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Stability Analysis of Visual Servoing with Sliding-mode Estimation and Neural Compensation  

Yu Wen (Departamento de Control Automatico)
Publication Information
International Journal of Control, Automation, and Systems / v.4, no.5, 2006 , pp. 545-558 More about this Journal
Abstract
In this paper, PD-like visual servoing is modified in two ways: a sliding-mode observer is applied to estimate the joint velocities, and a RBF neural network is used to compensate the unknown gravity and friction. Based on Lyapunov method and input--to-state stability theory, we prove that PD-like visual servoing with the sliding mode observer and the neuro compensator is robust stable when the gain of the PD controller is bigger than the upper bounds of the uncertainties. Several simulations are presented to support the theory results.
Keywords
Neural compensation; sliding-mode; stability; visual servoing;
Citations & Related Records

Times Cited By Web Of Science : 6  (Related Records In Web of Science)
Times Cited By SCOPUS : 7
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