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Synchronization of discrete-time neural networks with delays and Markov jump topologies based on tracker information

机译:基于跟踪器信息的延迟和马尔可夫跳拓延迟的离散时间神经网络同步

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In this paper, synchronization in an array of discrete-time neural networks (DTNNs) with time-varying delays coupled by Markov jump topologies is considered. It is assumed that the switching information can be collected by a tracker with a certain probability and transmitted from the tracker to controller precisely. Then the controller selects suitable control gains based on the received switching information to synchronize the network. This new control scheme makes full use of received information and overcomes the shortcomings of mode-dependent and mode-independent control schemes. Moreover, the proposed control method includes both the mode-dependent and mode-independent control techniques as special cases. By using linear matrix inequality (LMI) method and designing new Lyapunov functionals, delay-dependent conditions are derived to guarantee that the DTNNs with Markov jump topologies to be asymptotically synchronized. Compared with existing results on Markov systems which are obtained by separately using mode-dependent and mode-independent methods, our result has great flexibility in practical applications. Numerical simulations are finally given to demonstrate the effectiveness of the theoretical results. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在本文中,考虑了由马尔可夫跳拓拓扑耦合的具有时变延迟的离散时间神经网络(DTNN)阵列中的同步。假设可以通过跟踪器收集交换信息,其具有一定概率并精确地从跟踪器发送到控制器。然后,控制器基于接收的切换信息选择合适的控制增益以使网络同步。这种新的控制方案充分利用了所接收的信息,并克服了不同的模式和模式的控制方案的缺点。此外,所提出的控制方法包括模式相关和模式无关的控制技术作为特殊情况。通过使用线性矩阵不等式(LMI)方法并设计新的Lyapunov功能,推导出延迟相关的条件,以保证与马尔可夫跳拓拓扑的DTNNS渐近同步。与马尔可夫系统的现有结果相比,通过单独使用模式依赖和模式的方法而获得,我们的结果在实际应用中具有很大的灵活性。最终算上数值模拟以证明理论结果的有效性。 (c)2016 Elsevier Ltd.保留所有权利。

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