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Augmenting Physical Models with Deep Networks for Complex Dynamics
  Forecasting

Augmenting Physical Models with Deep Networks for Complex Dynamics Forecasting

9 October 2020
Yuan Yin
Vincent Le Guen
Jérémie Donà
Emmanuel de Bézenac
Ibrahim Ayed
Nicolas Thome
Patrick Gallinari
    AI4CE
    PINN
ArXivPDFHTML

Papers citing "Augmenting Physical Models with Deep Networks for Complex Dynamics Forecasting"

29 / 29 papers shown
Title
Structural Constraints for Physics-augmented Learning
Structural Constraints for Physics-augmented Learning
Simon Kuang
Xinfan Lin
PINN
26
0
0
07 Oct 2024
Full Shot Predictions for the DIII-D Tokamak via Deep Recurrent Networks
Full Shot Predictions for the DIII-D Tokamak via Deep Recurrent Networks
I. Char
Youngseog Chung
J. Abbate
E. Kolemen
Jeff Schneider
38
4
0
18 Apr 2024
Closure Discovery for Coarse-Grained Partial Differential Equations Using Grid-based Reinforcement Learning
Closure Discovery for Coarse-Grained Partial Differential Equations Using Grid-based Reinforcement Learning
Jan-Philipp von Bassewitz
Sebastian Kaltenbach
P. Koumoutsakos
AI4CE
30
1
0
01 Feb 2024
Hybrid Modeling Design Patterns
Hybrid Modeling Design Patterns
Maja Rudolph
Stefan Kurz
Barbara Rakitsch
AI4CE
26
8
0
29 Dec 2023
Training neural mapping schemes for satellite altimetry with simulation
  data
Training neural mapping schemes for satellite altimetry with simulation data
Q. Febvre
Julien Le Sommer
C. Ubelmann
Ronan Fablet
8
9
0
19 Sep 2023
Learning Hybrid Dynamics Models With Simulator-Informed Latent States
Learning Hybrid Dynamics Models With Simulator-Informed Latent States
K. Ensinger
Sebastian Ziesche
Sebastian Trimpe
29
1
0
06 Sep 2023
CONFIDE: Contextual Finite Differences Modelling of PDEs
CONFIDE: Contextual Finite Differences Modelling of PDEs
Ori Linial
Orly Avner
Dotan Di Castro
38
0
0
28 Mar 2023
MetaPhysiCa: OOD Robustness in Physics-informed Machine Learning
MetaPhysiCa: OOD Robustness in Physics-informed Machine Learning
S Chandra Mouli
M. A. Alam
Bruno Ribeiro
OOD
26
4
0
06 Mar 2023
Improving deep learning precipitation nowcasting by using prior
  knowledge
Improving deep learning precipitation nowcasting by using prior knowledge
M. Choma
Petr Simánek
Jakub Bartel
25
0
0
27 Jan 2023
AirfRANS: High Fidelity Computational Fluid Dynamics Dataset for
  Approximating Reynolds-Averaged Navier-Stokes Solutions
AirfRANS: High Fidelity Computational Fluid Dynamics Dataset for Approximating Reynolds-Averaged Navier-Stokes Solutions
F. Bonnet
Jocelyn Ahmed Mazari
Paola Cinnella
Patrick Gallinari
AI4CE
25
54
0
15 Dec 2022
Knowledge-augmented Deep Learning and Its Applications: A Survey
Knowledge-augmented Deep Learning and Its Applications: A Survey
Zijun Cui
Tian Gao
Kartik Talamadupula
Qiang Ji
22
17
0
30 Nov 2022
Deep Grey-Box Modeling With Adaptive Data-Driven Models Toward
  Trustworthy Estimation of Theory-Driven Models
Deep Grey-Box Modeling With Adaptive Data-Driven Models Toward Trustworthy Estimation of Theory-Driven Models
Naoya Takeishi
Alexandros Kalousis
AAML
35
3
0
24 Oct 2022
Homotopy-based training of NeuralODEs for accurate dynamics discovery
Homotopy-based training of NeuralODEs for accurate dynamics discovery
Joon-Hyuk Ko
Hankyul Koh
Nojun Park
W. Jhe
35
8
0
04 Oct 2022
Informed Learning by Wide Neural Networks: Convergence, Generalization
  and Sampling Complexity
Informed Learning by Wide Neural Networks: Convergence, Generalization and Sampling Complexity
Jianyi Yang
Shaolei Ren
24
3
0
02 Jul 2022
A Review of Machine Learning Methods Applied to Structural Dynamics and
  Vibroacoustic
A Review of Machine Learning Methods Applied to Structural Dynamics and Vibroacoustic
Barbara Z Cunha
C. Droz
A. Zine
Stéphane Foulard
M. Ichchou
AI4CE
27
84
0
13 Apr 2022
When Physics Meets Machine Learning: A Survey of Physics-Informed
  Machine Learning
When Physics Meets Machine Learning: A Survey of Physics-Informed Machine Learning
Chuizheng Meng
Sungyong Seo
Defu Cao
Sam Griesemer
Yan Liu
PINN
AI4CE
34
55
0
31 Mar 2022
Stacked Residuals of Dynamic Layers for Time Series Anomaly Detection
Stacked Residuals of Dynamic Layers for Time Series Anomaly Detection
L. Zancato
Alessandro Achille
G. Paolini
A. Chiuso
Stefano Soatto
AI4TS
20
1
0
25 Feb 2022
Filtered-CoPhy: Unsupervised Learning of Counterfactual Physics in Pixel
  Space
Filtered-CoPhy: Unsupervised Learning of Counterfactual Physics in Pixel Space
Steeven Janny
Fabien Baradel
Natalia Neverova
M. Nadri
Greg Mori
Christian Wolf
CML
33
15
0
01 Feb 2022
Composing Partial Differential Equations with Physics-Aware Neural
  Networks
Composing Partial Differential Equations with Physics-Aware Neural Networks
Matthias Karlbauer
T. Praditia
S. Otte
S. Oladyshkin
Wolfgang Nowak
Martin Volker Butz
AI4CE
32
18
0
23 Nov 2021
Physics-Guided Deep Learning for Dynamical Systems: A Survey
Physics-Guided Deep Learning for Dynamical Systems: A Survey
Rui Wang
Rose Yu
AI4CE
PINN
37
64
0
02 Jul 2021
Integrating Expert ODEs into Neural ODEs: Pharmacology and Disease
  Progression
Integrating Expert ODEs into Neural ODEs: Pharmacology and Disease Progression
Zhaozhi Qian
W. Zame
L. Fleuren
Paul Elbers
M. Schaar
OOD
19
53
0
05 Jun 2021
Deep Time Series Forecasting with Shape and Temporal Criteria
Deep Time Series Forecasting with Shape and Temporal Criteria
Vincent Le Guen
Nicolas Thome
AI4TS
32
27
0
09 Apr 2021
Deep KKL: Data-driven Output Prediction for Non-Linear Systems
Deep KKL: Data-driven Output Prediction for Non-Linear Systems
Steeven Janny
V. Andrieu
Madiha Nadri Wolf
Christian Wolf
AI4TS
20
13
0
23 Mar 2021
Physics-Integrated Variational Autoencoders for Robust and Interpretable
  Generative Modeling
Physics-Integrated Variational Autoencoders for Robust and Interpretable Generative Modeling
Naoya Takeishi
Alexandros Kalousis
DRL
AI4CE
22
54
0
25 Feb 2021
Probabilistic Time Series Forecasting with Structured Shape and Temporal
  Diversity
Probabilistic Time Series Forecasting with Structured Shape and Temporal Diversity
Vincent Le Guen
Nicolas Thome
AI4TS
18
26
0
14 Oct 2020
Lagrangian Neural Networks
Lagrangian Neural Networks
M. Cranmer
S. Greydanus
Stephan Hoyer
Peter W. Battaglia
D. Spergel
S. Ho
PINN
130
422
0
10 Mar 2020
Disentangling Physical Dynamics from Unknown Factors for Unsupervised
  Video Prediction
Disentangling Physical Dynamics from Unknown Factors for Unsupervised Video Prediction
Vincent Le Guen
Nicolas Thome
AI4CE
PINN
89
288
0
03 Mar 2020
Symplectic Recurrent Neural Networks
Symplectic Recurrent Neural Networks
Zhengdao Chen
Jianyu Zhang
Martín Arjovsky
Léon Bottou
146
219
0
29 Sep 2019
Convolutional LSTM Network: A Machine Learning Approach for
  Precipitation Nowcasting
Convolutional LSTM Network: A Machine Learning Approach for Precipitation Nowcasting
Xingjian Shi
Zhourong Chen
Hao Wang
Dit-Yan Yeung
W. Wong
W. Woo
230
7,903
0
13 Jun 2015
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