Data-driven modelling of the Reynolds stress tensor using random forests with invariance

Journal Article (2020)
Author(s)

Mikael L.A. Kaandorp (Universiteit Utrecht)

R. P. Dwight (TU Delft - Aerodynamics)

Research Group
Aerodynamics
Copyright
© 2020 Mikael L.A. Kaandorp, R.P. Dwight
DOI related publication
https://doi.org/10.1016/j.compfluid.2020.104497
More Info
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Publication Year
2020
Language
English
Copyright
© 2020 Mikael L.A. Kaandorp, R.P. Dwight
Research Group
Aerodynamics
Volume number
202
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Abstract

A novel machine learning algorithm is presented, serving as a data-driven turbulence modeling tool for Reynolds Averaged Navier-Stokes (RANS) simulations. This machine learning algorithm, called the Tensor Basis Random Forest (TBRF), is used to predict the Reynolds-stress anisotropy tensor, while guaranteeing Galilean invariance by making use of a tensor basis. By modifying a random forest algorithm to accept such a tensor basis, a robust, easy to implement, and easy to train algorithm is created. The algorithm is trained on several flow cases using DNS/LES data, and used to predict the Reynolds stress anisotropy tensor for new, unseen flows. The resulting predictions of turbulence anisotropy are used as a turbulence model within a custom RANS solver. Stabilization of this solver is necessary, and is achieved by a continuation method and a modified k-equation. Results are compared to the neural network approach of Ling et al. [29]. Results show that the TBRF algorithm is able to accurately predict the anisotropy tensor for various flow cases, with realizable predictions close to the DNS/LES reference data. Corresponding mean flows for a square duct flow case and a backward facing step flow case show good agreement with DNS and experimental data-sets. Overall, these results are seen as a next step towards improved data-driven modelling of turbulence. This creates an opportunity to generate custom turbulence closures for specific classes of flows, limited only by the availability of LES/DNS data.