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

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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.

论文关键词:34K28,39A11,39A12,92B20,Discrete-time analogues,Distributed delays,Lyapunov sequences,Halanay inequalities,Exponential stability

论文评审过程:Received 7 August 2006, Revised 28 March 2007, Available online 20 April 2007.

论文官网地址:https://doi.org/10.1016/j.cam.2007.04.009