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Scientific Machine Learning through Physics-Informed Neural Networks:
  Where we are and What's next

Scientific Machine Learning through Physics-Informed Neural Networks: Where we are and What's next

14 January 2022
S. Cuomo
Vincenzo Schiano Di Cola
F. Giampaolo
G. Rozza
Maizar Raissi
F. Piccialli
    PINN
ArXivPDFHTML

Papers citing "Scientific Machine Learning through Physics-Informed Neural Networks: Where we are and What's next"

50 / 105 papers shown
Title
Operator Learning for Schrödinger Equation: Unitarity, Error Bounds, and Time Generalization
Operator Learning for Schrödinger Equation: Unitarity, Error Bounds, and Time Generalization
Yash Patel
Unique Subedi
Ambuj Tewari
33
0
0
23 May 2025
A brief review of the Deep BSDE method for solving high-dimensional partial differential equations
A brief review of the Deep BSDE method for solving high-dimensional partial differential equations
Jiequn Han
Arnulf Jentzen
Weinan E
AI4CE
43
0
0
07 May 2025
Reducing Smoothness with Expressive Memory Enhanced Hierarchical Graph Neural Networks
Reducing Smoothness with Expressive Memory Enhanced Hierarchical Graph Neural Networks
Thomas Bailie
Yun Sing Koh
S. Karthik Mukkavilli
V. Vetrova
AI4TS
148
0
0
01 Apr 2025
Shape Modeling of Longitudinal Medical Images: From Diffeomorphic Metric Mapping to Deep Learning
Shape Modeling of Longitudinal Medical Images: From Diffeomorphic Metric Mapping to Deep Learning
Edwin Tay
Nazli Tümer
Amir A. Zadpoor
MedIm
152
0
0
27 Mar 2025
Solving 2-D Helmholtz equation in the rectangular, circular, and elliptical domains using neural networks
Solving 2-D Helmholtz equation in the rectangular, circular, and elliptical domains using neural networks
D. Veerababu
Prasanta K. Ghosh
85
0
0
26 Mar 2025
High Probability Complexity Bounds of Trust-Region Stochastic Sequential Quadratic Programming with Heavy-Tailed Noise
High Probability Complexity Bounds of Trust-Region Stochastic Sequential Quadratic Programming with Heavy-Tailed Noise
Yuchen Fang
Javad Lavaei
Katya Scheinberg
66
0
0
24 Mar 2025
ANaGRAM: A Natural Gradient Relative to Adapted Model for efficient PINNs learning
ANaGRAM: A Natural Gradient Relative to Adapted Model for efficient PINNs learning
Nilo Schwencke
Cyril Furtlehner
120
1
0
14 Dec 2024
Multi-Parameter Molecular MRI Quantification using Physics-Informed Self-Supervised Learning
Multi-Parameter Molecular MRI Quantification using Physics-Informed Self-Supervised Learning
Alex Finkelstein
Nikita Vladimirov
Moritz Zaiss
O. Perlman
51
2
0
10 Nov 2024
TRADE: Transfer of Distributions between External Conditions with Normalizing Flows
TRADE: Transfer of Distributions between External Conditions with Normalizing Flows
Stefan Wahl
Armand Rousselot
Felix Dräxler
Ullrich Kothe
Ullrich Köthe
98
0
0
25 Oct 2024
Metamizer: a versatile neural optimizer for fast and accurate physics simulations
Metamizer: a versatile neural optimizer for fast and accurate physics simulations
Nils Wandel
Stefan Schulz
Reinhard Klein
PINN
AI4CE
69
1
0
10 Oct 2024
Generating Physical Dynamics under Priors
Generating Physical Dynamics under Priors
Zihan Zhou
Xiaoxue Wang
Tianshu Yu
DiffM
AI4CE
87
0
0
01 Sep 2024
Practical Aspects on Solving Differential Equations Using Deep Learning: A Primer
Practical Aspects on Solving Differential Equations Using Deep Learning: A Primer
Georgios Is. Detorakis
82
0
0
21 Aug 2024
A Two-Stage Imaging Framework Combining CNN and Physics-Informed Neural Networks for Full-Inverse Tomography: A Case Study in Electrical Impedance Tomography (EIT)
A Two-Stage Imaging Framework Combining CNN and Physics-Informed Neural Networks for Full-Inverse Tomography: A Case Study in Electrical Impedance Tomography (EIT)
Xu Yang
Yangming Zhang
Haofeng Chen
Gang Ma
Xiaojie Wang
49
0
0
25 Jul 2024
Reduced-Order Neural Operators: Learning Lagrangian Dynamics on Highly Sparse Graphs
Reduced-Order Neural Operators: Learning Lagrangian Dynamics on Highly Sparse Graphs
Hrishikesh Viswanath
Yue Chang
Julius Berner
Julius Berner
Peter Yichen Chen
Aniket Bera
AI4CE
86
2
0
04 Jul 2024
Physics-Informed Multi-Agent Reinforcement Learning for Distributed Multi-Robot Problems
Physics-Informed Multi-Agent Reinforcement Learning for Distributed Multi-Robot Problems
Eduardo Sebastián
T. Duong
Nikolay Atanasov
Eduardo Montijano
C. Sagüés
90
3
0
30 Dec 2023
Statistical Inference of Constrained Stochastic Optimization via Sketched Sequential Quadratic Programming
Statistical Inference of Constrained Stochastic Optimization via Sketched Sequential Quadratic Programming
Sen Na
Michael W. Mahoney
42
8
0
27 May 2022
Improved Training of Physics-Informed Neural Networks with Model
  Ensembles
Improved Training of Physics-Informed Neural Networks with Model Ensembles
Katsiaryna Haitsiukevich
Alexander Ilin
PINN
75
24
0
11 Apr 2022
Certified machine learning: A posteriori error estimation for
  physics-informed neural networks
Certified machine learning: A posteriori error estimation for physics-informed neural networks
Birgit Hillebrecht
B. Unger
PINN
39
15
0
31 Mar 2022
Error estimates for physics informed neural networks approximating the
  Navier-Stokes equations
Error estimates for physics informed neural networks approximating the Navier-Stokes equations
Tim De Ryck
Ameya Dilip Jagtap
S. Mishra
PINN
79
115
0
17 Mar 2022
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
128
200
0
14 Mar 2022
Learning To Estimate Regions Of Attraction Of Autonomous Dynamical
  Systems Using Physics-Informed Neural Networks
Learning To Estimate Regions Of Attraction Of Autonomous Dynamical Systems Using Physics-Informed Neural Networks
Cody Scharzenberger
Joe Hays
52
3
0
18 Nov 2021
Solving Partial Differential Equations with Point Source Based on
  Physics-Informed Neural Networks
Solving Partial Differential Equations with Point Source Based on Physics-Informed Neural Networks
Xiang Huang
Hongsheng Liu
Beiji Shi
Zidong Wang
Kan Yang
...
Jing Zhou
Fan Yu
Bei Hua
Lei Chen
Bin Dong
54
20
0
02 Nov 2021
CAN-PINN: A Fast Physics-Informed Neural Network Based on
  Coupled-Automatic-Numerical Differentiation Method
CAN-PINN: A Fast Physics-Informed Neural Network Based on Coupled-Automatic-Numerical Differentiation Method
P. Chiu
Jian Cheng Wong
C. Ooi
M. Dao
Yew-Soon Ong
PINN
46
210
0
29 Oct 2021
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
39
79
0
20 Sep 2021
U-FNO -- An enhanced Fourier neural operator-based deep-learning model
  for multiphase flow
U-FNO -- An enhanced Fourier neural operator-based deep-learning model for multiphase flow
Gege Wen
Zong-Yi Li
Kamyar Azizzadenesheli
Anima Anandkumar
S. Benson
AI4CE
52
374
0
03 Sep 2021
Characterizing possible failure modes in physics-informed neural
  networks
Characterizing possible failure modes in physics-informed neural networks
Aditi S. Krishnapriyan
A. Gholami
Shandian Zhe
Robert M. Kirby
Michael W. Mahoney
PINN
AI4CE
87
626
0
02 Sep 2021
Finite Basis Physics-Informed Neural Networks (FBPINNs): a scalable
  domain decomposition approach for solving differential equations
Finite Basis Physics-Informed Neural Networks (FBPINNs): a scalable domain decomposition approach for solving differential equations
Benjamin Moseley
Andrew Markham
T. Nissen‐Meyer
PINN
64
216
0
16 Jul 2021
IDRLnet: A Physics-Informed Neural Network Library
IDRLnet: A Physics-Informed Neural Network Library
Wei Peng
Jun Zhang
Weien Zhou
Xiaoyu Zhao
Wen Yao
Xiaoqian Chen
PINN
AI4CE
57
15
0
09 Jul 2021
Error analysis for physics informed neural networks (PINNs)
  approximating Kolmogorov PDEs
Error analysis for physics informed neural networks (PINNs) approximating Kolmogorov PDEs
Tim De Ryck
Siddhartha Mishra
PINN
57
100
0
28 Jun 2021
Physics-informed neural networks (PINNs) for fluid mechanics: A review
Physics-informed neural networks (PINNs) for fluid mechanics: A review
Shengze Cai
Zhiping Mao
Zhicheng Wang
Minglang Yin
George Karniadakis
PINN
AI4CE
37
1,152
0
20 May 2021
Distributed Multigrid Neural Solvers on Megavoxel Domains
Distributed Multigrid Neural Solvers on Megavoxel Domains
Aditya Balu
Sergio Botelho
Biswajit Khara
Vinay Rao
Chinmay Hegde
Soumik Sarkar
Santi S. Adavani
A. Krishnamurthy
Baskar Ganapathysubramanian
AI4CE
83
11
0
29 Apr 2021
Efficient training of physics-informed neural networks via importance
  sampling
Efficient training of physics-informed neural networks via importance sampling
M. A. Nabian
R. J. Gladstone
Hadi Meidani
DiffM
PINN
99
228
0
26 Apr 2021
On the approximation of functions by tanh neural networks
On the approximation of functions by tanh neural networks
Tim De Ryck
S. Lanthaler
Siddhartha Mishra
46
138
0
18 Apr 2021
Conditional physics informed neural networks
Conditional physics informed neural networks
A. Kovacs
L. Exl
Alexander Kornell
J. Fischbacher
Markus Hovorka
...
N. Sakuma
Akihito Kinoshita
T. Shoji
A. Kato
T. Schrefl
PINN
32
40
0
06 Apr 2021
Elvet -- a neural network-based differential equation and variational
  problem solver
Elvet -- a neural network-based differential equation and variational problem solver
Jack Y. Araz
J. C. Criado
M. Spannowsky
33
13
0
26 Mar 2021
Interpretable Machine Learning: Fundamental Principles and 10 Grand
  Challenges
Interpretable Machine Learning: Fundamental Principles and 10 Grand Challenges
Cynthia Rudin
Chaofan Chen
Zhi Chen
Haiyang Huang
Lesia Semenova
Chudi Zhong
FaML
AI4CE
LRM
120
662
0
20 Mar 2021
The Old and the New: Can Physics-Informed Deep-Learning Replace
  Traditional Linear Solvers?
The Old and the New: Can Physics-Informed Deep-Learning Replace Traditional Linear Solvers?
Stefano Markidis
PINN
56
185
0
12 Mar 2021
SPINN: Sparse, Physics-based, and partially Interpretable Neural
  Networks for PDEs
SPINN: Sparse, Physics-based, and partially Interpretable Neural Networks for PDEs
A. A. Ramabathiran
P. Ramachandran
PINN
AI4CE
69
77
0
25 Feb 2021
Towards Causal Representation Learning
Towards Causal Representation Learning
Bernhard Schölkopf
Francesco Locatello
Stefan Bauer
Nan Rosemary Ke
Nal Kalchbrenner
Anirudh Goyal
Yoshua Bengio
OOD
CML
AI4CE
89
320
0
22 Feb 2021
Learning atrial fiber orientations and conductivity tensors from
  intracardiac maps using physics-informed neural networks
Learning atrial fiber orientations and conductivity tensors from intracardiac maps using physics-informed neural networks
Thomas Grandits
Simone Pezzuto
F. Sahli Costabal
P. Perdikaris
Thomas Pock
Gernot Plank
Rolf Krause
17
21
0
22 Feb 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
76
508
0
09 Feb 2021
Will Artificial Intelligence supersede Earth System and Climate Models?
Will Artificial Intelligence supersede Earth System and Climate Models?
C. Irrgang
Niklas Boers
Maike Sonnewald
E. Barnes
C. Kadow
J. Staneva
J. Saynisch‐Wagner
AI4Cl
AI4CE
37
183
0
22 Jan 2021
HypoSVI: Hypocenter inversion with Stein variational inference and
  Physics Informed Neural Networks
HypoSVI: Hypocenter inversion with Stein variational inference and Physics Informed Neural Networks
Jonathan D. Smith
Zachary E. Ross
Kamyar Azizzadenesheli
J. Muir
23
38
0
09 Jan 2021
Can Transfer Neuroevolution Tractably Solve Your Differential Equations?
Can Transfer Neuroevolution Tractably Solve Your Differential Equations?
Jian Cheng Wong
Abhishek Gupta
Yew-Soon Ong
50
22
0
06 Jan 2021
Data-driven rogue waves and parameter discovery in the defocusing NLS
  equation with a potential using the PINN deep learning
Data-driven rogue waves and parameter discovery in the defocusing NLS equation with a potential using the PINN deep learning
Li Wang
Zhenya Yan
41
81
0
18 Dec 2020
NVIDIA SimNet^{TM}: an AI-accelerated multi-physics simulation framework
NVIDIA SimNet^{TM}: an AI-accelerated multi-physics simulation framework
O. Hennigh
S. Narasimhan
M. A. Nabian
Akshay Subramaniam
Kaustubh Tangsali
M. Rietmann
J. Ferrandis
Wonmin Byeon
Z. Fang
S. Choudhry
PINN
AI4CE
108
127
0
14 Dec 2020
DPM: A Novel Training Method for Physics-Informed Neural Networks in
  Extrapolation
DPM: A Novel Training Method for Physics-Informed Neural Networks in Extrapolation
Jungeun Kim
Kookjin Lee
Dongeun Lee
Sheo Yon Jin
Noseong Park
PINN
AI4CE
32
80
0
04 Dec 2020
Physics-Informed Neural Network for Modelling the Thermochemical Curing
  Process of Composite-Tool Systems During Manufacture
Physics-Informed Neural Network for Modelling the Thermochemical Curing Process of Composite-Tool Systems During Manufacture
S. Niaki
E. Haghighat
Trevor Campbell
Xinglong Li
R. Vaziri
AI4CE
93
207
0
27 Nov 2020
Theory-guided Auto-Encoder for Surrogate Construction and Inverse
  Modeling
Theory-guided Auto-Encoder for Surrogate Construction and Inverse Modeling
Nanzhe Wang
Haibin Chang
Dongxiao Zhang
AI4CE
53
50
0
17 Nov 2020
Physics Informed Neural Networks for Simulating Radiative Transfer
Physics Informed Neural Networks for Simulating Radiative Transfer
Siddhartha Mishra
Roberto Molinaro
PINN
49
108
0
25 Sep 2020
123
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