Sparse data assimilation for under-resolved large-eddy simulations
Justin Plogmann, Oliver Brenner, Patrick Jenny

TL;DR
This paper introduces a variational data assimilation method for large-eddy simulations that improves accuracy by correcting mean flow and Reynolds stresses using sparse velocity data, enhancing turbulence modeling.
Contribution
It develops an adjoint-based assimilation framework that optimizes LES mean flow and turbulence features using sparse reference data, improving simulation fidelity.
Findings
Enhanced accuracy of LES in turbulent flow over complex geometries.
Effective correction of Reynolds stresses from sparse data.
Improved vortex shedding frequency predictions.
Abstract
The need for accurate and fast scale-resolving simulations of fluid flows, where turbulent dispersion is a crucial physical feature, is evident. Large-eddy simulations (LES) are computationally more affordable than direct numerical simulations, but their accuracy depends on sub-grid scale models and the quality of the computational mesh. In order to compensate related errors, a data assimilation approach for LES is devised in this work. The presented method is based on variational assimilation of sparse time-averaged velocity reference data. Working with the time-averaged LES momentum equation allows to employ a stationary discrete adjoint method. Therefore, a stationary corrective force in the unsteady LES momentum equation is iteratively updated within the gradient-based optimization framework in conjunction with the adjoint gradient. After data assimilation, corrected anisotropic…
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Taxonomy
TopicsFluid Dynamics and Turbulent Flows · Meteorological Phenomena and Simulations · Wind and Air Flow Studies
