A distributed MPC approach — Local agents decide network convergence

IF 1.8 Q3 AUTOMATION & CONTROL SYSTEMS
Rawand E. Jalal , Bryan P. Rasmussen
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Abstract

In an earlier work, the Limited Communication-Distributed Model Predictive Control (LC-DMPC) scheme for controlling networks with dynamically coupled and locally constrained linear systems is presented. The scheme has an iterative and cooperative structure in which the systemwide optimum point is achieved by the distributed controllers requiring only coupled agents to cooperate. For assessing the network convergence, it is essential to possess complete information pertaining to all subsystems which has to be available to a central monitor. The current work endeavors to investigate this challenging point by distributing the network convergence within the local agents. With the new version of the algorithm, the convergence of the network is now guaranteed through the dissipativity of the local information exchange dynamics in the iteration domain. This is accomplished by introducing a set of free design variables into the distributed problems which are utilized by the agents to fulfill a simple local LMI problem employing local information only. Despite that the new approach is eliminating the necessity for a centralized observer, it may result in suboptimal local solutions. This is because the convergence of the information sharing loop between the coupled subsystems is insured by the small gain theorem. The new algorithm exhibits enhanced modularity due to the novel introduced convergence condition, implying that any updates to a subsystem physicals or design parameters do not require corresponding updates to neighboring subsystems or the network. The presented concepts are demonstrated by simulating a network of eight interconnected tanks.

分布式 MPC 方法 - 本地代理决定网络收敛
在早先的一项研究中,提出了有限通信分布式模型预测控制(LC-DMPC)方案,用于控制具有动态耦合和局部约束线性系统的网络。该方案具有迭代和合作结构,其中分布式控制器只需耦合代理合作即可实现全系统最优点。为了评估网络收敛性,必须掌握所有子系统的完整信息,这些信息必须提供给中央监控器。当前的工作就是通过将网络收敛分配给本地代理,来研究这一具有挑战性的问题。在新版算法中,通过迭代域中本地信息交换动态的分散性,网络的收敛得到了保证。这是通过在分布式问题中引入一组自由设计变量来实现的,代理利用这些变量来完成一个仅使用本地信息的简单本地 LMI 问题。尽管这种新方法消除了集中式观测器的必要性,但它可能会导致次优的局部解决方案。这是因为耦合子系统之间的信息共享回路的收敛性是由小增益定理保证的。由于引入了新的收敛条件,新算法显示出更强的模块性,这意味着对子系统物理或设计参数的任何更新都不需要对相邻子系统或网络进行相应的更新。通过模拟由八个相互连接的水箱组成的网络,演示了所提出的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IFAC Journal of Systems and Control
IFAC Journal of Systems and Control AUTOMATION & CONTROL SYSTEMS-
CiteScore
3.70
自引率
5.30%
发文量
17
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