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Hybrid Reinforcement Learning Control for a Micro Quadrotor Flight

Jaehyun Yoo, Do-Hyun Jang, H. Jin Kim, Karl Henrik Johansson

2020IEEE Control Systems Letters64 citationsDOI

Abstract

This letter presents a combination of reinforcement learning (RL) and deterministic controllers to learn a quadrotor control. Learning the quadrotor flight in a standard RL approach requires many iterations of trial and error, which may bring about risky exploration and battery consumption. In this letter, we integrate a classical controller such as PD (proportional and derivative) or LQR (linear quadratic regulator) with a RL policy using their linear combination. The proposed method is not only simple to use, but also fast in learning convergence. When the algorithm is evaluated for a quadrotor trajectory tracking by means of a velocity control for both simulation and experiment, it demonstrates the faster convergence rate and better control performance in comparison with an existing rapid model-based RL method.

Topics & Concepts

Reinforcement learningControl theory (sociology)Linear-quadratic regulatorComputer scienceConvergence (economics)Controller (irrigation)TrajectoryTracking errorRate of convergenceControl (management)Artificial intelligenceKey (lock)AgronomyComputer securityAstronomyEconomic growthBiologyEconomicsPhysicsAdaptive Dynamic Programming ControlAdaptive Control of Nonlinear SystemsHydraulic and Pneumatic Systems
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