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Identification of chaotic systems using a self-constructing recurrent neural network

机译:利用自构造经常性神经网络识别混沌系统

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This paper presents a self-constructing recurrent neural network (SCRNN) capable of building itself with a compact structure from input-output measurements for identification of chaotic systems. The proposed SCRNN is constituted by a static nonlinear network cascaded with a linear dynamic network. A unified learning algorithm consisting of two mechanisms, a hybrid weight initialization method and a parameter optimization method, has been developed for the structure and parameter identification. With this learning algorithm, the SCRNN is exempted from trial and error in structure initialization as well as parameterization. Computer simulations on discrete-time chaotic systems, including logistic and Henon mappings, validate that the proposed SCRNN is capable of capturing the dynamical behavior of chaotic systems with a compact network size.
机译:本文介绍了一种自动构建的复发性神经网络(SCRNN),其能够从输入输出测量中构建紧凑的结构,以识别混沌系统。所提出的SCRNN由具有线性动态网络级联的静态非线性网络构成。已经开发了由两个机制,混合权重初始化方法和参数优化方法组成的统一学习算法,用于结构和参数识别。通过该学习算法,SCRNN豁免了结构初始化以及参数化中的试用和错误。在离散时间混沌系统上的计算机模拟,包括逻辑和HENON映射,验证所提出的SCRNN能够捕获具有紧凑网络尺寸的混沌系统的动态行为。

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