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首页> 外文期刊>International journal of bifurcation and chaos in applied sciences and engineering >Dynamic Analysis of Fractional-Order Recurrent Neural Network with Caputo Derivative
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Dynamic Analysis of Fractional-Order Recurrent Neural Network with Caputo Derivative

机译:Caputo衍生物分数级复发性神经网络的动态分析

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摘要

In this paper, fractional-order recurrent neural network models with Caputo Derivative are investigated. Firstly, we mainly focus our attention on Hopf bifurcation conditions for commensurate fractional-order network with time delay to reveal the essence that fractional-order equation can simulate the activity of neuron oscillation. Secondly, for incommensurate fractional-order neural network model, we prove the stability of the zero equilibrium point to show that incommensurate fractional-order neural network still converges to zero point. Finally, Hopf bifurcation conditions for the incommensurate fractional-order neural network model are first obtained using bifurcation theory based on commensurate fractional-order system.
机译:本文研究了具有Caputo衍生物的分数级复发性神经网络模型。 首先,我们主要将注意力集中在Hopf分岔条件下,随着时间的推迟,揭示小数阶方程可以模拟神经元振荡活动的本质。 其次,对于不计的分数阶神经网络模型,我们证明了零均衡点的稳定性,表明不计的分数阶神经网络仍然会聚到零点。 最后,首先使用基于相应的分数阶系统的分岔理论获得所联素分数阶神经网络模型的Hopf分岔条件。

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