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Learning Specialized Activation Functions for Physics-informed Neural
  Networks

Learning Specialized Activation Functions for Physics-informed Neural Networks

8 August 2023
Honghui Wang
Lu Lu
Shiji Song
Gao Huang
    PINN
    AI4CE
ArXivPDFHTML

Papers citing "Learning Specialized Activation Functions for Physics-informed Neural Networks"

21 / 21 papers shown
Title
STAF: Sinusoidal Trainable Activation Functions for Implicit Neural Representation
STAF: Sinusoidal Trainable Activation Functions for Implicit Neural Representation
Alireza Morsali
MohammadJavad Vaez
Mohammadhossein Soltani
Amirhossein Kazerouni
Babak Taati
Morteza Mohammad-Noori
341
1
0
02 Feb 2025
Respecting causality is all you need for training physics-informed
  neural networks
Respecting causality is all you need for training physics-informed neural networks
Sizhuang He
Shyam Sankaran
P. Perdikaris
PINN
CML
AI4CE
131
200
0
14 Mar 2022
Learning in Sinusoidal Spaces with Physics-Informed Neural Networks
Learning in Sinusoidal Spaces with Physics-Informed Neural Networks
Jian Cheng Wong
C. Ooi
Abhishek Gupta
Yew-Soon Ong
AI4CE
PINN
SSL
56
79
0
20 Sep 2021
Deep Kronecker neural networks: A general framework for neural networks
  with adaptive activation functions
Deep Kronecker neural networks: A general framework for neural networks with adaptive activation functions
Ameya Dilip Jagtap
Yeonjong Shin
Kenji Kawaguchi
George Karniadakis
ODL
69
134
0
20 May 2021
Learning specialized activation functions with the Piecewise Linear Unit
Learning specialized activation functions with the Piecewise Linear Unit
Yucong Zhou
Zezhou Zhu
Zhaobai Zhong
47
15
0
08 Apr 2021
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
89
515
0
09 Feb 2021
A Physics-Informed Machine Learning Approach for Solving Heat Transfer
  Equation in Advanced Manufacturing and Engineering Applications
A Physics-Informed Machine Learning Approach for Solving Heat Transfer Equation in Advanced Manufacturing and Engineering Applications
N. Zobeiry
K. D. Humfeld
AI4CE
50
274
0
28 Sep 2020
Self-Adaptive Physics-Informed Neural Networks using a Soft Attention
  Mechanism
Self-Adaptive Physics-Informed Neural Networks using a Soft Attention Mechanism
L. McClenny
U. Braga-Neto
PINN
72
458
0
07 Sep 2020
When and why PINNs fail to train: A neural tangent kernel perspective
When and why PINNs fail to train: A neural tangent kernel perspective
Sizhuang He
Xinling Yu
P. Perdikaris
121
906
0
28 Jul 2020
Solving Allen-Cahn and Cahn-Hilliard Equations using the Adaptive
  Physics Informed Neural Networks
Solving Allen-Cahn and Cahn-Hilliard Equations using the Adaptive Physics Informed Neural Networks
Colby Wight
Jia Zhao
69
224
0
09 Jul 2020
Padé Activation Units: End-to-end Learning of Flexible Activation
  Functions in Deep Networks
Padé Activation Units: End-to-end Learning of Flexible Activation Functions in Deep Networks
Alejandro Molina
P. Schramowski
Kristian Kersting
ODL
34
80
0
15 Jul 2019
DeepXDE: A deep learning library for solving differential equations
DeepXDE: A deep learning library for solving differential equations
Lu Lu
Xuhui Meng
Zhiping Mao
George Karniadakis
PINN
AI4CE
95
1,525
0
10 Jul 2019
Frequency Principle: Fourier Analysis Sheds Light on Deep Neural
  Networks
Frequency Principle: Fourier Analysis Sheds Light on Deep Neural Networks
Zhi-Qin John Xu
Yaoyu Zhang
Yaoyu Zhang
Yan Xiao
Zheng Ma
121
513
0
19 Jan 2019
Quantifying total uncertainty in physics-informed neural networks for
  solving forward and inverse stochastic problems
Quantifying total uncertainty in physics-informed neural networks for solving forward and inverse stochastic problems
Dongkun Zhang
Lu Lu
Ling Guo
George Karniadakis
UQCV
102
407
0
21 Sep 2018
The Deep Ritz method: A deep learning-based numerical algorithm for
  solving variational problems
The Deep Ritz method: A deep learning-based numerical algorithm for solving variational problems
E. Weinan
Ting Yu
117
1,384
0
30 Sep 2017
Sigmoid-Weighted Linear Units for Neural Network Function Approximation
  in Reinforcement Learning
Sigmoid-Weighted Linear Units for Neural Network Function Approximation in Reinforcement Learning
Stefan Elfwing
E. Uchibe
Kenji Doya
128
1,717
0
10 Feb 2017
Densely Connected Convolutional Networks
Densely Connected Convolutional Networks
Gao Huang
Zhuang Liu
Laurens van der Maaten
Kilian Q. Weinberger
PINN
3DV
733
36,781
0
25 Aug 2016
Fast and Accurate Deep Network Learning by Exponential Linear Units
  (ELUs)
Fast and Accurate Deep Network Learning by Exponential Linear Units (ELUs)
Djork-Arné Clevert
Thomas Unterthiner
Sepp Hochreiter
293
5,521
0
23 Nov 2015
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
154
2,800
0
20 Feb 2015
Learning Activation Functions to Improve Deep Neural Networks
Learning Activation Functions to Improve Deep Neural Networks
Forest Agostinelli
Matthew Hoffman
Peter Sadowski
Pierre Baldi
ODL
213
475
0
21 Dec 2014
Maxout Networks
Maxout Networks
Ian Goodfellow
David Warde-Farley
M. Berk Mirza
Aaron Courville
Yoshua Bengio
OOD
234
2,178
0
18 Feb 2013
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