Decentralized concurrent learning with coordinated momentum and restart

IF 2.1 3区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Systems & Control Letters Pub Date : 2024-09-21 DOI:10.1016/j.sysconle.2024.105931
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Abstract

This paper studies the stability and convergence properties of a class of multi-agent concurrent learning (CL) algorithms with momentum and restart. Such algorithms can be integrated as part of the estimation pipelines of data-enabled multi-agent control systems to enhance transient performance while maintaining stability guarantees. However, characterizing restarting policies that yield stable behaviors in decentralized CL systems, especially when the network topology of the communication graph is directed, has remained an open problem. In this paper, we provide an answer to this problem by synergistically leveraging tools from graph theory and hybrid dynamical systems theory. Specifically, we show that under a cooperative richness condition on the overall multi-agent system’s data, and by employing coordinated periodic restart with a frequency that is tempered by the level of asymmetry of the communication graph, the resulting decentralized dynamics exhibit robust asymptotic stability properties, characterized in terms of input-to-state stability bounds, and also achieve a desirable transient performance. To demonstrate the practical implications of the theoretical findings, three applications are also presented: cooperative parameter estimation over networks with private data sets, cooperative model-reference adaptive control, and cooperative data-enabled feedback optimization of nonlinear plants.
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具有协调动力和重启功能的分散式并发学习
本文研究了一类具有动量和重启功能的多代理并发学习(CL)算法的稳定性和收敛性。这类算法可以集成到数据化多代理控制系统的估算管道中,以提高瞬态性能,同时保证稳定性。然而,在分散式学习系统中,尤其是当通信图的网络拓扑结构是有向的时候,如何描述能产生稳定行为的重启策略,仍然是一个未决问题。在本文中,我们通过协同利用图论和混合动力系统理论的工具,为这一问题提供了答案。具体来说,我们证明了在整个多代理系统数据的合作丰富性条件下,通过采用协调的周期性重启,并根据通信图的不对称程度调节重启的频率,所产生的分散动力学表现出稳健的渐进稳定性(以输入到状态的稳定性边界为特征),同时还实现了理想的瞬态性能。为了证明理论发现的实际意义,本文还介绍了三个应用:具有私有数据集的网络合作参数估计、合作模型参考自适应控制以及非线性植物的合作数据反馈优化。
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来源期刊
Systems & Control Letters
Systems & Control Letters 工程技术-运筹学与管理科学
CiteScore
4.60
自引率
3.80%
发文量
144
审稿时长
6 months
期刊介绍: Founded in 1981 by two of the pre-eminent control theorists, Roger Brockett and Jan Willems, Systems & Control Letters is one of the leading journals in the field of control theory. The aim of the journal is to allow dissemination of relatively concise but highly original contributions whose high initial quality enables a relatively rapid review process. All aspects of the fields of systems and control are covered, especially mathematically-oriented and theoretical papers that have a clear relevance to engineering, physical and biological sciences, and even economics. Application-oriented papers with sophisticated and rigorous mathematical elements are also welcome.
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