Stochastic modelling and diffusion modes for proper orthogonal decomposition models and small-scale flow analysis
Valentin Resseguier (FLUMINANCE,IFREMER), Etienne M\'emin, (FLUMINANCE), Dominique Heitz (IRSTEA,FLUMINANCE), Bertrand Chapron (IFREMER)

TL;DR
This paper introduces a stochastic modeling framework for fluid flow reduced-order models that incorporates inhomogeneous diffusion and subgrid effects, improving the analysis and simulation of turbulent flows.
Contribution
It develops a novel stochastic decomposition method that explicitly models unresolved small-scale velocities and their impact on large-scale flow dynamics.
Findings
Effective modeling of small-scale turbulence effects.
Identification of critical regions in wake flows.
Enhanced accuracy in flow reconstruction.
Abstract
We present here a new stochastic modelling in the constitution of fluid flow reduced-order models. This framework introduces a spatially inhomogeneous random field to represent the unresolved small-scale velocity component. Such a decomposition of the velocity in terms of a smooth large-scale velocity component and a rough, highly oscillating, component gives rise, without any supplementary assumption, to a large-scale flow dynamics that includes a modified advection term together with an inhomogeneous diffusion term. Both of those terms, related respectively to turbophoresis and mixing effects, depend on the variance of the unre-solved small-scale velocity component. They bring to the reduced system an explicit subgrid term enabling to take into account the action of the truncated modes. Besides, a decomposition of the variance tensor in terms of diffusion modes provides a meaningful…
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