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DeepCFD: Efficient Steady-State Laminar Flow Approximation with Deep
  Convolutional Neural Networks

DeepCFD: Efficient Steady-State Laminar Flow Approximation with Deep Convolutional Neural Networks

19 April 2020
M. Ribeiro
A. Rehman
Sheraz Ahmed
Andreas Dengel
ArXivPDFHTML

Papers citing "DeepCFD: Efficient Steady-State Laminar Flow Approximation with Deep Convolutional Neural Networks"

6 / 6 papers shown
Title
DrivAer Transformer: A high-precision and fast prediction method for vehicle aerodynamic drag coefficient based on the DrivAerNet++ dataset
DrivAer Transformer: A high-precision and fast prediction method for vehicle aerodynamic drag coefficient based on the DrivAerNet++ dataset
Jiaqi He
Xiangwen Luo
Yiping Wang
AI4CE
38
0
0
11 Apr 2025
Optimization Landscapes Learned: Proxy Networks Boost Convergence in Physics-based Inverse Problems
Optimization Landscapes Learned: Proxy Networks Boost Convergence in Physics-based Inverse Problems
Girnar Goyal
Philipp Holl
Sweta Agrawal
Nils Thuerey
AI4CE
48
0
0
27 Jan 2025
WindSeer: Real-time volumetric wind prediction over complex terrain
  aboard a small UAV
WindSeer: Real-time volumetric wind prediction over complex terrain aboard a small UAV
Florian Achermann
Thomas Stastny
Bogdan Danciu
Andrey Kolobov
Jen Jen Chung
Roland Siegwart
Nicholas R. J. Lawrance
22
2
0
18 Jan 2024
Deep learning modelling of manufacturing and build variations on multi-stage axial compressors aerodynamics
Deep learning modelling of manufacturing and build variations on multi-stage axial compressors aerodynamics
G. Bruni
Md Tahmid Rahman Laskar
Jimmy X. Huang
AI4CE
20
0
0
06 Oct 2023
An Extensible Benchmark Suite for Learning to Simulate Physical Systems
An Extensible Benchmark Suite for Learning to Simulate Physical Systems
Karl Otness
Arvi Gjoka
Joan Bruna
Daniele Panozzo
Benjamin Peherstorfer
T. Schneider
Denis Zorin
24
23
0
09 Aug 2021
Steerable Partial Differential Operators for Equivariant Neural Networks
Steerable Partial Differential Operators for Equivariant Neural Networks
Erik Jenner
Maurice Weiler
23
27
0
18 Jun 2021
1