Deep Reinforcement Learning Based Tracking Control of an Autonomous Surface Vessel in Natural Waters

02/16/2023
by   Wei Wang, et al.
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Accurate control of autonomous marine robots still poses challenges due to the complex dynamics of the environment. In this paper, we propose a Deep Reinforcement Learning (DRL) approach to train a controller for autonomous surface vessel (ASV) trajectory tracking and compare its performance with an advanced nonlinear model predictive controller (NMPC) in real environments. Taking into account environmental disturbances (e.g., wind, waves, and currents), noisy measurements, and non-ideal actuators presented in the physical ASV, several effective reward functions for DRL tracking control policies are carefully designed. The control policies were trained in a simulation environment with diverse tracking trajectories and disturbances. The performance of the DRL controller has been verified and compared with the NMPC in both simulations with model-based environmental disturbances and in natural waters. Simulations show that the DRL controller has 53.33 error than that of NMPC. Experimental results further show that, compared to NMPC, the DRL controller has 35.51 controllers offer better disturbance rejection in river environments than NMPC.

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