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首页> 外文期刊>Acta Applicandae Mathematicae: An International Journal on Applying Mathematics and Mathematical Applications >Existence and Global Convergence of Periodic Solutions in Recurrent Neural Network Models with a General Piecewise Alternately Advanced and Retarded Argument
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Existence and Global Convergence of Periodic Solutions in Recurrent Neural Network Models with a General Piecewise Alternately Advanced and Retarded Argument

机译:具有广义分段交替高级和时滞参数的递归神经网络模型中周期解的存在性和全局收敛性

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摘要

This paper is concerned with existence, uniqueness and global exponential stability of a periodic solution for recurrent neural network described by a system of differential equations with piecewise constant argument of generalized type (in short DEPCAG). The model involves both advanced and delayed arguments. Employing Banach fixed point theorem combined with Green's function and DEPCAG integral inequality of Gronwall type, we obtain some novel sufficient conditions ensuring the existence as well as the global convergence of the periodic solution. Our results are new, extend and improve earlier publications. Several numerical examples and simulations are also given to show the feasibility of our results.
机译:本文关注的是递归神经网络周期解的存在性,唯一性和全局指数稳定性,该周期解由具有广义类型分段常数参数(简称DEPCAG)的微分方程组描述。该模型涉及高级和延迟参数。利用Banach不动点定理,结合格林函数和Gronwall型DEPCAG积分不等式,我们得到了一些新颖的充分条件,确保了周期解的存在性和全局收敛性。我们的结果是新的,扩展和改进了较早的出版物。还给出了几个数值示例和仿真,以证明我们的结果的可行性。

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