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Extended dissipative synchronization for singularly perturbed semi-Markov jump neural networks with randomly occurring uncertainties

机译:具有随机发生不确定性的奇摄动半马尔可夫跳神经网络的扩展耗散同步

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This paper concentrates on the synchronization problem for singularly perturbed neural networks with semi-Markov jump parameters and randomly occurring uncertainties. A continuous-time semi-Markov process is utilized to model the stochastic switching of the parameters. An independent singularly perturbed parameter is separated through the use of singularly perturbed slow-fast decomposition method. Some sufficient conditions are deduced to ensure that the error system is synchronized and meets the extended dissipative property. In particular, the uncertainty of the networks is considered to occur randomly, which is more realistic than the existing work. Moreover, the efficiency of the presented method is demonstrated by a numerical example. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文着重研究具有半马氏跳参数和随机不确定性的奇摄动神经网络的同步问题。利用连续时间半马尔可夫过程对参数的随机切换进行建模。通过使用奇摄动慢速分解方法来分离独立的奇摄动参数。推论出一些足够的条件,以确保误差系统是同步的并满足扩展的耗散特性。特别地,网络的不确定性被认为是随机发生的,这比现有工作更为现实。此外,通过数值例子说明了所提出方法的效率。 (C)2019 Elsevier B.V.保留所有权利。

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