Fluids (Aug 2021)

Hybrid Neural Network Reduced Order Modelling for Turbulent Flows with Geometric Parameters

  • Matteo Zancanaro,
  • Markus Mrosek,
  • Giovanni Stabile,
  • Carsten Othmer,
  • Gianluigi Rozza

DOI
https://doi.org/10.3390/fluids6080296
Journal volume & issue
Vol. 6, no. 8
p. 296

Abstract

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Geometrically parametrized partial differential equations are currently widely used in many different fields, such as shape optimization processes or patient-specific surgery studies. The focus of this work is some advances on this topic, capable of increasing the accuracy with respect to previous approaches while relying on a high cost–benefit ratio performance. The main scope of this paper is the introduction of a new technique combining a classical Galerkin-projection approach together with a data-driven method to obtain a versatile and accurate algorithm for the resolution of geometrically parametrized incompressible turbulent Navier–Stokes problems. The effectiveness of this procedure is demonstrated on two different test cases: a classical academic back step problem and a shape deformation Ahmed body application. The results provide insight into details about the properties of the architecture we developed while exposing possible future perspectives for this work.

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