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Performance and accuracy assessments of an incompressible fluid solver
  coupled with a deep Convolutional Neural Network

Performance and accuracy assessments of an incompressible fluid solver coupled with a deep Convolutional Neural Network

20 September 2021
Ekhi Ajuria Illarramendi
M. Bauerheim
B. Cuenot
ArXivPDFHTML

Papers citing "Performance and accuracy assessments of an incompressible fluid solver coupled with a deep Convolutional Neural Network"

5 / 5 papers shown
Title
Weak baselines and reporting biases lead to overoptimism in machine
  learning for fluid-related partial differential equations
Weak baselines and reporting biases lead to overoptimism in machine learning for fluid-related partial differential equations
N. McGreivy
Ammar Hakim
AI4CE
29
42
0
09 Jul 2024
Invariant preservation in machine learned PDE solvers via error
  correction
Invariant preservation in machine learned PDE solvers via error correction
N. McGreivy
Ammar Hakim
AI4CE
PINN
21
8
0
28 Mar 2023
Using neural networks to solve the 2D Poisson equation for electric
  field computation in plasma fluid simulations
Using neural networks to solve the 2D Poisson equation for electric field computation in plasma fluid simulations
Li Cheng
Ekhi Ajuria Illarramendi
Guillaume Bogopolsky
M. Bauerheim
B. Cuenot
31
19
0
27 Sep 2021
Global field reconstruction from sparse sensors with Voronoi
  tessellation-assisted deep learning
Global field reconstruction from sparse sensors with Voronoi tessellation-assisted deep learning
Kai Fukami
R. Maulik
Nesar Ramachandra
K. Fukagata
Kunihiko Taira
42
142
0
03 Jan 2021
On Translation Invariance in CNNs: Convolutional Layers can Exploit
  Absolute Spatial Location
On Translation Invariance in CNNs: Convolutional Layers can Exploit Absolute Spatial Location
O. Kayhan
J. C. V. Gemert
209
232
0
16 Mar 2020
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