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Autonomous underwater vehicle control using reinforcement learning policy search methods

Andrés El-Fakdi, Marc Carreras, Narcís Palomeras, Pere Ridao

Year
2005
Citations
14

Abstract

Autonomous underwater vehicles (AUV) represent a challenging control problem with complex, noisy, dynamics. Nowadays, not only the continuous scientific advances in underwater robotics but the increasing number of subsea missions and its complexity ask for an automatization of submarine processes. This paper proposes a high-level control system for solving the action selection problem of an autonomous robot. The system is characterized by the use of reinforcement learning direct policy search methods (RLDPS) for learning the internal state/action mapping of some behaviors. We demonstrate its feasibility with simulated experiments using the model of our underwater robot URIS in a target following task.

Keywords

Reinforcement learningSubseaUnderwaterComputer scienceAction selectionArtificial intelligenceTask (project management)SubmarineAction (physics)Robot

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