Data-driven wall modeling for LES involving non-equilibrium boundary layer effects
Sarath Radhakrishnan,
Joan Calafell,
Arnau Miró
et al.
Abstract:Purpose
Wall-modeled large eddy simulation (LES) is a practical tool for solving wall-bounded flows with less computational cost by avoiding the explicit resolution of the near-wall region. However, its use is limited in flows that have high non-equilibrium effects like separation or transition. This study aims to present a novel methodology of using high-fidelity data and machine learning (ML) techniques to capture these non-equilibrium effects.
Design/methodology/approach
A precursor to this methodology has… Show more
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