Dual Adaptive Control for Trajectory Tracking of Mobile Robots

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Presentation transcript:

Dual Adaptive Control for Trajectory Tracking of Mobile Robots Marvin K. Bugeja and Simon G. Fabri Dept. of Electrical Power & Control Engineering, University of Malta, Malta Robot Trajectory A novel dual adaptive dynamic controller for nonholonomic mobile robots is proposed A Gaussian radial basis function neural network learns the robot dynamics in real-time The controller is developed in discrete time and accounts for the estimates’ uncertainty Highly improved tracking performance in the face of dynamic uncertainty and noise Trajectory tracking in the face of dynamic uncertainty and noise via dual adaptive control