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2403.08569
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A Physics-driven GraphSAGE Method for Physical Process Simulations Described by Partial Differential Equations
13 March 2024
Hang Hu
Sidi Wu
Guoxiong Cai
Na Liu
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Papers citing
"A Physics-driven GraphSAGE Method for Physical Process Simulations Described by Partial Differential Equations"
6 / 6 papers shown
Title
Physics-informed neural networks for inverse problems in supersonic flows
Ameya Dilip Jagtap
Zhiping Mao
Nikolaus Adams
George Karniadakis
PINN
43
221
0
23 Feb 2022
DAS-PINNs: A deep adaptive sampling method for solving high-dimensional partial differential equations
Keju Tang
Xiaoliang Wan
Chao Yang
44
115
0
28 Dec 2021
SPINN: Sparse, Physics-based, and partially Interpretable Neural Networks for PDEs
A. A. Ramabathiran
P. Ramachandran
PINN
AI4CE
97
79
0
25 Feb 2021
Self-Adaptive Physics-Informed Neural Networks using a Soft Attention Mechanism
L. McClenny
U. Braga-Neto
PINN
84
459
0
07 Sep 2020
Graph Convolutional Neural Networks for Web-Scale Recommender Systems
Rex Ying
Ruining He
Kaifeng Chen
Pong Eksombatchai
William L. Hamilton
J. Leskovec
GNN
BDL
266
3,550
0
06 Jun 2018
Deep UQ: Learning deep neural network surrogate models for high dimensional uncertainty quantification
Rohit Tripathy
Ilias Bilionis
AI4CE
65
409
0
02 Feb 2018
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