Ensemble-filtered vortex modeling of strongly disturbed aerodynamic flows
Mathieu Le Provost, Jeff D. Eldredge

TL;DR
This paper advances vortex-based ensemble Kalman filter methods for real-time aerodynamic flow estimation, demonstrating improved robustness and accuracy in disturbed flow scenarios around a flat plate.
Contribution
It develops a vortex model-based EnKF framework and compares stochastic and deterministic analysis steps, showing enhanced robustness with ETKF.
Findings
ETKF outperforms stochastic EnKF in robustness.
The framework accurately estimates pressure and forces without prior disturbance knowledge.
Vortex models effectively assimilate pressure measurements for flow estimation.
Abstract
The task of dynamic flow estimation is to construct an approximation of an evolving flow---and particularly, its response to disturbances---using measurements from available sensors. Building from previous work by Darakananda et al.~(Phys Rev Fluids 2018), we further develop an ensemble Kalman filter (EnKF) framework for aerodynamic flows based on an ensemble of randomly-perturbed inviscid vortex models of flow about an infinitely-thin plate. In the forecast step, vortex elements in each ensemble member are advected by the flow and new elements are released from each edge of the plate; the elements are aggregated to maintain an efficient representation. The vortex elements and leading edge constraint are corrected in the analysis step by assimilating the surface pressure differences across the plate measured from the truth system. We show that the overall framework can be physically…
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