CFD: Data-Driven and Machine Learning
ORAL · T29 · ID: 678181
Presentations
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Machine learning framework to predict flows over arbitrarily arranged solid arrays
ORAL
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Presenters
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Geunhyeok Choi
Hongik University
Authors
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Geunhyeok Choi
Hongik University
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Seungwon Shin
Department of Mechanical and System Design Engineering, Hongik University
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Seong Jin Kim
Extreme Materials Research Center, Korea Institute of Science and Technology, KIST
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A Neural Differentiable Solver for Efficient Simulation of Fluid-Structure Interaction
ORAL
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Presenters
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Xiantao Fan
University of Notre Dame
Authors
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Xiantao Fan
University of Notre Dame
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Jian-Xun Wang
University of Notre Dame
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Competitive physics-informed networks for high-accuracy solutions to Navier-Stokes problems
ORAL
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Publication: Zeng, Q., Bryngelson, S. H., & Schäfer, F. (2022). Competitive Physics Informed Networks. arXiv preprint arXiv:2204.11144.
Presenters
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Yash Kothari
Georgia Tech
Authors
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Yash Kothari
Georgia Tech
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Qi Zeng
Georgia Tech
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Florian Schaefer
Georgia Tech
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Spencer H Bryngelson
Georgia Tech, Georgia Institute of Technology
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β-Variational autoencoders for nonlinear and ortogonal reduced-order models in turbulence
ORAL
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Publication: Towards extraction of orthogonal and parsimonious non-linear modes from turbulent flows. H Eivazi, S Le Clainche, S Hoyas, R Vinuesa. Expert Systems with Applications 202, 117038, 2022
Presenters
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Ricardo Vinuesa
KTH, KTH Royal Institute of Technology, FLOW, KTH Engineering Mechanics
Authors
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Ricardo Vinuesa
KTH, KTH Royal Institute of Technology, FLOW, KTH Engineering Mechanics
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Hamidreza Eivazi
KTH Royal Institute of Technology
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Soledad Le Clainche
UPM
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Sergio Hoyas
Univ Politecnica de Valencia
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Accelerating Poisson equation solvers with physics informed neural networks
ORAL
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Presenters
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Morgan Kerhouant
Imperial College London
Authors
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Morgan Kerhouant
Imperial College London
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Thomas Abadie
Imperial College London; University of Birmingham, Department of Chemical Engineering, Imperial College London, Imperial College London; University of Birmingham, UK
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Raj Venuturumilli
BP
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Andre Nicolle
BP
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Omar K Matar
Imperial College London, Imperial College London, The Alan Turing Institute
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Efficient high-dimensional variational data assimilation with machine-learned reduced-order models
ORAL
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Publication: https://gmd.copernicus.org/articles/15/3433/2022/
Presenters
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Romit Maulik
Argonne National Laboratory
Authors
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Romit Maulik
Argonne National Laboratory
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Vishwas Rao
Argonne National Laboratory
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Jiali Wang
Argonne National Laboratory
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Gianmarco Mengaldo
National University of Singapore
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Emil Constantinescu
Argonne National Laboratory
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Bethany A Lusch
Argonne National Laboratory
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Prasanna Balaprakash
Argonne National Laboratory
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Ian Foster
Argonne National Laboratory
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Rao Kotamarthi
Argonne National Lab, Argonne National Laboratory
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Hydrokinetic turbine wake flow reconstruction in large-scale waterways using physics-informed convolutional neural networks
ORAL
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Presenters
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Zexia Zhang
State University of New York at Stony Brook, Stony Brook University
Authors
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Zexia Zhang
State University of New York at Stony Brook, Stony Brook University
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Ali Khosronejad
Stony Brook University
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On the application of data-driven modeling within the rotorcraft design space
ORAL
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Presenters
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Nicholas Peters
Embry-Riddle Aeronautical University-Wor
Authors
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Nicholas Peters
Embry-Riddle Aeronautical University-Wor
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Efficient and Robust Training Strategies for Physics and Equality Constrained Artificial Neural Networks
ORAL
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Publication: Basir, S., & Senocak, I. (2022). Physics and Equality Constrained Artificial Neural Networks: Application to Forward and Inverse Problems with Multi-fidelity Data Fusion. Journal of Computational Physics, 111301.
Presenters
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shamsulhaq basir
University of Pittsburgh
Authors
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shamsulhaq basir
University of Pittsburgh
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Inanc Senocak
University of Pittsburgh, University of Pittsburg
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Prediction and Control of 2D Decaying Turbulence using Generative Adversarial Networks
ORAL
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Presenters
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Jiyeon Kim
Yonsei University
Authors
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Jiyeon Kim
Yonsei University
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Junhyuk Kim
Yonsei University
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Changhoon Lee
Yonsei University
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A heterogeneous computing approach to coupled simulation and machine-learning deployment for high-speed flows
ORAL
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Presenters
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Charlelie Laurent
Center for Turbulence Research, Stanford University, Stanford University
Authors
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Charlelie Laurent
Center for Turbulence Research, Stanford University, Stanford University
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Kazuki Maeda
Center for Turbulence Research, Stanford University, Center for Turbulence Research, Stanford University, CA, USA, Stanford University
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Machine Learning Flux-Limiters for Compressible Flow Simulations
ORAL
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Presenters
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Robert M Chiodi
Los Alamos National Laboratory
Authors
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Robert M Chiodi
Los Alamos National Laboratory
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Nga T Nguyen-Fotiadis
Los Alamos National Laboratory
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Michael McKerns
Los Alamos National Laboratory
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Andrew T Sornborger
Los Alamos National Laboratory
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Daniel Livescu
LANL, Los Alamos National Laboratory
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