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Global Exponential Stability and Synchronization for Discrete-Time Inertial Neural Networks With Time Delays: A Timescale Approach

机译:时滞离散时间惯性神经网络的全局指数稳定性和同步:一种时标方法

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摘要

This paper considers generalized discrete-time inertial neural network (GDINN). By timescale theory, the original network is rewritten as a timescale-type inertial NN. Two different scenarios are considered. In a first scenario, several criteria guaranteeing the global exponential stability for the addressed GDINN are obtained based on the generalized matrix measure concept. In this case, Lyapunov function or functional is not necessary. In a second scenario, some inequality analytical and scaling techniques are used to achieve the global exponential stability for the considered GDINN. The obtained criteria are also applied to the global exponential synchronization of drive-response GDINNs. Several illustrative examples, including applications to the pseudorandom number generator and encrypted image transmission, are given to show the effectiveness of the theoretical results.
机译:本文考虑了广义离散时间惯性神经网络(GDINN)。通过时标理论,原始网络被重写为时标类型的惯性NN。考虑了两种不同的方案。在第一种情况下,基于广义矩阵测度概念,获得了几个保证所寻址GDINN的全局指数稳定性的准则。在这种情况下,不需要Lyapunov功能或功能。在第二种情况下,一些不平等分析和缩放技术被用于实现所考虑的GDINN的全局指数稳定性。获得的标准也适用于驱动响应GDINN的全局指数同步。给出了几个说明性示例,包括对伪随机数生成器的应用和加密的图像传输,以显示理论结果的有效性。

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