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首页> 外文期刊>Discrete dynamics in nature and society >Centralized Data-Sampling Approach for Global O(t~(-a)) Synchronization of Fractional-Order Neural Networks with Time Delays
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Centralized Data-Sampling Approach for Global O(t~(-a)) Synchronization of Fractional-Order Neural Networks with Time Delays

机译:具有时间延迟的小组级神经网络的全局O(-A))同步的集中式数据采样方法

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摘要

In this paper, the global O(t~(-a)) synchronization problem is investigated for a class of fractional-order neural networks with time delays. Taking into account both better control performance and energy saving, we make the first attempt to introduce centralized data-sampling approach to characterize the O(t~(-a)) synchronization design strategy. A sufficient criterion is given under which the drive-response-based coupled neural networks can achieve global O(t~(-a)) synchronization. It is worth noting that, by using centralized data-sampling principle, fractional-order Lyapunov-like technique, and fractional-order Leibniz rule, the designed controller performs very well. Two numerical examples are presented to illustrate the efficiency of the proposed centralized datasampling scheme.
机译:在本文中,对一类具有时间延迟的一类分数阶神经网络进行了全局o(t〜(-a))同步问题。 考虑到更好的控制性能和节能,我们首次尝试引入集中式数据采样方法来表征O(t〜(-a))同步设计策略。 给出了足够的标准,其中基于驱动响应的耦合神经网络可以实现全局O(t〜(-a))同步。 值得注意的是,通过使用集中式数据采样原理,小数阶Lyapunov样技术和分数级leibniz规则,所设计的控制器执行得很好。 提出了两个数值示例以说明所提出的集中式数据采样方案的效率。

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