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MANIPULATION

Learning Control of Robot Manipulators

Roberto Horowitz

Year
1993
Citations
177

Abstract

Learning control encompasses a class of control algorithms for programmable machines such as robots which attain, through an iterative process, the motor dexterity that enables the machine to execute complex tasks. In this paper we discuss the use of function identification and adaptive control algorithms in learning controllers for robot manipulators. In particular, we discuss the similarities and differences between betterment learning schemes, repetitive controllers and adaptive learning schemes based on integral transforms. The stability and convergence properties of adaptive learning algorithms based on integral transforms are highlighted and experimental results illustrating some of these properties are presented.

Keywords

Iterative learning controlComputer scienceAdaptive controlRobotStability (learning theory)Convergence (economics)Process (computing)Robot learningControl engineeringArtificial intelligence

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