Reynolds Stress Anisotropy Tensor Predictions for Turbulent Channel Flow using Neural Networks
Jiayi Cai, Pierre-Emmanuel Angeli, Jean-Marc Martinez, Guillaume, Damblin, Didier Lucor

TL;DR
This paper demonstrates that neural networks, especially MLPs, can accurately predict the Reynolds stress anisotropy tensor in turbulent channel flows, outperforming tensor basis neural networks and enhancing turbulence modeling.
Contribution
It introduces optimized neural network models with specific input features for predicting Reynolds stress tensors and proposes a generalized tensor basis to improve TBNN performance.
Findings
MLP models with specific inputs outperform TBNN in predictions.
The generalized tensor basis enhances TBNN accuracy.
Neural networks effectively interpolate and extrapolate Reynolds stress data.
Abstract
The Reynolds-Averaged Navier-Stokes (RANS) approach remains a backbone for turbulence modeling due to its high cost-effectiveness. Its accuracy is largely based on a reliable Reynolds stress anisotropy tensor closure model. There has been an amount of work aiming at improving traditional closure models, while they are still not satisfactory to some complex flow configurations. In recent years, advances in computing power have opened up a new way to address this problem: the machine-learning-assisted turbulence modeling. In this paper, we employ neural networks to fully predict the Reynolds stress anisotropy tensor of turbulent channel flows at different friction Reynolds numbers, for both interpolation and extrapolation scenarios. Several generic neural networks of Multi-Layer Perceptron (MLP) type are trained with different input feature combinations to acquire a complete grasp of the…
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Taxonomy
TopicsAerodynamics and Fluid Dynamics Research · Model Reduction and Neural Networks · Fluid Dynamics and Vibration Analysis
