A Predictive Model for Turbulence Evolution and Mixing Using Machine Learning

被引:2
作者
Wang, Yuhang [1 ]
Shelyag, Sergiy [2 ]
Schluter, Jorg [1 ]
机构
[1] Deakin Univ, Sch Engn, Geelong, Vic 3216, Australia
[2] Flinders Univ S Australia, Coll Sci & Engn, Tonsley, SA 5042, Australia
关键词
Mathematical models; Computational modeling; Predictive models; Convolutional neural networks; Computer architecture; Feature extraction; Accuracy; Fluid dynamics; Machine learning; Computational fluid dynamics; data-driven approaches; machine learning; physics-informed neural networks; turbulence modeling; turbulent flows;
D O I
10.1109/ACCESS.2024.3442189
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The high cost associated with high-fidelity computational fluid dynamics (CFD) is one of the main challenges that inhibit the design and optimisation of new fluid-flow systems. In this study, we explore the feasibility of a physics-informed deep learning approach to predict turbulence evolution and mixing without requiring a classical CFD solver. The deep learning architecture was inspired by integrating U-Net with inception modules for capturing the multi-scale nature of turbulent flows. In addition, a physics-constrained loss function was designed to enforce the mass and pressure conservation of the predicted solution. After trained, the optimised model was validated in the large eddy simulation (LES) of a forced turbulent mixing layer at two distinct Reynolds numbers ( $\mathrm {Re} =3000$ and 30000). The results demonstrate that the proposed approach achieves a promising solution accuracy and extrapolation ability with a significant reduction in computing time when compared to those obtained using a classical LES flow solver. The success in developing such a physics-informed deep learning approach not only justifies the potential of ML-based surrogate solvers for fast prototyping and design of generic fluid-flow systems but also highlights the key challenges arising from data-driven surrogate solver development for turbulence modelling.
引用
收藏
页码:115182 / 115196
页数:15
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