A Data-Driven Wall-Shear Stress Model for LES Using Gradient Boosted Decision Trees

Conference Paper (2021)
Author(s)

Sarath Radhakrishnan (Barcelona Supercomputing Center)

Lawrence Adu Gyamfi (Barcelona Supercomputing Center)

Arnau Miró (Barcelona Supercomputing Center)

Bernat Font (Barcelona Supercomputing Center)

Joan Calafell (Barcelona Supercomputing Center)

Oriol Lehmkuhl (Barcelona Supercomputing Center)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1007/978-3-030-90539-2_7
More Info
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Publication Year
2021
Language
English
Affiliation
External organisation
Pages (from-to)
105-121
ISBN (print)
9783030905385

Abstract

With the recent advances in machine learning, data-driven strategies could augment wall modeling in large eddy simulation (LES). In this work, a wall model based on gradient boosted decision trees is presented. The model is trained to learn the boundary layer of a turbulent channel flow so that it can be used to make predictions for significantly different flows where the equilibrium assumptions are valid. The methodology of building the model is presented in detail. The experiment conducted to choose the data for training is described. The trained model is tested a posteriori on a turbulent channel flow and the flow over a wall-mounted hump. The results from the tests are compared with that of an algebraic equilibrium wall model, and the performance is evaluated. The results show that the model has succeeded in learning the boundary layer, proving the effectiveness of our methodology of data-driven model development, which is extendable to complex flows.

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