Augmented state estimation of urban settings using on-the-fly sequential Data Assimilation

Authors
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Type
Journal
Computers and Fluids
Year
2023

Abstract

A data-driven investigation of the flow around a high-rise building is performed by combining heterogeneous experimental samples and numerical models based on the Reynolds-Averaged Navier–Stokes (RANS) equations. The experimental data, which include velocity and pressure measurements obtained by local and sparse sensors, replicate realistic conditions of future automated urban settings. The coupling between experiments and the numerical model is performed using techniques based on the Ensemble Kalman Filter (EnKF), including advanced manipulations such as localization and inflation. The augmented state estimation obtained via EnKF has also been employed to improve the predictive features of the RANS model via optimization of the free global model constants of two turbulence models used to close the equations, namely the ɛ and the SST turbulence models. The optimized inferred values are far from the classical values prescribed as general recommendations and implemented in codes, but also different from other data-driven analyses reported in the literature. The results obtained with this new optimized parametric description show a global improvement for both the velocity and pressure fields. In addition, some topological improvements for the flow organization are observed downstream, far from the location of the sensors.