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NSGA-PINN: A Multi-Objective Optimization Method for Physics-Informed
  Neural Network Training

NSGA-PINN: A Multi-Objective Optimization Method for Physics-Informed Neural Network Training

3 March 2023
B.-L. Lu
Christian Moya
Guang Lin
    PINN
ArXivPDFHTML

Papers citing "NSGA-PINN: A Multi-Objective Optimization Method for Physics-Informed Neural Network Training"

5 / 5 papers shown
Title
Physics-informed neural networks with hard constraints for inverse
  design
Physics-informed neural networks with hard constraints for inverse design
Lu Lu
R. Pestourie
Wenjie Yao
Zhicheng Wang
F. Verdugo
Steven G. Johnson
PINN
95
516
0
09 Feb 2021
Non-convergence of stochastic gradient descent in the training of deep
  neural networks
Non-convergence of stochastic gradient descent in the training of deep neural networks
Patrick Cheridito
Arnulf Jentzen
Florian Rossmannek
48
37
0
12 Jun 2020
Physics-informed learning of governing equations from scarce data
Physics-informed learning of governing equations from scarce data
Zhao Chen
Yang Liu
Hao Sun
PINN
AI4CE
62
393
0
05 May 2020
Non-convex Optimization for Machine Learning
Non-convex Optimization for Machine Learning
Prateek Jain
Purushottam Kar
153
486
0
21 Dec 2017
Automatic differentiation in machine learning: a survey
Automatic differentiation in machine learning: a survey
A. G. Baydin
Barak A. Pearlmutter
Alexey Radul
J. Siskind
PINN
AI4CE
ODL
158
2,803
0
20 Feb 2015
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