4.7 Article

Projection-based and neural-net reduced order model for nonlinear Navier-Stokes equations

Journal

APPLIED MATHEMATICAL MODELLING
Volume 89, Issue -, Pages 1294-1315

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.apm.2020.07.023

Keywords

Navier-Stokes; OpenFOAM; Reduced order model; Proper orthogonal decomposition; Artificial Neural Network; Galerkin Projection

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This study presents a complete algorithm for constructing and solving a projection-based reduced order model coupled with an artificial neural network model, with the reduced model based on Galerkin projection and Proper Orthogonal Decomposition method, implemented using numerical discretization schemes in the OpenFOAM platform, and the neural network model trained with NARX architecture. The reduced order models accurately predict the behavior of incompressible flows at low Reynolds numbers, showing excellent agreement with full CFD simulations while requiring significantly fewer computational resources.
This paper presents complete steps for the construction and solution algorithm for a projection-based reduced order model coupled with an artificial neural net model. The reduced model is constructed based on the Galerkin projection of the equations governing the physical processes on reduced subspaces obtained by the Proper Orthogonal Decompo-sition method. The projection is done using numerical discretisation schemes implemented in the commonly used OpenFOAM (R) platform. The neural net model is trained using the Nonlinear AutoRegressive eXogenous model network (NARX) architecture. The reduced order models are demonstrated for true predictions of incompressible flows at low Reynolds numbers driven by various boundary conditions. Compared with the full CFD simulations, this model shows excellent agreement while only requiring a fraction of the computational resources. (C) 2020 Elsevier Inc. All rights reserved.

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