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Optimality of Norm-Optimal Iterative Learning Control Among Linear Time Invariant Iterative Learning Control Laws in Terms of Balancing Robustness and Performance

机译:在平衡鲁棒性和性能方面,线性时间不变迭代学习法中规范迭代学习控制的最优性

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摘要

This paper presents a frequency domain analysis toward the robustness, convergence speed, and steady-state error for general linear time invariant (LTI) iterative learning control (ILC) for single-input-single-output (SISO) LTI systems and demonstrates the optimality of norm-optimal iterative learning control (NO-ILC) in terms of balancing the tradeoff between robustness, convergence speed, and steady-state error. The key part of designing LTI ILC updating laws is to choose the Q-filter and learning gain to achieve the desired robustness and performance, i.e., convergence speed and steady-state error. An analytical equation that characterizes these three terms for NO-ILC has been previously presented in the literature. For general LTI ILC updating laws, however, this relationship is still unknown. Adopting a frequency domain analysis approach, this paper characterizes this relationship for LTI ILC updating laws and, subsequently, demonstrates the optimality of NO-ILC in terms of balancing the tradeoff between robustness, convergence speed, and steady-state error.
机译:本文介绍了对单输入单输出(SISO)LTI系统的一般线性时间不变(LTI)迭代学习控制(ILC)的鲁棒性,收敛速度和稳态误差的频域分析,并展示了最优性常态最佳迭代学习控制(No-ILC)在平衡鲁棒性,收敛速度和稳态误差之间的折衷方面。设计LTI ILC更新定律的关键部分是选择Q滤波器和学习增益,以实现所需的鲁棒性和性能,即收敛速度和稳态误差。在文献中提出了一种描述No-ILC术语的分析方程。然而,对于一般LTI ILC更新法律,这种关系仍然是未知的。采用频域分析方法,本文表征了LTI ILC更新法律的这种关系,随后,在平衡鲁棒性,收敛速度和稳态误差之间的权衡方面,展示了No-ILC的最优性。

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