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Stability Results for Cellular Neural Networks with Time Delays

机译:具有时滞的细胞神经网络的稳定性结果

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摘要

Cellular neural networks (CNNs) introduced by Chua and Yang in 1988 are recurrent artificial neural networks. Due to their cyclic connections and to the neurons' nonlinear activation functions, recurrent neural networks are nonlinear dynamic systems, which display stable and unstable fixed points, limit cycles and chaotic behavior. Since the field of neural networks is still a recent one, improving the stability conditions for such systems is an obvious and quasi-permanent task. This paper focuses on CNNs affected by time delays. We are interested to obtain sufficient conditions for the asymptotic stability of a cellular neural network with time delay feedback and zero control templates. Due to their sector restricted nonlinearities, stability of the neural networks is strongly connected to robust stability. With respect to this we shall use a quadratic Liapunov functional constructed via the technique due to V. L. Kharitonov for uncertain linear time delay systems, combined with an approach suggested by Malkin for systems with sector restricted nonlinearities.
机译:Chua和Yang在1988年提出的细胞神经网络(CNN)是循环人工神经网络。由于它们的周期性连接和神经元的非线性激活功能,递归神经网络是非线性动态系统,它显示稳定和不稳定的固定点,极限环和混沌行为。由于神经网络领域仍然是最近的领域,因此改善此类系统的稳定性条件是一项显而易见且准永久性的任务。本文重点介绍受时间延迟影响的CNN。我们有兴趣获得具有时滞反馈和零控制模板的细胞神经网络渐近稳定性的充分条件。由于其受扇区限制的非线性,神经网络的稳定性与鲁棒稳定性密切相关。对此,对于不确定的线性时滞系统,我们将使用通过V. L. Kharitonov的技术构造的二次Liapunov函数,并结合Malkin建议的针对扇区受限非线性系统的方法。

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