可扩展性
计算机科学
分布式计算
多智能体系统
协议(科学)
约束(计算机辅助设计)
共识
模型预测控制
功能(生物学)
数学优化
控制(管理)
人工智能
工程类
数学
进化生物学
机械工程
生物
数据库
病理
替代医学
医学
作者
Henglai Wei,Bin-Bin Hu,Yan Wang,Chen Lv
标识
DOI:10.1109/tii.2023.3342364
摘要
This article explores the challenge of achieving scalable and constrained consensus in general linear multiagent systems (MASs), where agents can occasionally join and leave the network. Two distributed model predictive control (DMPC)-based consensus methods are developed to tackle the scalability, performance, and constraint challenges. The first approach uses an innovative online DMPC optimization that integrates with a predesigned scalable consensus protocol, ensuring constraint satisfaction while achieving scalable consensus. The second method leverages tracking DMPC, enabling each agent to adhere to a locally evolving time-specific reference, which is continually updated through the utilization of the predicted state sequences from neighboring agents. Moreover, it is shown that the feasibility of the associated optimization problems can be recursively ensured with the suitably designed cost function and constraints. In addition, the scalable consensus property of the constrained MAS is guaranteed. Finally, the simulation results illustrate the effectiveness of the proposed algorithms.
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