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Global exponential stability analysis of Cohen-Grossberg neural networks with variable coefficients and time-varying delays

机译:具有变系数和时变延迟的Cohen-Grossberg神经网络的全局指数稳定性分析

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In this paper, the Cohen-Grossberg neural network models with variable coefficients and time-varying delays are considered. By constructing an appropriate Lyapunov functional, some global exponential stability criteria for this type of Cohen-Grossberg neural network are presented. These criteria are applicable for other neural network models, such as cellular neural networks. Our results are less conservative and restrictive than previously known results and can be easily verified. And the result has considered signs of the connecting weights. Some comparisons and an example are given to demonstrate the main results.
机译:本文认为,具有可变系数和时变延迟的Cohen-Grossberg神经网络模型。通过构建适当的Lyapunov功能,提出了这种类型的Cohen-Grossberg神经网络的一些全局指数稳定标准。这些标准适用于其他神经网络模型,例如蜂窝神经网络。我们的结果不如先前已知的结果保守和限制,并且可以很容易地验证。结果已经考虑了连接权重的迹象。给出一些比较和一个例子来证明主要结果。

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