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Cooperative Tracking Control of Nonlinear Multiagent Systems Using Self-Structuring Neural Networks

Gang Chen, Yongduan Song

发表年份
2014
引用次数
93

摘要

This paper considers a cooperative tracking problem for a group of nonlinear multiagent systems under a directed graph that characterizes the interaction between the leader and the followers. All the networked systems can have different dynamics and all the dynamics are unknown. A neural network (NN) with flexible structure is used to approximate the unknown dynamics at each node. Considering that the leader is a neighbor of only a subset of the followers and the followers have only local interactions, we introduce a cooperative dynamic observer at each node to overcome the deficiency of the traditional tracking control strategies. An observer-based cooperative controller design framework is proposed with the aid of graph tools, Lyapunov-based design method, self-structuring NN, and separation principle. It is proved that each agent can follow the active leader only if the communication graph contains a spanning tree. Simulation results on networked robots are provided to show the effectiveness of the proposed control algorithms.

关键词

Computer scienceMulti-agent systemNonlinear systemStructuringGraphArtificial neural networkNode (physics)Lyapunov functionRobotController (irrigation)

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