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A survey on iterative learning control with randomly varying trial lengths: Model, synthesis, and convergence analysis

机译:随机变化的试验长度迭代学习控制调查:模型,合成和收敛分析

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摘要

The nonuniform trial length problem, which causes information dropout in learning, is very common in various control systems such as robotics and motion control systems. This paper presents a comprehensive survey of recent progress on iterative learning control with randomly varying trial lengths. Related works are reviewed in three dimensions: model, synthesis, and convergence analysis. Specifically, we first present both random and deterministic models of varying trial lengths to provide a mathematical description and to reveal the effects and difficulties of nonuniform trial lengths. Then, control synthesis focusing on compensation mechanisms for the missing information and key ideas in designing control algorithms are summarized. Lastly, four representative convergence analysis approaches are elaborated, including deterministic analysis approach, switching system approach, contraction mapping approach, and composite energy function approach. Promising research directions and open issues in this area are also discussed. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在诸如机器人和运动控制系统之类的各种控制系统中,导致信息丢失的非均匀试验长度问题非常常见。本文介绍了随机不同的试验长度的迭代学习控制近期进展的全面调查。相关工程三维审查:模型,合成和收敛分析。具体地,我们首先介绍不同的试验长度的随机和确定性模型,以提供数学描述,并揭示非均匀试验长度的效果和困难。然后,总结了对缺少信息的补偿机制的控制合成,并概述了设计控制算法中的缺失信息和关键思想。最后,详细说明了四种代表性收敛性分析方法,包括确定性分析方法,切换系统方法,收缩映射方法和复合能量函数方法。还讨论了这一领域的有前途的研究方向和开放问题。 (c)2019 Elsevier Ltd.保留所有权利。

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