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Mean square stability of uncertain stochastic BAM neural networks with interval time-varying delays

机译:具有间隔时变时滞的不确定随机BAM神经网络的均方稳定性

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摘要

The robust asymptotic stability analysis for uncertain BAM neural networks with both interval time-varying delays and stochastic disturbances is considered. By using the stochastic analysis approach, employing some free-weighting matrices and introducing an appropriate type of Lyapunov functional which takes into account the ranges for delays, some new stability criteria are established to guarantee the delayed BAM neural networks to be robustly asymptotically stable in the mean square. Unlike the most existing mean square stability conditions for BAM neural networks, the supplementary requirements that the time derivatives of time-varying delays must be smaller than 1 are released and the lower bounds of time varying delays are not restricted to be 0. Furthermore, in the proposed scheme, the stability conditions are delay-range-dependent and rate-dependent/independent. As a result, the new criteria are applicable to both fast and slow time-varying delays. Three numerical examples are given to illustrate the effectiveness of the proposed criteria.
机译:考虑了不确定的BAM神经网络的鲁棒渐近稳定性分析,该不确定BAM神经网络具有时变间隔时滞和随机干扰。通过使用随机分析方法,采用一些自由加权矩阵并引入考虑了时延范围的适当类型的Lyapunov函数,建立了一些新的稳定性标准,以确保时滞BAM神经网络在时滞中稳健地渐近稳定。均方根。与BAM神经网络中最常见的均方稳定条件不同,释放了时变延迟的时间导数必须小于1的补充要求,并且时变延迟的下限不限于0。在所提出的方案中,稳定性条件依赖于延迟范围和速率依赖/独立。结果,新标准适用于快速和慢速随时间变化的延迟。给出了三个数值示例来说明所提出标准的有效性。

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