具有时滞的脉冲BAM型Cohen-Grossberg神经网络周期解的存在性与稳定性

Fengjian Yang, Jianfu Yang, Dongqing Wu, Chaolong Zhang, Lishi Liang, Qun Hong
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引用次数: 0

摘要

研究了一类具有变时滞和时变系数Cohen-Grossberg动力学的脉冲双向联想记忆神经网络周期解的存在性和全局指数稳定性。利用压缩映射和Lyapunov泛函,得到了保证周期解存在唯一性和全局指数稳定性的充分条件。我们可以看到脉冲有助于该系统周期解的存在性和稳定性。通过比较和算例验证了所得结果的有效性。本文研究的模型是对文献中已有的Hopfield神经网络、带有脉冲和时滞的BAM神经网络、Cohen-Grossberg神经网络等模型的推广,因此,本文的主要结果对文献中的一些结果进行了推广。
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Existence and stability of periodic solution of impulsive BAM Type Cohen-Grossberg neural networks with delays
In this paper, the existence and global exponential stability of periodic solution is investigated for a class of impulsive bidirectional associative memories neural networks that possesses a Cohen-Grossberg dynamics incorporating variable delays and time-variant coefficients. By using compressive mapping and Lyapunov functional, sufficient conditions are obtained to guarantee the existence and uniqueness of the periodic solution and its global exponential stability. We can see that impulses contribute to the existence and stability of periodic solution for this system. Some comparisons and examples are given to demonstrate the effectiveness of the obtained results. The model studied in this paper is a generalization of some existing models in literature, including Hopfield neural networks, BAM neural networks with impulse and time delays, Cohen-Grossberg neural networks, and thus, the main results of this paper generalize some results in literature.
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