Impact of multiple time delays on bifurcation of a class of fractional nearest-neighbor coupled neural networks

In this paper, the impacts of multiple time delays on bifurcation of a class of fractional nearest-neighbor coupled neural networks are considered. Firstly, the sum of time delays is selected as a parameter, and the fractional nearest-neighbor coupled neural network model is linearized to obtain th...

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Bibliographic Details
Main Authors: Weinan Li, Maoxin Liao, Haoming Huang, Changjin Xu, Bingbing Li
Format: Article
Language:English
Published: Vilnius University Press 2024-12-01
Series:Nonlinear Analysis
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Online Access:https://www.zurnalai.vu.lt/nonlinear-analysis/article/view/37851
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Summary:In this paper, the impacts of multiple time delays on bifurcation of a class of fractional nearest-neighbor coupled neural networks are considered. Firstly, the sum of time delays is selected as a parameter, and the fractional nearest-neighbor coupled neural network model is linearized to obtain the corresponding characteristic equation. Then, utilizing stability and bifurcation theory of fractional-order delay differential equations, we investigate the effect of time delays on the system’s stability and bifurcations. The results show that when the time lag exceeds the critical value, the system will lose stability and generate Hopf bifurcation. Finally, the correctness of the conclusions in this paper is verified through numerical simulation.
ISSN:1392-5113
2335-8963