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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Adaptive Exponential Synchronization of Multislave Time-Delayed Recurrent Neural Networks With Lévy Noise and Regime Switching
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Adaptive Exponential Synchronization of Multislave Time-Delayed Recurrent Neural Networks With Lévy Noise and Regime Switching

机译:具有Lévy噪声和状态切换的多从属时滞递归神经网络的自适应指数同步

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摘要

This paper discusses the problem of adaptive exponential synchronization in mean square for a new neural network model with the following features: 1) the noise is characterized by the Lévy process and the parameters of the model change in line with the Markovian process; 2) the master system is also disturbed by the same Lévy noise; and 3) there are multiple slave systems, and the state matrix of each slave system is an affine function of the state matrices of all slave systems. Based on the Lyapunov functional theory, the generalized Itô's formula, M -matrix method, and the adaptive control technique, some criteria are established to ensure the adaptive exponential synchronization in the mean square of the master system and each slave system. Moreover, the update law of the control gain and the dynamic variation of the parameters of the slave systems are provided. Finally, the effectiveness of the synchronization criteria proposed in this paper is verified by a practical example.
机译:本文讨论了一种新神经网络模型的均方自适应指数同步问题,该模型具有以下特征:1)噪声具有Levy过程特征,模型参数随Markovian过程变化; 2)主系统也受到相同的Levy噪声干扰; 3)有多个从系统,每个从系统的状态矩阵是所有从系统状态矩阵的仿射函数。基于Lyapunov泛函理论,广义的Itô公式,M矩阵方法和自适应控制技术,建立了一些标准,以确保主系统和每个从系统的均方根中的自适应指数同步。此外,提供了控制增益的更新规律和从系统的参数动态变化。最后,通过实例验证了本文提出的同步准则的有效性。

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