Transactions of the Japan Society for Computational Engineering and Science
Online ISSN : 1347-8826
ISSN-L : 1344-9443
Formulation of neural mode decomposition and free surface flow reconstruction for fast mesh-free numerical simulation using deep learning.
Gen MATONOMayuko NISHIO
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2024 Volume 2024 Issue 1 Pages 20241003

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Abstract

Reduced Order Modeling (ROM) reduces the computational cost in simulating physics phenomena by using reduced dimensional spaces. However, it becomes difficult to apply ROM to reconstruction of physical fields represented by the Lagrangian mechanics, such as the particle method, in the numerical analysis of free surface flows. This study aims to create a ROM applicable to free surface flows of Lagrangian description. A novel deep learning-based mode decomposition method, which can be applied to simulate physics phenomena obtained by the Lagrange method, is proposed as a component of ROM in this paper. Validation of proposed method was carried out for the analysis of water drop problem. The results showed that the original physical field can be reconstructed with high accuracies from the modes obtained by NMD realized deep learning.

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© 2024 The Japan Society For Computational Engineering and Science
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