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Convergence Conditions for Solving Robust Iterative Learning Control Problems Under Nonrepetitive Model Uncertainties.

作者信息

Meng Deyuan

出版信息

IEEE Trans Neural Netw Learn Syst. 2019 Jun;30(6):1908-1919. doi: 10.1109/TNNLS.2018.2874977. Epub 2018 Nov 5.

Abstract

Learning from saved measurement and control data to refine the performance of output tracking is the core feature of iterative learning control (ILC). Even though this implementation process of ILC does not need any model knowledge, ILC typically requires the strict repetitiveness of the control systems, especially on the plant models of them. The questions of interest in this paper are: 1) whether and how can robust ILC problems be solved with respect to the nonrepetitive (or iteration-dependent) model uncertainties and 2) can convergence conditions be developed with the effective contraction mapping (CM)-based approach to ILC? The answers to these questions are affirmative, and the CM-based approach is applicable to robust ILC that accommodates certain nonrepetitive uncertainties, especially in the plant models. In particular, an H -norm condition is proposed to ensure the robust ILC convergence, which can be solved to determine learning gain matrices. Simulation tests are performed to illustrate the validity of our presented H -based analysis results.

摘要

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