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Reinforcement Learning-Based Tracking Control of USVs in Varying Operational Conditions

Andreas B. Martinsen, Anastasios M. Lekkas, Sébastien Gros, Jon Arne Glomsrud, Tom Arne Pedersen

2020Frontiers in Robotics and AI41 citationsDOIOpen Access PDF

Abstract

We present a reinforcement learning-based (RL) control scheme for trajectory tracking of fully-actuated surface vessels. The proposed method learns online both a model-based feedforward controller, as well an optimizing feedback policy in order to follow a desired trajectory under the influence of environmental forces. The method's efficiency is evaluated via simulations and sea trials, with the unmanned surface vehicle (USV) ReVolt performing three different tracking tasks: The four corner DP test, straight-path tracking and curved-path tracking. The results demonstrate the method's ability to accomplish the control objectives and a good agreement between the performance achieved in the Revolt Digital Twin and the sea trials. Finally, we include an section with considerations about assurance for RL-based methods and where our approach stands in terms of the main challenges.

Topics & Concepts

Reinforcement learningComputer scienceTrajectoryTracking (education)Feed forwardSea trialController (irrigation)Path (computing)Control (management)Unmanned surface vehicleControl theory (sociology)Artificial intelligenceControl engineeringMarine engineeringEngineeringBiologyPsychologyAgronomyPedagogyPhysicsAstronomyProgramming languageReinforcement Learning in RoboticsAdaptive Dynamic Programming ControlAdaptive Control of Nonlinear Systems