Synchronization control for completely unknown chaotic systems via nested back-propagation neural networks

Xiaolin Song, Zilin Gao, Xitao Zou, Liyuan Qi, Yuan Luo
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Abstract

To solve the problem of existing chaotic systems with unknown nonlinearities, enormous parameters and external disturbances, in this paper, a synchronization controller with parameter adaptive laws is proposed based on nested back-propagation neural networks and the adaptive method, where the nested back-propagation neural networks are used to approximate the unknown nonlinearities based on same experiences and the unknown parameters are estimated by the adaptive method. Then the asymptotical synchronization of the drive-response chaotic systems is synthesized via state feedback controllers and updated adaptive laws. Specifically, the nested back-propagation neural networks are developed by grouping and layering the hidden neurons using the principle of partition of unity and the state domain for modularizing the concealed layer. Finally, a numerical example is given to illustrate the effectiveness of this method.
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基于嵌套反向传播神经网络的完全未知混沌系统同步控制
针对现有混沌系统中存在的非线性未知、参数巨大、外部干扰的问题,本文提出了一种基于嵌套反向传播神经网络和自适应方法的参数自适应同步控制器,利用嵌套反向传播神经网络对基于相同经验的未知非线性进行近似,并用自适应方法对未知参数进行估计。然后通过状态反馈控制器和更新的自适应律综合驱动-响应混沌系统的渐近同步。具体而言,利用单位划分原理和状态域对隐层进行模块化,将隐层神经元分组分层,形成嵌套式反向传播神经网络。最后通过数值算例说明了该方法的有效性。
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