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Deep-learning-based assessment of skin friction in wall-bounded turbulence

Sergio Hoyas, Nils Benedikt, Andres Cremades, Ricardo Vinuesa

2025Physical Review Fluids14 citationsDOIOpen Access PDF

Abstract

This work investigates the influence of classically coherent structures on wall-shear stress and energy dissipation in turbulent channel flow, utilizing direct numerical simulations (DNS) data and explainable deep learning (XDL). Sweeps, defined as regions of low streamwise velocity moving toward the wall, are found to be the most influential structures for both energy dissipation and drag. Moreover, the volume of these key structures falls within a narrow range, making it easier to identify the most significant ones. Consequently, this work paves the way for the development of novel, highly efficient turbulence-control strategies for the reduction of drag.

Topics & Concepts

Bounded functionTurbulenceMechanicsArtificial intelligenceComputer sciencePhysicsMathematicsMathematical analysisFluid Dynamics and Turbulent FlowsTextile materials and evaluationsTraffic control and management
Deep-learning-based assessment of skin friction in wall-bounded turbulence | Litcius