MANIPULATION
Multi-layer neural networks for robot control
Farzad Pourboghrat
- 发表年份
- 1989
- 引用次数
- 3
- 访问权限
- 开放获取
摘要
Two neural learning controller designs for manipulators are considered. The first design is based on a neural inverse-dynamics system. The second is the combination of the first one with a neural adaptive state feedback system. Both types of controllers enable the manipulator to perform any given task very well after a period of training and to do other untrained tasks satisfactorily. The second design also enables the manipulator to compensate for unpredictable perturbations.
关键词
Artificial neural networkComputer scienceControl theory (sociology)Task (project management)Control engineeringAdaptive controlInverse dynamicsRobotLayer (electronics)Control (management)
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