Improved fixed-time consensus of delayed nonlinear leader–follower multi-agent systems: A new stability approach
Articles
Mingqiang Meng
Army Engineering University of PLA
Qintao Gan
Army Engineering University of PLA
Ruihong Li
Army Engineering University of PLA
Luke Li
Army Engineering University of PLA
Qiaokun Kang
Army Engineering University of PLA
Hao Chang
PLA Unit 32382
Published 2026-02-11
https://doi.org/10.15388/namc.2026.31.45328
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Keywords

multi-agent systems
fixed-time consensus
fixed-time stability
time-delayed systems

How to Cite

Meng, M. (2026) “Improved fixed-time consensus of delayed nonlinear leader–follower multi-agent systems: A new stability approach”, Nonlinear Analysis: Modelling and Control, 31, pp. 1–23. doi:10.15388/namc.2026.31.45328.

Abstract

This article aims to study the problem of fixed-time consensus for nonlinear leader–follower multi-agent systems (MASs) with time delay. Firstly, a new fixed-time stability lemma is derived, where the condition of inequality contains a time-delayed term. Furthermore, a more precise estimated value of settling time (ST) including delayed parameter is obtained, which is different from those existing fixed-time stability lemmas. Thereby, it provides some options for designers in many practical scenarios when considering the delayed systems. Secondly, for the purpose of explaining its applicability, fixed-time consensus of leader–follower nonlinear MASs is investigated by designing a nonlinear control protocol including constant time delay. The designed protocol not only guarantees fixed-time consensus but also effectively improves the convergence rate. With the new proposed lemma, a novel consensus criterion is designed. This is the first time to obtain the time-delayed dependent fixed-time stability criterion for MASs. Finally, the validity and superiority of the established theoretical results are confirmed by one numerical simulation.

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