Distributed data driven control for multi-agent consensus with unknown system dynamics

Author(s):  
Wenyan Tang ◽  
Jia Wu ◽  
Ning Liu ◽  
Haihong Mo
Author(s):  
Huarong Zhao ◽  
Li Peng ◽  
Peiliang Wu ◽  
Hongnian Yu

This article proposes a novel distributed data-driven bipartite consensus tracking scheme for bipartite consensus tracking problems of multi-agent systems with bounded disturbances and coopetition networks. The proposed scheme only uses the input/output data of each agent without requiring the agents’ dynamics. We obtain the equivalent dynamic linearization data model for a controlled plant using the dynamic linearization technique based on the pseudo partial derivative. Considering the cooperative and competitive interactions among agents, the proposed method ensures that agents with adversarial relationships implement bipartite consensus tracking tasks even if only a subset of agents can access the information from the virtual leader. Moreover, the strict proof process of convergence properties reveals that the tracking error coverages to a small range around the origin. We also establish a set of software and hardware platform to demonstrate the effectiveness of the proposed distributed data-driven bipartite consensus tracking method.


Sign in / Sign up

Export Citation Format

Share Document