An improved fixed-time stabilization problem of delayed coupled memristor-based neural networks with pinning control and indefinite derivative approach

IF 1 4区 数学 Q1 MATHEMATICS
Chao Yang, J. Wu, Zhengyang Qiao
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引用次数: 0

Abstract

In this brief, we propose a class of generalized memristor-based neural networks with nonlinear coupling. Based on the set-valued mapping theory, novel Lyapunov indefinite derivative and Memristor theory, the coupled memristor-based neural networks (CMNNs) can achieve fixed-time stabilization (FTS) by designing a proper pinning controller, which randomly controls a small number of neuron nodes. Different from the traditional Lyapunov method, this paper uses the implementation method of indefinite derivative to deal with the non-autonomous neural network system with nonlinear coupling topology between different neurons. The system can obtain stabilization in a fixed time and requires fewer conditions. Moreover, the fixed stable setting time estimation of the system is given through a few conditions, which can eliminate the dependence on the initial value. Finally, we give two numerical examples to verify the correctness of our results.
基于固定控制和不定导数方法的延迟耦合记忆电阻神经网络的改进定时镇定问题
本文提出了一类基于广义忆阻器的非线性耦合神经网络。基于集值映射理论、新颖的Lyapunov不定导数和忆阻器理论,耦合记忆阻器神经网络(cmnn)通过设计适当的固定控制器,随机控制少量神经元节点,实现固定时间稳定(FTS)。与传统的Lyapunov方法不同,本文采用不定导数的实现方法来处理不同神经元之间具有非线性耦合拓扑的非自治神经网络系统。该系统能在固定时间内稳定,所需条件较少。此外,通过几个条件给出了系统的定稳定整定时间估计,消除了对初始值的依赖。最后给出了两个数值算例,验证了所得结果的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.30
自引率
12.50%
发文量
170
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