Article ID Journal Published Year Pages File Type
761417 Computers & Fluids 2016 13 Pages PDF
Abstract

•A computationally-efficient method for the large-eddy simulation of turbulent flows.•Mean gradients are taken into account in the subgrid-scale viscosity.•Mean gradients are estimated by Kalman filtering as the simulation progresses.•Kalman filter adapts itself to the local turbulent rate of the flow.

A computationally-efficient method based on Kalman filtering is introduced to capture “on the fly” the low-frequency (or very large-scale) patterns of a turbulent flow in a large-eddy simulation (LES). This method may be viewed as an adaptive exponential smoothing in time with a varying cut-off frequency that adjusts itself automatically to the local rate of turbulence of the simulated flow. It formulates as a recursive algorithm, which requires only few arithmetic operations per time step and has very low memory usage. In practice, this smoothing algorithm is used in LES to evaluate the low-frequency component of the rate of strain, and implement a shear-improved variant of the Smagrosinky’s subgrid-scale viscosity. Such approach is primarily devoted to the simulation of turbulent flows that develop large-scale unsteadiness associated with strong shear variations. As a severe test case, the flow past a circular cylinder at Reynolds number ReD=4.7×104ReD=4.7×104 (in the subcritical turbulent regime) is examined in details. Aerodynamic and aeroacoustic features including spectral analysis of the velocity and the far-field pressure are found in good agreement with various experimental data. The Kalman filter suitably captures the pulsating behavior of the flow and provides meaningful information about the large-scale dynamics. Finally, the robustness of the method is assessed by varying the parameters entering in the calibration of the Kalman filter.

Related Topics
Physical Sciences and Engineering Engineering Computational Mechanics
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