Flow-Field Prediction in Periodic Domains Using a Convolution Neural Network with Hypernetwork Parametrization

Author:

Bublík Ondřej1,Heidler Václav1,Pecka Aleš1,Vimmr Jan2

Affiliation:

1. NTIS - New Technology for the Information Society, Faculty of Applied Sciences, University of West Bohemia, Technická 8, Pilsen, 30100, Czech Republic

2. Department of Mechanics, Faculty of Applied Sciences, University of West Bohemia, Technická 8, Pilsen, 30100, Czech Republic

Abstract

This paper deals with flow field prediction in a blade cascade using the convolution neural network. The convolutional neural network (CNN) predicts density, pressure and velocity fields based on the given geometry. The blade cascade is modeled as a single interblade channel with periodic boundary conditions. In this paper, an algorithm that enforces periodic boundary conditions onto the CNN is presented. The main target of this study is to parametrize the CNN model depending on the Reynolds number. A new parametrization approach based on a so-called hypernetwork is employed for this purpose. The idea of this approach is that when the Reynolds number is modified, the hypernetwork modifies the weights of the CNN in such a way that it produces flow fields corresponding to that particular Reynolds number. The concept of the hypernetwork-based parametrization is tested on the problem of a compressible fluid flow through a blade cascade with variable blade profiles and Reynolds numbers.

Funder

Agency of the Czech Republic

Publisher

World Scientific Pub Co Pte Ltd

Subject

Mechanical Engineering,Mechanics of Materials,General Materials Science

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