Iterative learning control for consensus of second-order multi-agent systems with interval uncertain topologies

IF 1.6 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
Liming Wang;Guoshan Zhang
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引用次数: 1

Abstract

This paper is devoted to the robust consensus tracking problem of second-order nonlinear multi-agent systems (MASs) with the interval uncertain topologies. For the second-order MASs including one leader agent and multiple follower agents, a control protocol is proposed by combining the iterative learning control scheme with the sliding mode control method. By analyzing the convergence of sliding mode variables, the consensus conditions including the unknown eigenvalues and the undetermined weight coefficient are obtained. In order to deal with the difficulties of weight coefficient design caused by the unknown eigenvalues of graphs, a min-max optimization problem is formulated based on the fastest convergence of the λ-norm of sliding mode variables, then the optimal weight coefficient is obtained by solving the min-max optimization problem. Moreover, for the undirected and directed interval uncertain graphs, two algorithms about the optimal weight coefficients are proposed, respectively. Finally, three numerical simulation examples are presented to demonstrate the effectiveness of the proposed methods.
具有区间不确定拓扑的二阶多智能体系统一致性的迭代学习控制
研究具有区间不确定拓扑的二阶非线性多智能体系统的鲁棒一致性跟踪问题。对于包含一个前导agent和多个跟随agent的二阶MAS,将迭代学习控制方案与滑模控制方法相结合,提出了一种控制协议。通过分析滑模变量的收敛性,得到了包含未知特征值和未知权系数的一致性条件。为了解决图的特征值未知给权重系数设计带来的困难,基于滑模变量的λ-范数的最快收敛性,提出了一个最小-最大优化问题,并通过求解该问题得到了最优权重系数。此外,对于无向和有向区间不确定图,分别提出了两种关于最优权系数的算法。最后,通过三个数值模拟实例验证了所提方法的有效性。
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来源期刊
CiteScore
3.30
自引率
6.70%
发文量
33
审稿时长
>12 weeks
期刊介绍: The Journal is to provide an outlet for papers which are original and of high quality in mathematical control theory, systems theory, and applied information sciences. Short papers and mathematical correspondence or technical notes will be welcome, although the primary function of the journal is to publish papers of substantial length and coverage. The emphasis will be upon relevance, originality and clarify of presentation, although timeliness may well be an important feature in acceptable papers. Speculative papers that suggest new avenues for research or potential solutions to unsolved problems of control and information theory will be particularly welcome. Specific application papers will not normally be within the remit of the journal. Applications that illustrate techniques or theories will be acceptable. A prime function of the journal is to encourage the interplay between control and information theory and other mathematical sciences. All submitted papers will be judged on their merits by at least two referees and a full paper report will be available to the intending authors. Submitted articles will in general be published in an issue within six months of submission. Papers should not have previously published, nor should they be undes consideration for publication in another journal. This Journal takes publication ethics very seriously. If misconduct is found or suspected after the manuscript is published, the journal will investigate the matter and this may result in the article subsequently being retracted.
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