4.7 Article

A neural network multigrid solver for the Navier-Stokes equations

Journal

JOURNAL OF COMPUTATIONAL PHYSICS
Volume 460, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jcp.2022.110983

Keywords

Computational fluid dynamics; Machine learning; Deep learning; Geometric multigrid; Navier-Stokes equations

Funding

  1. Federal Ministry of Education and Research of Germany [05M16NMA]
  2. GRK 2297 MathCoRe - Deutsche Forschungsgemeinschaft [314838170]
  3. Helmholtz-Gesellschaft [HIDSS-0002 DASHH]
  4. Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) [422037413 - TRR 287]

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We present DNN-MG, a deep neural network multigrid solver for the instationary Navier-Stokes equations. The combination of a geometric multigrid solver and a recurrent neural network with memory improves computational efficiency. DNN-MG reduces computation time by solving on coarse levels with the multi-grid method and correcting interpolated solutions on fine levels using a compact neural network.
We present the deep neural network multigrid solver (DNN-MG) that we develop for the instationary Navier-Stokes equations. DNN-MG improves computational efficiency using a judicious combination of a geometric multigrid solver and a recurrent neural network with memory. DNN-MG uses the multi-grid method to classically solve on coarse levels while the neural network corrects interpolated solutions on fine ones, thus avoiding the increasingly expensive computations that would have to be performed there. This results in a reduction in computation time through DNN-MG's highly compact neural network. The compactness results from its design for local patches and the available coarse multigrid solutions that provides a guide for the corrections. A compact neural network with a small number of parameters also reduces training time and data. Furthermore, the network's locality facilitates generalizability and allows one to use DNN-MG trained on one mesh domain also on different ones. We demonstrate the efficacy of DNN-MG for variations of the 2D laminar flow around an obstacle. For these, our method significantly improves the solutions as well as lift and drag functionals while requiring only about half the computation time of a full multigrid solution. We also show that DNN-MG trained for the configuration with one obstacle can be generalized to other time dependent problems that can be solved efficiently using a geometric multigrid method. (c) 2022 Elsevier Inc. All rights reserved.

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