Home /Research /Bettering operation of Robots by learning
OTHER

Bettering operation of Robots by learning

Suguru Arimoto, Sadao Kawamura, Fumio Miyazaki

Year
1984
Citations
3,445

Abstract

Abstract This article proposes a betterment process for the operation of a mechanical robot in a sense that it betters the next operation of a robot by using the previous operation's data. The process has an iterative learning structure such that the ( k + 1)th input to joint actuators consists of the k th input plus an error increment composed of the derivative difference between the k th motion trajectory and the given desired motion trajectory. The convergence of the process to the desired motion trajectory is assured under some reasonable conditions. Numerical results by computer simulation are presented to show the effectiveness of the proposed learning scheme.

Keywords

TrajectoryProcess (computing)Convergence (economics)RobotMotion (physics)Iterative learning controlControl theory (sociology)Scheme (mathematics)Computer scienceActuator

Related papers

Browse all OTHER papers