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Predefined-Time Bounded Consensus of Multiagent Systems With Unknown Nonlinearity via Distributed Adaptive Fuzzy Control

Bing Mao, Xiaoqun Wu, Jinhu Lü, Guanrong Chen

2022IEEE Transactions on Cybernetics115 citationsDOI

Abstract

This article investigates uniformly predefined-time bounded consensus of leader-following multiagent systems (MASs) with unknown system nonlinearity and external disturbance via distributed adaptive fuzzy control. First, uniformly predefined-time-bounded stability is analyzed and a sufficient condition is derived for the system to achieve semiglobally (globally) uniformly predefined-time-bounded consensus. Therein, the settling time is independent of initial conditions and can be defined in advance. Then, for first-order MASs, distributed adaptive fuzzy controllers are designed by combining neighboring consensus errors to drive all following agents to globally track the leader's state within predefined time. For second-order MASs, by formulating filtered errors, the consensus errors between following agents and the leader are shown to be bounded if the filtered errors are bounded. Furthermore, with the distributed controllers designed based on filtered errors, second-order MASs achieve semiglobally uniformly predefined-time-bounded leader-following consensus. Finally, two numerical examples are simulated, including: 1) a first-order leader-following MAS and 2) a second-order Lagrangian system consisting of single-link manipulators, to demonstrate the performance of the proposed controllers.

Topics & Concepts

Control theory (sociology)Bounded functionMulti-agent systemNonlinear systemFuzzy logicFuzzy control systemUniform boundednessSettling timeConsensusComputer scienceAdaptive controlBacksteppingMathematicsStability (learning theory)Exponential stabilityAdaptive systemState (computer science)Controller (irrigation)Lyapunov stabilityControl systemRobust controlControl (management)Distributed Control Multi-Agent SystemsAdaptive Control of Nonlinear SystemsStability and Control of Uncertain Systems