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Stability of delayed neural networks with impulsive strength-dependent average impulsive intervals

机译:具有脉冲强度相关平均脉冲间隔的时滞神经网络的稳定性

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摘要

This paper mainly deals with the stability of delayed neural networks with time-varying impulses, in which both stabilizing and destabilizing impulses are considered. By means of the comparison principle, the average impulsive interval and the Lyapunov function approach, sufficient conditions are obtained to ensure that the considered impulsive delayed neural network is exponentially stable. Different from existing results on stability of impulsive systems with average impulsive approach, it is assumed that impulsive strengths of stabilizing and destabilizing impulses take values from two finite states, and a new definition of impulsive strength-dependent average impulsive interval is proposed to characterize the impulsive sequence. The characteristics of the proposed impulsive strength-dependent average impulsive interval is that each impulsive strength has its own average impulsive intervaland therefore the proposed impulsive strength-dependent average impulsiveinterval is more applicable than the average impulsive interval. Simulation examples are given to show the validity and potential advantages of the developed results.
机译:本文主要研究具有时变脉冲的时滞神经网络的稳定性,其中考虑了稳定和不稳定脉冲。通过比较原理,平均脉冲间隔和Lyapunov函数方法,可以获得足够的条件来确保所考虑的脉冲延迟神经网络是指数稳定的。与现有的采用平均脉冲方法的脉冲系统稳定性研究结果不同,假设稳定和去稳定脉冲的脉冲强度取两个有限状态的值,并提出了一个新的定义,即与脉冲强度相关的平均脉冲间隔来表征脉冲顺序。所提出的与冲动强度有关的平均冲动间隔的特征在于,每个冲动强度具有其自己的平均冲动间隔,因此,所提出的与冲动强度有关的平均冲动间隔比平均冲动间隔更适用。仿真算例表明了所开发结果的有效性和潜在优势。

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