Cluster-based feedback control of turbulent post-stall separated flows
Aditya G. Nair, Chi-An Yeh, Eurika Kaiser, Bernd R. Noack, Steven L., Brunton, Kunihiko Taira

TL;DR
This paper introduces a model-free, cluster-based feedback control method for turbulent post-stall separated flows, using unsupervised learning and iterative optimization to reduce power consumption over airfoils.
Contribution
It presents a novel, automated control strategy that partitions flow trajectories into clusters and optimizes control laws with limited sensor data, improving aerodynamic performance.
Findings
Control laws shift flow trajectories to favorable states.
Achieved flow control with only about 10 iterations.
Reduced flight power consumption effectively.
Abstract
We propose a novel model-free self-learning cluster-based control strategy for general nonlinear feedback flow control technique, benchmarked for high-fidelity simulations of post-stall separated flows over an airfoil. The present approach partitions the flow trajectories (force measurements) into clusters, which correspond to characteristic coarse-grained phases in a low-dimensional feature space. A feedback control law is then sought for each cluster state through iterative evaluation and downhill simplex search to minimize power consumption in flight. Unsupervised clustering of the flow trajectories for in-situ learning and optimization of coarse-grained control laws are implemented in an automated manner as key enablers. Re-routing the flow trajectories, the optimized control laws shift the cluster populations to the aerodynamically favorable states. Utilizing limited number of…
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