Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
5011260 | Communications in Nonlinear Science and Numerical Simulation | 2018 | 13 Pages |
Abstract
This paper is comprehensively concerned with the dynamics of a class of high-dimension fractional ring-structured neural networks with multiple time delays. Based on the associated characteristic equation, the sum of time delays is regarded as the bifurcation parameter, and some explicit conditions for describing delay-dependent stability and emergence of Hopf bifurcation of such networks are derived. It reveals that the stability and bifurcation heavily relies on the sum of time delays for the proposed networks, and the stability performance of such networks can be markedly improved by selecting carefully the sum of time delays. Moreover, it is further displayed that both the order and the number of neurons can extremely influence the stability and bifurcation of such networks. The obtained criteria enormously generalize and improve the existing work. Finally, numerical examples are presented to verify the efficiency of the theoretical results.
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Authors
Chengdai Huang, Jinde Cao, Min Xiao, Ahmed Alsaedi, Tasawar Hayat,