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Machine Learning in Fluid Dynamics

A curated list of awesome Machine Learning (Deep Learning) projects in Fluid Dynamics. Topics consist of Computational Fluid Dynamics (CFD), turbulence modeling, non-Newtonian fluids, Hemodynamics, PIV measurement, Geophysical fluid dynamics, Aeroelasticity, multiphase flow, etc.

Overview

Review

  • [Machine learning for fluid mechanics] [link] Brunton, Steven L., Bernd R. Noack, and Petros Koumoutsakos. Annual review of fluid mechanics 52 (2020): 477-508.
  • [Deep learning in fluid dynamics] Kutz 2017 JFM, [link]
  • [Turbulence modeling in the age of data] K Duraisamy, G Iaccarino, H Xiao - Annual Review of Fluid 2018, [link]

Turbulence Closure

  • [Reynolds averaged turbulence modelling using deep neural networks with embedded invariance] J Ling, A Kurzawski, J Templeton - Journal of Fluid Mechanics, 2016 [link]

  • [Evaluation of machine learning algorithms for prediction of regions of high Reynolds averaged Navier Stokes uncertainty] J Ling, J Templeton - Physics of Fluids, 2015, [link]

  • [Machine learning strategies for systems with invariance properties] J Ling, R Jones, J Templeton - Journal of Computational Physics, 2016 [link]

  • [A neural network approach for the blind deconvolution of turbulent flows] R Maulik, O San - Journal of Fluid Mechanics, 2017 [link]

  • [Physics-informed machine learning approach for reconstructing Reynolds stress modeling discrepancies based on DNS data ] JX Wang, JL Wu, H Xiao - Physical Review Fluids, 2017 [link]

  • [Reynolds-Averaged Turbulence Modeling Using Type I and Type II Machine Learning Frameworks with Deep Learning] CW Chang, NT Dinh 2018 [link]

  • [Machine learning methods for data-driven turbulence modeling] - Zhang K Duraisamy 2015 [link]

  • [Machine-learning-augmented predictive modeling of turbulent separated flows over airfoils] AP Singh, S Medida, K Duraisamy - AIAA Journal, 2017 [link]

  • [Deep Neural Networks for Data-Driven Turbulence Models] AD Beck, DG Flad, CD Munz 2018 [link]

  • [Subgrid-scale scalar flux modelling based on optimal estimation theory and machine-learning procedures] A. Vollant, G. Balarac & C. Corre[link]

Flow Field Approximation

  • [Convolutional neural networks for steady flow approximation] -Guo, X., Li, W., & Iorio, F. 2016 KDD [link]

  • [Data‐driven projection method in fluid simulation] -C Yang, X Yang, X Xiao - Computer Animation and Virtual, 2016 [link]

  • [Accelerating eulerian fluid simulation with convolutional networks] J Tompson, K Schlachter, P Sprechmann, 2016 - [Paper] | [code]

  • [Well, how accurate is it? A Study of Deep Learning Methods for Reynolds-Averaged Navier-Stokes Simulations] N Thuerey, K Weissenow, H Mehrotra 2018 [link]

  • Deep Learning Methods for Reynolds-Averaged Navier-Stokes Simulations Nils Thuerey, K. Weissenow, L. Prantl, Xiangyu Hu Project [paper] [code]

  • [Deep Learning for Flow Sculpting: Insights into Efficient Learning using Scientific Simulation Data] [paper] Daniel Stoecklein, Kin Gwn Lore, Michael Davies, Soumik Sarkar, Baskar Ganapathysubramanian, 2017

repos

Particle Image Velocimetry

  • [Machine Learning Control for Experimental Turbulent Flow Targeting the Reduction of a Recirculation Bubble] Camila Chovet, Marc Lippert, Laurent Keirsbulck, Bernd R. Noack and Jean-Marc Foucaut 2017 [link]

  • [PIV-DCNN: cascaded deep convolutional neural networks for particle image velocimetry] Y Lee, H Yang, Z Yin - Experiments in Fluids, 2017 [link]

Others

Lift and drag prediction

  • [Application of Convolutional Neural Network to Predict Airfoil Lift Coefficient] Yao Zhang, Woong-Je Sung, Dimitri Mavris 2017, [link]

  • [Identification of aerodynamic coefficients using computational neural networks] DJ Linse, RF Stengel - Journal of Guidance, Control, and Dynamics, 1993, [link]

  • [Performance predicting of 2D and 3D submerged hydrofoils using CFD and ANNs], H Nowruzi, H Ghassemi, M Ghiasi - Journal of Marine Science and …, 2017, [link]

Flow Control

  • [Closed-loop separation control using machine learning] N Gautier, JL Aider, T Duriez, BR Noack… - Journal of Fluid Mechanics 2015 [link]

Multiphase

[Using statistical learning to close two-fluid multiphase flow equations for a simple bubbly system] M Ma, J Lu, G Tryggvason - Physics of Fluids, 2015 [link]

-[Sharp interface approaches and deep learning techniques for multiphase flows] F Gibou, D Hyde, R Fedkiw - Journal of Computational Physics, 2019 [link]

Special Topics

  • [On the spectral bias of neural networks] Rahaman, Nasim, et al. International Conference on Machine Learning. PMLR, 2019.
  • [Fourier network]
  • [DeepONet]
  • [Finite-dimensional operators]
  • [Neural-FEM]
  • [Neural Operators]
  • [Fourier Transform]
  • [Adaptive fourier neural operators]
  • [Physics Informed Neural Operator]

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A curated list of awesome Machine Learning projects in Fluid Dynamics

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