IEEE Trans Cybern. 2013 Dec;43(6):2122-34. doi: 10.1109/TCYB.2013.2240451.
This paper is concerned with the problem of mean-square exponential stability of uncertain neural networks with time-varying delay and stochastic perturbation. Both linear and nonlinear stochastic perturbations are considered. The main features of this paper are twofold: 1) Based on generalized Finsler lemma, some improved delay-dependent stability criteria are established, which are more efficient than the existing ones in terms of less conservatism and lower computational complexity; and 2) when the nonlinear stochastic perturbation acting on the system satisfies a class of Lipschitz linear growth conditions, the restrictive condition P < δI (or the similar ones) in the existing results can be relaxed under some assumptions. The usefulness of the proposed method is demonstrated by illustrative examples.
本文研究了具有时变时滞和随机扰动的不确定神经网络的均方指数稳定性问题。同时考虑了线性和非线性随机扰动。本文的主要特点有两点:1)基于广义 Finsler 引理,建立了一些改进的时滞相关稳定性判据,这些判据在保守性和计算复杂性方面都比现有判据更有效;2)当作用于系统的非线性随机扰动满足一类 Lipschitz 线性增长条件时,在某些假设下,可以放宽现有结果中 P < δI(或类似条件)的限制条件。通过实例验证了所提方法的有效性。