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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >An Improved Result on Dissipativity and Passivity Analysis of Markovian Jump Stochastic Neural Networks With Two Delay Components
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An Improved Result on Dissipativity and Passivity Analysis of Markovian Jump Stochastic Neural Networks With Two Delay Components

机译:具有两个时滞分量的马尔可夫跳跃随机神经网络的耗散性和无源性分析的改进结果

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摘要

In this paper, we investigate the dissipativity and passivity of Markovian jump stochastic neural networks involving two additive time-varying delays. Using a Lyapunov-Krasovskii functional with triple and quadruple integral terms, we obtain delay-dependent passivity and dissipativity criteria for the system. Using a generalized Finsler lemma (GFL), a set of slack variables with special structure are introduced to reduce design conservatism. The dissipativity and passivity criteria depend on the upper bounds of the discrete time-varying delay and its derivative are given in terms of linear matrix inequalities, which can be efficiently solved through the standard numerical software. Finally, our illustrative examples show that the proposed method performs well and is successful in problems where existing methods fail.
机译:在本文中,我们研究了涉及两个附加时变时滞的马尔可夫跳跃随机神经网络的耗散性和无源性。使用具有三重和四重积分项的Lyapunov-Krasovskii泛函,我们获得了系统的依赖于延迟的无源性和耗散性标准。使用广义Finsler引理(GFL),引入了一组具有特殊结构的松弛变量以减少设计保守性。耗散性和无源性标准取决于离散时变延迟的上限,并根据线性矩阵不等式给出了其导数,可以通过标准数值软件有效地求解。最后,我们的说明性例子表明,所提出的方法性能良好,并且在现有方法失败的问题上很成功。

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