Publication | Closed Access
Online discovery of AUV control policies to overcome thruster failures
19
Citations
18
References
2014
Year
Unknown Venue
Artificial IntelligenceEngineeringField RoboticsSpacecraft Attitude ControlIntelligent SystemsLearning ControlReal AuvGuidance SystemSystems EngineeringRobot LearningAuv Control PoliciesAutonomous Underwater VehiclesComputer SciencePropulsionAutonomous NavigationUnderwater RobotPersistent AutonomyUnderwater VehicleRobotics
We investigate methods to improve fault-tolerance of Autonomous Underwater Vehicles (AUVs) to increase their reliability and persistent autonomy. We propose a learning-based approach that is able to discover new control policies to overcome thruster failures as they happen. The proposed approach is a model-based direct policy search that learns on an on-board simulated model of the AUV. The model is adapted to a new condition when a fault is detected and isolated. Since the approach generates an optimal trajectory, the learned fault-tolerant policy is able to navigate the AUV towards a specified target with minimum cost. Finally, the learned policy is executed on the real robot in a closed-loop using the state feedback of the AUV. Unlike most existing methods which rely on the redundancy of thrusters, our approach is also applicable when the AUV becomes under-actuated in the presence of a fault. To validate the feasibility and efficiency of the presented approach, we evaluate it with three learning algorithms and three policy representations with increasing complexity. The proposed method is tested on a real AUV, Girona500.
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