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Periodic oscillatory solution in delayed competitive-cooperative neural networks: A decomposition approach

机译:时滞竞争合作神经网络的周期振动解:一种分解方法

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In this paper, the problems of exponential convergence and the exponential stability of the periodic solution for a general class of non-autonomous competitive-cooperative neural networks are analyzed via the decomposition approach. The idea is to divide the connection weights into inhibitory or excitatory types and thereby to embed a competitive-cooperative delayed neural network into an augmented cooperative delay system through a symmetric transformation. Some simple necessary and sufficient conditions are derived to ensure the componentwise exponential convergence and the exponential stability of the periodic solution of the considered neural networks. These results generalize and improve the previous works, and they are easy to check and apply in practice. (c) 2005 Elsevier Ltd. All rights reserved.
机译:本文通过分解的方法,分析了一类非自治竞争合作神经网络的指数收敛性和周期解的指数稳定性问题。这个想法是将连接权重分为抑制性或兴奋性类型,从而通过对称变换将竞争合作延迟神经网络嵌入到增强合作延迟系统中。推导了一些简单的必要条件和充分条件,以确保所考虑的神经网络的周期解的指数收敛性和周期解的指数稳定性。这些结果可以概括和改进以前的工作,并且易于检查和在实践中应用。 (c)2005 Elsevier Ltd.保留所有权利。

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