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New results on higher-order iterative learning control for discrete linear systems

机译:离散线性系统高阶迭代学习控制的新结果

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Iterative learning control is applicable to systems that make sweeps or passes through dynamics defined over a finite duration. Once each pass is complete all information generated as its dynamics evolve are available for use in designing the control action to be applied on the next sweep. The design problem is to construct a sequence of control inputs to enforce convergence to a specified reference of the sequence formed from the output produced on each pass and in this form of control the input is that used on the previous pass plus a correction term computed using previous pass output. A critical feature is the ability to use information that would be non-causal in the standard setting provided it is generated on a previous pass. Higher order iterative learning control uses information from more than the previous pass and is the subject of this paper where the generalized KalmanYakubovich-Popov lemma is used to develop new designs.
机译:迭代学习控制适用于在有限时间内进行扫描或通过定义的动力学的系统。一旦每遍完成,随着其动态变化而生成的所有信息都可用于设计要在下一次扫描中应用的控制动作。设计问题是构造一个控制输入序列,以强制收敛到由每次通过生成的输出形成的序列的指定参考,在这种控制形式下,输入是前一次通过的输入加上使用前一遍输出。一项关键功能是能够使用标准设置中无因果的信息,前提是该信息是在前一遍生成的。高阶迭代学习控制使用的信息比上一遍还多,这是本文的主题,其中使用广义KalmanYakubovich-Popov引理开发新设计。

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