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Robust Delay-distribution-dependent Stability Of Discrete-time Stochastic Neural Networks With Time-varying Delay

机译:具有时变时滞的离散随机神经网络的鲁棒时滞分布相关稳定性

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摘要

A robust delay-distribution-dependent stochastic stability analysis is conducted for a class of discrete-time stochastic delayed neural networks (DSNNs) with parameter uncertainties. The effects of both variation range and distribution probability of the time delay are taken into account in the proposed approach. The distribution probability of time delay is translated into parameter matrices of the transferred DSNNs model, in which the parameter uncertainties are norm-bounded, the stochastic disturbances are described in term of a Brownian motion, and the time-varying delay is characterized by introducing a Bernoulli stochastic variable. Some delay-distribution-dependent criteria for the DSNNs to be robustly globally exponentially stable in the mean square sense are achieved by Lyapunov method and introducing some new analysis techniques. Two numerical examples are provided to show the effectiveness and applicability of the proposed method.
机译:针对一类具有参数不确定性的离散时间随机延迟神经网络(DSNN),进行了鲁棒的依赖于延迟分布的随机稳定性分析。该方法考虑了时延的变化范围和分布概率的影响。将时延的分布概率转换为传递的DSNNs模型的参数矩阵,其中参数不确定性是范数有界的,用布朗运动描述随机扰动,并通过引入时变延迟来表征伯努利随机变量。通过Lyapunov方法并引入一些新的分析技术,实现了一些依赖于延迟分布的准则,以使DSNN在均方意义上具有鲁棒的全局指数稳定性。提供了两个数值示例,说明了该方法的有效性和适用性。

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