Multi-ASV Coordinated Tracking With Unknown Dynamics and Input Underactuation via Model-Reference Reinforcement Learning Control — Wenbo Hu (2022) | RDL Network
Multi-ASV Coordinated Tracking With Unknown Dynamics and Input Underactuation via Model-Reference Reinforcement Learning Control
IEEE Transactions on Cybernetics 53(10): 6588-6597
Article 2022 English
Authors
WH
Wenbo Hu
FC
Fei Chen
LX
Linying Xiang
Abstract
1 min read
This article studies coordinated tracking of underactuated and uncertain autonomous surface vehicles (ASVs) via model-reference reinforcement learning control. It considered how model-reference control can be incorporated with reinforcement learning to address the challenges caused by model uncertainties and input underactuation, and how existing results may be employed to realize adaptive communication amongst ASVs. It is demonstrated that the proposed algorithm has a better performance over baseline control and effectively improves the training efficiency over reinforcement learning.
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