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2211.00214
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Transfer Learning with Physics-Informed Neural Networks for Efficient Simulation of Branched Flows
1 November 2022
Raphael Pellegrin
Blake Bullwinkel
M. Mattheakis
P. Protopapas
PINN
AI4CE
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Papers citing
"Transfer Learning with Physics-Informed Neural Networks for Efficient Simulation of Branched Flows"
7 / 7 papers shown
Title
Adaptive Physics-informed Neural Networks: A Survey
Edgar Torres
Jonathan Schiefer
Mathias Niepert
PINN
AI4CE
63
0
0
23 Mar 2025
Efficient PINNs: Multi-Head Unimodular Regularization of the Solutions Space
Pedro Tarancón-Álvarez
Pablo Tejerina-Pérez
Raul Jimenez
P. Protopapas
AI4CE
PINN
39
0
0
21 Jan 2025
Zero-shot Imputation with Foundation Inference Models for Dynamical Systems
Patrick Seifner
K. Cvejoski
Ramses J. Sanchez
Ramsés J. Sánchez
AI4TS
AI4CE
18
3
0
12 Feb 2024
One-Shot Transfer Learning for Nonlinear ODEs
Wanzhou Lei
P. Protopapas
Joy Parikh
PINN
21
1
0
25 Nov 2023
Understanding and Mitigating Extrapolation Failures in Physics-Informed Neural Networks
Lukas Fesser
Luca DÁmico-Wong
Richard Qiu
28
4
0
15 Jun 2023
Mixed formulation of physics-informed neural networks for thermo-mechanically coupled systems and heterogeneous domains
Ali Harandi
Ahmad Moeineddin
Michael Kaliske
Stefanie Reese
Shahed Rezaei
AI4CE
PINN
22
42
0
09 Feb 2023
DEQGAN: Learning the Loss Function for PINNs with Generative Adversarial Networks
Blake Bullwinkel
Dylan Randle
P. Protopapas
David Sondak
24
3
0
15 Sep 2022
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