Finite-time synchronization control for a class of delayed neural networks: an improved two-step control method

Yue Chen, Song Zhu, Mouquan Shen, Xiaoyang Liu, Shiping Wen

科研成果: 期刊稿件文章同行评审

摘要

In this paper, a two-step control method is proposed, leveraging the generalized Halanay inequality and existing finite-time stability theorems, to achieve finite-time synchronization for a class of neural networks with bounded time-varying delay. In the first step, the system state is attenuated from V(t0) to γV(t0) using the generalized Halanay inequality, where 0 < γ ⩽ 1 is a free parameter. In the second step, by applying existing finite-time stability theorems, the system state further decays from γV(t0) to 0. Building on the above ideas, two novel finite-time stability lemmas for the error system are presented, and the convergence rate as well as the settling time is estimated. Furthermore, the value of γ that results in the shortest settling time for the error system is also provided. With the help of the derived lemmas, several sufficient algebraic criteria are established to achieve finite-time synchronization between the considered delayed neural networks. The results of this paper not only improve the existing two-step control method but also overcome the limitations of certain one-step finite-time control approaches. Finally, the validity and practical applicability of the obtained theoretical results are demonstrated through two numerical examples and an image protection experiment.

源语言英语
文章编号192203
期刊Science China Information Sciences
68
9
DOI
出版状态已出版 - 9月 2025

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