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Pinning sampled-data synchronization of coupled inertial neural networks with reaction-diffusion terms and time-varying delays

机译:具有反应扩散项和时变时滞的耦合惯性神经网络的固定采样数据同步

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The intention of this paper is to explore the problem of pinning sampled-data synchronization of coupled reaction-diffusion neural networks with added inertia and time-varying delays. Through the proper variable substitution, the original system is transferred into first-order differential equations. Then, by constructing a suitable Lyapunov-ICrasovsidi functional (LKF), which uses more information of the delay bounds, global asymptotic synchronization criteria for the considered system are established in the form of LMIs. The acquired LMIs can be simply examined for their practicability by utilizing any of the accessible softwares. At last, two examples are furnished to manifest the efficacy of the derived criteria.
机译:本文的目的是探讨固定惯性和时变时滞的耦合反应扩散神经网络的采样数据同步问题。通过适当的变量替换,原始系统被转换为一阶微分方程。然后,通过构造使用更多延迟范围信息的合适的Lyapunov-ICrasovsidi泛函(LKF),以LMI的形式建立了所考虑系统的全局渐近同步准则。通过使用任何可访问的软件,可以简单地检查获得的LMI的实用性。最后,提供两个例子来证明所导出标准的有效性。

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