-Informed Neural Networks With Domain Decomposition
E. Kharazmi
Zhongqiang Zhang
George Karniadakis
128
509
0
11 Mar 2020
1