articleJournal of Fluid MechanicsJan 31, 2017BRONZE OA

Deep learning in fluid dynamics

University of Washington Applied Physics Laboratory

Indexed incrossref

Abstract

It was only a matter of time before deep neural networks (DNNs) – deep learning – made their mark in turbulence modelling, or more broadly, in the general area of high-dimensional, complex dynamical systems. In the last decade, DNNs have become a dominant data mining tool for big data applications. Although neural networks have been applied previously to complex fluid flows, the article featured here (Ling et al. , J. Fluid Mech. , vol. 807, 2016, pp. 155–166) is the first to apply a true DNN architecture, specifically to Reynolds averaged Navier Stokes turbulence models. As one often expects with modern DNNs, performance gains are achieved over competing state-of-the-art methods, suggesting that DNNs may play…

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Authors

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Topics & keywords

Keywords
  • Turbulence
  • Deep neural networks
  • Computer science
  • Deep learning
  • Reynolds number
  • Artificial neural network
  • Statistical physics
  • Fluid dynamics
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