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2110.13361
Cited By
A Metalearning Approach for Physics-Informed Neural Networks (PINNs): Application to Parameterized PDEs
26 October 2021
Michael Penwarden
Shandian Zhe
A. Narayan
Robert M. Kirby
PINN
AI4CE
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Papers citing
"A Metalearning Approach for Physics-Informed Neural Networks (PINNs): Application to Parameterized PDEs"
8 / 8 papers shown
Title
Learning and Transferring Physical Models through Derivatives
Alessandro Trenta
Andrea Cossu
Davide Bacciu
AI4CE
29
0
0
02 May 2025
Generating synthetic data for neural operators
Erisa Hasani
Rachel A. Ward
AI4CE
45
7
0
04 Jan 2024
Branched Latent Neural Maps
M. Salvador
Alison Lesley Marsden
30
4
0
04 Aug 2023
Improved architectures and training algorithms for deep operator networks
Sifan Wang
Hanwen Wang
P. Perdikaris
AI4CE
42
103
0
04 Oct 2021
Meta-learning PINN loss functions
Apostolos F. Psaros
Kenji Kawaguchi
George Karniadakis
PINN
35
96
0
12 Jul 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
755
0
13 Mar 2020
Probabilistic Model-Agnostic Meta-Learning
Chelsea Finn
Kelvin Xu
Sergey Levine
BDL
165
666
0
07 Jun 2018
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks
Chelsea Finn
Pieter Abbeel
Sergey Levine
OOD
243
11,659
0
09 Mar 2017
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