Event-Triggered Model-Free Neuroadaptive Iterative Learning Control via Controller Dynamic Linearization and Application to Impact Load Frequency Regulation

IF 3.2 3区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Rui Hou, Li Jia, Xuhui Bu, Chen Peng
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引用次数: 0

Abstract

This paper investigates the problem of energy-efficient learning control for unknown repetitive nonlinear discrete-time systems. Traditional event-triggered model-free iterative learning control (ILC) relies on data-based approximation models to construct the controller optimization criterion, which is susceptible to model identification errors and the curse of dimensionality. To mitigate this limitation, we propose a novel direct-type high-order ILC algorithm that includes online learning capabilities. The control output is derived by directly applying iterative dynamic linearization to an ideal virtual nonlinear learning controller, with learning gains being automatically calibrated in real-time using a radial basis function neural network (RBFNN). Furthermore, this strategy integrates an adaptive, relative threshold-based, event-triggered protocol that is dynamically updated based on the trained neural weights and tracking errors. This approach offers significant advantages over existing strategies. Theoretical proofs demonstrate the convergence of learning gains and tracking errors, and the theoretical results are applied to the frequency regulation of active power impact loads on an experimental platform for steel industry microgrids, validating the effectiveness and applicability of our scheme.

通过控制器动态线性化实现事件触发式无模型神经自适应迭代学习控制,并将其应用于影响负荷频率的调节
研究了未知重复非线性离散系统的节能学习控制问题。传统的事件触发无模型迭代学习控制(ILC)依赖于基于数据的近似模型来构建控制器优化准则,容易受到模型辨识误差和维数限制的影响。为了减轻这一限制,我们提出了一种新的直接型高阶ILC算法,该算法包括在线学习功能。通过对理想的虚拟非线性学习控制器直接应用迭代动态线性化来获得控制输出,并使用径向基函数神经网络(RBFNN)实时自动校准学习增益。此外,该策略集成了一个自适应的、基于相对阈值的、事件触发的协议,该协议根据训练的神经权重和跟踪误差动态更新。与现有的策略相比,这种方法具有显著的优势。理论证明了学习增益和跟踪误差的收敛性,并将理论结果应用于钢铁工业微电网有功冲击负荷的频率调节实验平台,验证了该方案的有效性和适用性。
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来源期刊
International Journal of Robust and Nonlinear Control
International Journal of Robust and Nonlinear Control 工程技术-工程:电子与电气
CiteScore
6.70
自引率
20.50%
发文量
505
审稿时长
2.7 months
期刊介绍: Papers that do not include an element of robust or nonlinear control and estimation theory will not be considered by the journal, and all papers will be expected to include significant novel content. The focus of the journal is on model based control design approaches rather than heuristic or rule based methods. Papers on neural networks will have to be of exceptional novelty to be considered for the journal.
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