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Centralized and Decentralized Data-Sampling Principles for Outer-Synchronization of Fractional-Order Neural Networks

机译:分数阶神经网络外部同步的集中式和分散式数据采样原理

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摘要

This paper aims to investigate the outer-synchronization of fractional-order neural networks. Using centralized and decentralized data-sampling principles and the theory of fractional differential equations, sufficient criteria about outer-synchronization of the controlled fractional-order neural networks are derived for structure-dependent centralized data-sampling, state-dependent centralized data-sampling, and state-dependent decentralized data-sampling, respectively. A numerical example is also given to illustrate the superiority of theoretical results.
机译:本文旨在研究分数阶神经网络的外部同步。利用集中式和分散式数据采样原理以及分数阶微分方程理论,为控制结构相关的集中式数据采样,状态相关的集中式数据采样和控制式分数阶神经网络的外部同步导出了充分的准则。状态相关的分散数据采样。数值例子说明了理论结果的优越性。

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