DOAJ Open Access 2021

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

Matteo Zancanaro Markus Mrosek Giovanni Stabile Carsten Othmer Gianluigi Rozza

Abstrak

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.

Penulis (5)

M

Matteo Zancanaro

M

Markus Mrosek

G

Giovanni Stabile

C

Carsten Othmer

G

Gianluigi Rozza

Format Sitasi

Zancanaro, M., Mrosek, M., Stabile, G., Othmer, C., Rozza, G. (2021). Hybrid Neural Network Reduced Order Modelling for Turbulent Flows with Geometric Parameters. https://doi.org/10.3390/fluids6080296

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Informasi Jurnal
Tahun Terbit
2021
Sumber Database
DOAJ
DOI
10.3390/fluids6080296
Akses
Open Access ✓