LEARNING
Tracking control for robot arm using neural network with simultaneous perturbation learning rule
Hidenori Onishi, Yutaka Maeda
- 发表年份
- 2003
- 引用次数
- 2
摘要
We report tracking control for a robot arm using a neuro-controller. We adopt the simultaneous perturbation learning rule for the neuro-controller. The learning rule requires only two values of an error function. The twice operation yields modifying quantities of the weights in the network. Thus the neuro-controller can learn an inverse of robot kinematics. Some simulation results are shown.
关键词
Control theory (sociology)Computer scienceRobotKinematicsLearning ruleArtificial neural networkTracking errorRobotic armPerturbation (astronomy)Robot control
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