基于库的范数最优迭代学习控制

James Reed, Maxwell J. Wu, K. Barton, C. Vermillion, K. Mishra
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引用次数: 0

摘要

本文提出了一种新的迭代学习控制(ILC)方法,称为基于库的规范-最优ILC,它最优地解释了可测量干扰和植物参数从一次迭代到下一次迭代的变化。在这个公式中,先前的迭代变化的扰动和/或对象参数,以及相应的控制和误差序列,被智能地保存在一个动态进化的库中。然后在每次迭代时引用库,以便根据优化度量,在最相关的先前迭代上建立新的控制序列。与文献中所追求的基于库的有限数量的ILC方法相比,本工作(i)选择可证明的最优插值权重,(ii)提出从空库开始并在库变得太大时智能截断库的方法,以及(iii)展示收敛到最优性能值。为了证明我们新方法的有效性,我们在微机器人沉积系统的线性时变模型上模拟了基于库的规范最优ILC方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Library-Based Norm-Optimal Iterative Learning Control
This paper presents a new iterative learning control (ILC) methodology, termed library-based norm-optimal ILC, which optimally accounts for variations in measurable disturbances and plant parameters from one iteration to the next. In this formulation, previous iteration-varying disturbance and/or plant parameters, along with the corresponding control and error sequences, are intelligently maintained in a dynamically evolving library. The library is then referenced at each iteration, in order to base the new control sequence on the most relevant prior iterations, according to an optimization metric. In contrast with the limited number of library-based ILC methodologies pursued in the literature, the present work (i) selects provably optimal interpolation weights, (ii) presents methods for starting with an empty library and intelligently truncating the library when it becomes too large, and (iii) demonstrates convergence to an optimal performance value. To demonstrate the effectiveness of our new methodology, we simulate our library-based norm-optimal ILC method on a linear time-varying model of a micro-robotic deposition system.
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