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Input-to-state stability analysis of impulsive stochastic neural networks based on average impulsive interval

机译:基于平均脉冲间隔的脉冲随机神经网络的输入状态稳定性分析

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This paper addresses the input-to-state stability (ISS) properties, including pth moment ISS (p-ISS) and stochastic ISS (SISS) for a class of impulsive stochastic neural networks with external inputs. Employing Lyapunov functions and stochastic analysis techniques, sufficient conditions in forms of linear matrix inequalities for the p-ISS and SISS are established based on the average impulsive interval concept. Moreover, a criterion on the pth moment globally asymptotic stability and globally asymptotic stability in probability is derived as a corollary. Finally, an example is provided to illustrate the effectiveness of the obtained results.
机译:本文针对一类带有外部输入的脉冲随机神经网络,讨论了输入状态稳定性(ISS)属性,包括pth矩ISS(p-ISS)和随机ISS(SISS)。利用Lyapunov函数和随机分析技术,基于平均脉冲间隔概念,为p-ISS和SISS建立了线性矩阵不等式形式的充分条件。此外,推论出pth时刻的全局渐近稳定性和概率上的全局渐近稳定性的判据。最后,提供一个例子来说明所获得结果的有效性。

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