Home /Research /Backstepping Adaptive Iterative Learning Control for Robotic Systems
LEARNING

Backstepping Adaptive Iterative Learning Control for Robotic Systems

Ying Chung Wang, Chiang Ju Chien, Chi Nan Chuang

Year
2013
Citations
2

Abstract

A backstepping adaptive iterative learning control for robotic systems with repetitive tasks is proposed in this paper. The backstepping-like procedure is introduced to design the AILC. A fuzzy neural network is applied for compensation of the unknown certainty equivalent controller. Using a Lyapunov like analysis, we show that the adjustable parameters and internal signals remain bounded, the tracking error will asymptotically converge to zero as iteration goes to infinity.

Keywords

BacksteppingControl theory (sociology)Iterative learning controlBounded functionController (irrigation)Tracking errorCompensation (psychology)Computer scienceLyapunov functionAdaptive control

Related papers

Browse all LEARNING papers