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Learning control for time-delay systems with iteration-varying uncertainty: a Smith predictor-based approach

机译:具有迭代不确定性的时滞系统的学习控制:基于史密斯预测变量的方法

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This study is devoted to the problem of robust iterative learning control (ILC) for time-delay systems (TDS) when the plants are subject to random iteration-varying uncertainties. Using the frequency-domain approach, an ILC scheme is considered within the Smith predictor-based feedback configuration. It shows that if the well-known robust performance condition is satisfied, then an updating law can be obtained directly to guarantee that the ILC process converges in the sense of expectation. In particular, if the unit function is selected as the performance weight, then the expected tracking error converges monotonically to zero as a function of iteration. Two numerical examples are presented to illustrate the effectiveness of the Smith predictor-based ILC.
机译:这项研究致力于时滞系统(TDS)的鲁棒迭代学习控制(ILC)的问题,当工厂具有随机反复变化的不确定性时。使用频域方法,在基于Smith预测变量的反馈配置中考虑了ILC方案。它表明,如果满足众所周知的鲁棒性能条件,则可以直接获得更新律,以确保ILC过程在期望的意义上收敛。特别地,如果选择单位函数作为性能权重,则预期的跟踪误差将根据迭代函数单调收敛为零。给出两个数值示例,以说明基于Smith预测器的ILC的有效性。

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