Model-Reference Reinforcement Learning for Collision-Free Tracking Control of Autonomous Surface Vehicles

Journal Article (2021)
Author(s)

Qingrui Zhang (Sun Yat-sen University, TU Delft - Transport Engineering and Logistics)

Wei Pan (TU Delft - Robot Dynamics)

Vasso Reppa (TU Delft - Transport Engineering and Logistics)

Research Group
Transport Engineering and Logistics
Copyright
© 2021 Q. Zhang, W. Pan, V. Reppa
DOI related publication
https://doi.org/10.1109/TITS.2021.3086033
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Q. Zhang, W. Pan, V. Reppa
Research Group
Transport Engineering and Logistics
Issue number
7
Volume number
23
Pages (from-to)
8770-8781
Reuse Rights

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Abstract

This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tracking control of uncertain autonomous surface vehicles with collision avoidance. The proposed control algorithm combines a conventional control method with reinforcement learning to enhance control accuracy and intelligence. In the proposed control design, a nominal system is considered for the design of a baseline tracking controller using a conventional control approach. The nominal system also defines the desired behaviour of uncertain autonomous surface vehicles in an obstacle-free environment. Thanks to reinforcement learning, the overall tracking controller is capable of compensating for model uncertainties and achieving collision avoidance at the same time in environments with obstacles. In comparison to traditional deep reinforcement learning methods, our proposed learning-based control can provide stability guarantees and better sample efficiency. We demonstrate the performance of the new algorithm using an example of autonomous surface vehicles.

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