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Bifurcation analysis in a class of neural network models with discrete and distributed delays

机译:一类具有离散和分布时滞的神经网络模型中的分叉分析

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This paper investigates the stability and Hopf bifurcation in a class of neural networks with two neurons. This model involves discrete and distributed delays described by an integral with a strong delay kernel. By analysing the distribution of roots of the characteristic equation of the associated linearized system, the conditions for creating the Hopf bifurcation can be obtained. Besides, the delay is chosen as the bifurcation parameter and we find that the equilibrium is asymptotically stable when the delay is less than a critical value while the system undergoes a Hopf bifurcation when the delay exceeds the critical value. Finally, the software package DDE-BIFTOOL is applied to neural networks and the simulation results justify the validity of our theoretical analysis.
机译:本文研究一类具有两个神经元的神经网络的稳定性和Hopf分支。此模型涉及离散延迟和分布式延迟,这些延迟由具有强大延迟内核的整数描述。通过分析相关的线性化系统的特征方程的根的分布,可以获得创建Hopf分支的条件。此外,选择时延作为分叉参数,发现当时延小于临界值时,平衡点是渐近稳定的;当时延超过临界值时,系统会发生Hopf分叉。最后,将软件包DDE-BIFTOOL应用于神经网络,仿真结果证明了我们理论分析的有效性。

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