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Exponential stability preservation in discrete-time analogues of artificial neural networks with distributed delays

机译:具有分布时滞的人工神经网络离散时间类似物中的指数稳定性保持

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摘要

This paper demonstrates that there is a discrete-time analogue which does not. require any restriction on the size of the time-step in order to preserve the exponential stability of an artificial neural network with distributed delays. The analysis exploits an appropriate Lyapunov sequence and a discrete-time system of Halanay inequalities, and also either a Young inequality or a geometric-arithmetic mean inequality, to derive several sufficient conditions on the network parameters for the exponential stability of the analogue. The sufficiency conditions are independent of the time-step, and they correspond to those that establish the exponential stability of the continuous-time network. (C) 2007 Elsevier B.V. All rights reserved.
机译:本文证明了有一个离散时间模拟没有。要求对时间步长进行任何限制,以保持具有分布式时延的人工神经网络的指数稳定性。该分析利用适当的Lyapunov序列和Halanay不等式的离散时间系统,以及Young不等式或几何算术平均不等式,以得出网络参数的多个充分条件,以实现类似物的指数稳定性。充分性条件与时间步长无关,并且它们与建立连续时间网络的指数稳定性的条件相对应。 (C)2007 Elsevier B.V.保留所有权利。

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