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Multistability in a class of stochastic delayed Hopfield neural networks

机译:一类随机时滞Hopfield神经网络的多重稳定性

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In this paper, multistability analysis for a class of stochastic delayed Hopfield neural networks is investigated. By considering the geometrical configuration of activation functions, the state space is divided into 2(n) +1 regions in which 2(n) regions are unbounded rectangles. By applying Schauder's fixed-point theorem and some novel stochastic analysis techniques, it is shown that under some conditions, the 2(n) rectangular regions are positively invariant with probability one, and each of them possesses a unique equilibrium. Then by applying Lyapunov function and functional approach, two multistability criteria are established for ensuring these equilibria to be locally exponentially stable in mean square. The first multistability criterion is suitable to the case where the information on delay derivative is unknown, while the second criterion requires that the delay derivative be strictly less than one. For the constant delay case, the second multistability criterion is less conservative than the first one. Finally, an illustrative example is presented to show the effectiveness of the derived results. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文研究了一类随机时滞Hopfield神经网络的多稳定性分析。通过考虑激活函数的几何结构,将状态空间划分为2(n)+1个区域,其中2(n)个区域是无界矩形。通过应用Schauder不动点定理和一些新颖的随机分析技术,表明在某些条件下,2(n)个矩形区域的正不变性为1,并且每个区域都具有唯一的平衡。然后通过应用李雅普诺夫函数和泛函方法,建立了两个多重稳定性准则,以确保这些均衡在均方上局部指数稳定。第一个多稳定性准则适用于未知的时延导数信息,而第二个准则则要求时延导数严格小于1。对于恒定延迟情况,第二个多稳定性标准不如第一个保守。最后,给出了一个说明性示例,以显示得出的结果的有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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