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MODEL REFERENCE ADAPTIVE CONTROL FOR MOBILE ROBOTS IN TRAJECTORY TRACKING USING RADIAL BASIS FUNCTION NEURAL NETWORKS

Francisco Rossomando, Carlos Soria, Diego Patiño, Ricardo Carelli

Year
2011
Citations
10

Abstract

This paper propose an Model Reference Adaptive Control (MRAC) for mobile robots for which stability conditions and performance evaluation are given. The proposed control structure combines a feedback linearization model, based on a kinematics nominal model, and a direct neural network-based adaptive dynamics control. The architecture of the dynamic control is based on radial basis functions neural networks (RBF-NN) to construct the MRAC controller. The parameters of the adaptive dynamic controller are adjusted according to a law derived using Lyapunov stability theory and the centers of the RBF are adapted using the supervised algorithm. The resulting MRAC controller is efficient and robust in the sense that it succeeds to achieve a good tracking performance with a small computational effort. Stability result for the adaptive neuro-control system is given. It is proved that control errors are ultimately bounded as a function of the approximation error of the RBF-NN. Experimental results showing the practical feasibility and performance of the proposed approach to mobile robotics are given.

Keywords

Control theory (sociology)Radial basis functionComputer scienceController (irrigation)Adaptive controlArtificial neural networkLyapunov functionLyapunov stabilityStability (learning theory)Mobile robot

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