迭代学习控制
计算机科学
机械手
自适应控制
控制(管理)
人工智能
控制工程
控制理论(社会学)
工程类
作者
Yu Dou,Emmanuel Prempain,Lanlan Su
标识
DOI:10.1109/control60310.2024.10531843
摘要
A refined control scheme is presented to optimise the trajectory-tracking performance of robotic manipulators. This strategy integrates a linear feedback controller and a feedforward learning controller. The former mitigates unknown disturbances and desensitises the system to unidentified parameters, while the latter enhances tracking efficiency by incorporating past tracking errors. Traditionally, a fixed learning gain is used in the learning law to update the control input. However, we modify the learning law in this study by applying an adaptive learning gain. Our simulations on a robotic manipulator demonstrate that the adaptive ILC algorithm surpasses the classical ILC algorithm concerning convergence speed. These findings highlight the advantages of our approach, showcasing its extensive applicability in trajectory tracking.
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