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首页> 外文期刊>International Journal of Computer Mathematics: Computer Systems Theory >Effect of fuzziness on the stability of inertial neural networks with mixed delay via non-reduced-order method
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Effect of fuzziness on the stability of inertial neural networks with mixed delay via non-reduced-order method

机译:模糊度对混合时滞惯性神经网络非降阶方法稳定性的影响

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摘要

In this paper, without transforming the original inertial neural networks into the first-order differential equation by some variable substitutions, fuzziness, time-varying and distributed delays are introduced into inertial networks and the existence, the uniqueness and the asymptotic stability for the neural networks are investigated. The existence of a unique equilibrium point is proved by using inequality techniques, and the properties of an M-matrix. By finding a new Lyapunov-Krasovskii functional, some sufficient conditions are derived ensuring the asymptotic stability. Finally, three numerical examples with simulation are presented to show the effectiveness of our theoretical results.
机译:本文在不通过变量替换将原始惯性神经网络转化为一阶微分方程的情况下,将模糊性,时变和分布时滞引入惯性网络,并给出了神经网络的存在性,唯一性和渐近稳定性。被调查。通过使用不等式技术和M-矩阵的性质证明了唯一平衡点的存在。通过找到新的Lyapunov-Krasovskii泛函,可以导出一些足以确保渐近稳定性的条件。最后,通过仿真给出了三个数值例子,以证明我们理论结果的有效性。

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