Self-critical machine-learning wall-modeled LES for external aerodynamics
Adri\'an Lozano-Dur\'an, Hyunji Jane Bae

TL;DR
This paper introduces a novel self-critical machine learning wall model for LES that predicts wall stress in complex turbulent flows by combining flow building blocks through neural networks, improving accuracy in external aerodynamics.
Contribution
It proposes a new flow modeling approach using neural networks with flow building blocks, enhancing wall stress predictions in turbulent external aerodynamics.
Findings
Accurately predicts wall stress in unseen external aerodynamic flows.
Provides confidence estimates to identify underperforming regions.
Validated on NASA Juncture Flow Experiment with promising results.
Abstract
The prediction of aircraft aerodynamic quantities of interest remains among the most pressing challenges for computational fluid dynamics. The aircraft aerodynamics are inherently turbulent with mean-flow three-dimensionality, often accompanied by laminar-to-turbulent transition, flow separation, secondary flow motions at corners, and shock wave formation, to name a few. However, the most widespread wall models are built upon the assumption of statistically-in-equilibrium wall-bounded turbulence and do not faithfully account for the wide variety of flow conditions described above. This raises the question of how to devise models capable of accounting for such a vast and rich collection of flow physics in a feasible manner. In this work, we propose tackling the wall-modeling challenge by devising the flow as a collection of building blocks, whose information enables the prediction of the…
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Taxonomy
TopicsFluid Dynamics and Turbulent Flows · Aerodynamics and Acoustics in Jet Flows · Model Reduction and Neural Networks
