混合时滞马尔可夫跳变神经网络的随机有限时间稳定性分析

He Huang
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引用次数: 0

摘要

研究了具有离散时滞和分布时滞的马尔可夫跳变神经网络的随机有限时间稳定性问题。通过定义具有模相关Lyapunov矩阵的适当随机Lyapunov泛函,得到了所考虑的延迟马尔可夫跳变神经网络相对于规定标量是随机有限时间稳定的充分条件。稳定性判据是与延迟和模式相关的,并且可以很容易地通过求助于可用的算法进行检查。最后给出了两个数值算例来说明所建立的理论的应用。
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Stochastic finite-time stability analysis of Markovian jumping neural networks with mixed time delays
The stochastic finite-time stability is studied in this paper for Markovian jumping neural networks with discrete and distributed delays. By defining a proper stochastic Lyapunov functional with mode-dependent Lyapunov matrices, a sufficient condition is derived such that the delayed Markovian jumping neural network under consideration is stochastically finite-time stable with respect to prescribed scalars. The stability criterion is delay- and mode-dependent, and can be readily checked by resorting to available algorithms. Two numerical examples are finally provided to show the application of the developed theory.
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