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Higher-order iterative learning control law design using linear repetitive process theory: convergence and robustness

机译:使用线性重复过程理论的高阶迭代学习控制律设计:收敛性和鲁棒性

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摘要

Iterative learning control has been developed for processes or systems that complete the same finite duration task over and over again. The mode of operation is that after each execution is complete the system resets to the starting location, the next execution is completed and so on. Each execution is known as a trial and its duration is termed the trial length. Once each trial is complete the information generated is available for use in computing the control input for the next trial. This paper uses the repetitive process setting to develop new results on the design of higher-order ILC control laws for discrete dynamics. The new results include conditions that guarantee error convergence and design in the presence of model uncertainty.
机译:已经为反复完成相同有限持续时间任务的过程或系统开发了迭代学习控制。操作模式是,每次执行完成后,系统都会重置到起始位置,下一次执行完成,依此类推。每次执行称为审判,其持续时间称为审判时长。每个试验完成后,生成的信息可用于计算下一个试验的控制输入。本文使用重复过程设置为离散动力学的高阶ILC控制定律设计开发新结果。新的结果包括在模型不确定的情况下保证误差收敛和设计的条件。

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