Back to Search Start Over

Multigrid sequential data assimilation for the large-eddy simulation of a massively separated bluff-body flow

Authors :
Moldovan, Gabriel
Mariotti, Alessandro
Cordier, Laurent
Lehnasch, Guillaume
Salvetti, Maria - Vittoria
Meldi, Marcello
Publication Year :
2022

Abstract

The potential for data-driven applications to scale-resolving simulations of turbulent flows is assessed herein. Multigrid sequential data assimilation algorithms have been used to calibrate solvers for Large Eddy Simulation for the analysis of the high-Reynolds-number flow around a rectangular cylinder of aspect ratio 5:1. This test case has been chosen because of a number of physical complexities which elude accurate representation using reduced-order numerical simulation. The results for the statistical moments of the velocity and pressure flow field show that the data-driven techniques employed, which are based on the Ensemble Kalman Filter, are able to significantly improve the predictive features of the solver for reduced grid resolution. In addition, it was observed that, despite the sparse and asymmetric distribution of observation in the data-driven process, the data augmented results exhibit perfectly symmetric statistics and a significantly improved accuracy also far from the sensor location.

Subjects

Subjects :
Physics - Fluid Dynamics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2212.13831
Document Type :
Working Paper