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Reinforcement-learning-based actuator selection method for active flow control

Romain Paris, Samir Beneddine, Julien Dandois

2023Journal of Fluid Mechanics34 citationsDOIOpen Access PDF

Abstract

This paper addresses the issue of actuator selection for active flow control by proposing a novel method built on top of a reinforcement learning agent. Starting from a pre-trained agent using numerous actuators, the algorithm estimates the impact of a potential actuator removal on the value function, indicating the agent's performance. It is applied to two test cases, the one-dimensional Kuramoto–Sivashinsky equation and a laminar bidimensional flow around an airfoil at $Re=1000$ for different angles of attack ranging from $12^{\circ }$ to $20^{\circ }$ , to demonstrate its capabilities and limits. The proposed actuator-sparsification method relies on a sequential elimination of the least relevant action components, starting from a fully developed layout. The relevancy of each component is evaluated using metrics based on the value function. Results show that, while still being limited by this intrinsic elimination paradigm (i.e. the sequential elimination), actuator patterns and obtained policies demonstrate relevant performances and allow us to draw an accurate approximation of the Pareto front of performances versus actuator budget.

Topics & Concepts

ActuatorReinforcement learningAirfoilComputer scienceControl theory (sociology)Laminar flowFlow (mathematics)Flow control (data)Action selectionMathematical optimizationControl (management)Artificial intelligenceMathematicsPhysicsGeometryNeuroscienceComputer networkMechanicsThermodynamicsPerceptionBiologyFluid Dynamics and Turbulent FlowsPlasma and Flow Control in AerodynamicsModel Reduction and Neural Networks