LOCOMOTION
Phase-indexed ILC for control of underactuated walking robots
Felix H. Kong, A. Mounir Boudali, Ian R. Manchester
- 发表年份
- 2015
- 引用次数
- 15
摘要
We propose a method for learning the nominal control input for virtual-constraints-based walking robots. The key problem in applying iterative learning control (ILC) to these systems is that the iterations are only approximately periodic. We develop a modified form of ILC that indexes previous iterations by a phase variable (a function of the state variables) rather than time. We show in experiments that the proposed method outperforms time-indexed ILC and a hybrid “resetting” form of ILC in terms of tracking error reduction and stability.
关键词
Iterative learning controlControl theory (sociology)UnderactuationRobotComputer scienceStability (learning theory)Tracking errorVariable (mathematics)TrajectoryKey (lock)
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