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基于容许行为的数据驱动鲁棒预测迭代学习控制

Data-Based Approach to Robust Predictive Iterative Learning Control via Admissible Behaviors

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2025
被引 0
ABS 3

中文导读

针对线性时变系统,提出一种基于数据的行为方法构建鲁棒预测迭代学习控制框架,无需模型信息即可实现快速收敛的鲁棒跟踪,并在永磁同步电机上验证有效性。

Abstract

This article is dedicated to developing a robust data-based predictive iterative learning control (PILC) framework for linear time-varying (LTV) systems via a behavioral approach. By investigating the properties of the admissible behaviors of LTV systems, an input/output representation is constructed from data, based upon which a data-based trackability criterion is developed for iterative learning control (ILC) systems. Moreover, in the presence of measurement noises, a robust PILC framework is constructed from noisy data through adopting a slack-variable-based strategy. Consequently, even in the absence of model information, ILC systems can achieve robust tracking performance with a faster convergence speed of tracking errors. To validate the effectiveness of the proposed PILC framework, simulation tests are performed on a permanent magnet synchronous motor (PMSM).

迭代学习控制鲁棒控制线性时变系统数据驱动控制