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MANIPULATION

Adaptive Learning Control for Cooperation of Two Robots Manipulating a Rigid Object with Model Uncertainties

Dong Sun, F Xiaolun Shi Yunhui Liu

Year
1996
Citations
4

Abstract

SUMMARY In this paper, an adaptive learning (A-L) control scheme is proposed for cooperation of two manipulators handling a rigid object with model uncertainties. For robots performing repetitive cooperating tasks, their operations are decomposed into two modes: the single operational mode and the repetitive operational mode on which the A-L controller is based. In the single operational mode, the controller is a learning based adaptive controller in which the robotic parameters are updated by using the information of the previous operation. In the repetitive operational mode, the controller is a model-based iterative learning controller. The advantages of the A-L controller lie in the fact that it can improve the transient performance as robots repeat operations at a high speed of the learning convergence. Simulation results ascertain that the A-L algorithm is effective in controlling two cooperated robots with model uncertainties.

Keywords

Controller (irrigation)RobotConvergence (economics)Iterative learning controlMode (computer interface)Computer scienceObject (grammar)Control theory (sociology)Scheme (mathematics)Control engineering

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