Tan Haoran, Wang Yaonan, Wu Min, Huang Zhiwu, Miao Zhiqiang
IEEE Trans Neural Netw Learn Syst. 2022 Aug;33(8):3461-3473. doi: 10.1109/TNNLS.2021.3053016. Epub 2022 Aug 3.
This article studies the group coordinated control problem for distributed nonlinear multiagent systems (MASs) with unknown dynamics. Cloud computing systems are employed to divide agents into groups and establish networked distributed multigroup-agent systems (ND-MGASs). To achieve the coordination of all agents and actively compensate for communication network delays, a novel networked model-free adaptive predictive control (NMFAPC) strategy combining networked predictive control theory with model-free adaptive control method is proposed. In the NMFAPC strategy, each nonlinear agent is described as a time-varying data model, which only relies on the system measurement data for adaptive learning. To analyze the system performance, a simultaneous analysis method for stability and consensus of ND-MGASs is presented. Finally, the effectiveness and practicability of the proposed NMFAPC strategy are verified by numerical simulations and experimental examples. The achievement also provides a solution for the coordination of large-scale nonlinear MASs.
本文研究了具有未知动力学的分布式非线性多智能体系统(MASs)的群体协调控制问题。利用云计算系统将智能体划分为不同群体,并建立网络化分布式多群体智能体系统(ND-MGASs)。为实现所有智能体的协调并积极补偿通信网络延迟,提出了一种将网络化预测控制理论与无模型自适应控制方法相结合的新型网络化无模型自适应预测控制(NMFAPC)策略。在NMFAPC策略中,每个非线性智能体被描述为一个时变数据模型,该模型仅依赖系统测量数据进行自适应学习。为分析系统性能,给出了一种针对ND-MGASs稳定性和一致性的同步分析方法。最后,通过数值仿真和实验示例验证了所提NMFAPC策略的有效性和实用性。该成果也为大规模非线性MASs的协调提供了一种解决方案。