Litcius/Paper detail

Event-Triggered Distributed Data-Driven Iterative Learning Bipartite Formation Control for Unknown Nonlinear Multiagent Systems

Huarong Zhao, Hongnian Yu, Peng Li

2022IEEE Transactions on Neural Networks and Learning Systems59 citationsDOIOpen Access PDF

Abstract

In this study, we investigate the event-triggering time-varying trajectory bipartite formation tracking problem for a class of unknown nonaffine nonlinear discrete-time multiagent systems (MASs). We first obtain an equivalent linear data model with a dynamic parameter of each agent by employing the pseudo-partial-derivative technique. Then, we propose an event-triggered distributed model-free adaptive iterative learning bipartite formation control scheme by using the input/output data of MASs without employing either the plant structure or any knowledge of the dynamics. To improve the flexibility and network communication resource utilization, we construct an observer-based event-triggering mechanism with a dead-zone operator. Furthermore, we rigorously prove the convergence of the proposed algorithm, where each agent's time-varying trajectory bipartite formation tracking error is reduced to a small range around zero. Finally, four simulation studies further validate the designed control approach's effectiveness, demonstrating that the proposed scheme is also suitable for the homogeneous MASs to achieve time-varying trajectory bipartite formation tracking.

Topics & Concepts

Iterative learning controlBipartite graphComputer scienceTrajectoryNonlinear systemConvergence (economics)Control theory (sociology)Observer (physics)Multi-agent systemArtificial intelligenceControl (management)Theoretical computer scienceGraphPhysicsAstronomyQuantum mechanicsEconomicsEconomic growthDistributed Control Multi-Agent SystemsAdvanced Memory and Neural ComputingAdaptive Control of Nonlinear Systems