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Easy verifiable sufficient conditions for existence and exponential stability of periodic solution for delay cellular neural networks

机译:时滞细胞神经网络周期解的存在性和指数稳定性的易于验证的充分条件

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This paper proposes a class of more general model of recurrent neural networks with functional delay, which has been found more suitable to directly apply. Some novel and sufficient conditions of existence, uniqueness and global exponential stability of periodic solution for the recurrent neural network equations are obtained utilizing the theory of coincidence degree, the Lyapunov functional method and M-matrix. These conditions are simple and easily checkable; two examples are given to illustrate the effectiveness of the new results.
机译:本文提出了一类具有功能延迟的递归神经网络的更一般的模型,发现它更适合直接应用。利用重合度理论,Lyapunov泛函方法和M矩阵,为递归神经网络方程的周期解的存在性,唯一性和全局指数稳定性提供了一些新颖而充分的条件。这些条件很简单,很容易检查。给出两个例子来说明新结果的有效性。

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