Abstract
This paper presents an optimal trajectory tracking control algorithm for autonomous surface vessels (ASVs) using data-driven reinforcement learning (RL) to address challenges arising from model uncertainties and time-varying external disturbances in complex marine environments. To ensure robust performance under these conditions, we first employ the
Keywords
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