一种改进的基于EKF的神经网络训练算法,用于辨识时间序列驱动的混沌系统

R. Archana, A. Unnikrishnan, R. Gopikakumari
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引用次数: 2

摘要

本文提出了一种基于单通道混沌信号输出时间序列的非线性系统辨识新算法。设计了一种递归神经网络(RNN)结构来表示非线性系统。利用扩展卡尔曼滤波(EKF)算法估计神经网络权值,并用期望最大化(EM)算法增强神经网络权值,该算法用于导出卡尔曼滤波的初始状态和协方差。用罗斯勒混沌系统对该方法进行了验证。仿真结果表明,如上所述,使用EKF算法训练的人工神经网络(ANN)具有相当低的建模误差值,并且可以精确地再现由动态方程生成的输出时间序列和状态。从状态空间演化的角度计算了模型的Lyapunov指数,证实了混沌行为。
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An improved EKF based neural network training algorithm for the identification of chaotic systems driven by time series
This paper presents a novel algorithm for nonlinear system identification from a single channel output time series of a chaotic signal. A recurrent neural network(RNN) structure has been designed to represent the non linear system. The neural network weights are estimated using the Extended Kalman Filter(EKF) algorithm, augmented by the Expectation Maximization(EM) algorithm used to derive the initial states and covariance, of the Kalman filter. Rossler chaotic system is used for demonstration of the approach. The simulation results show that the Artificial Neural Network(ANN) trained with EKF algorithm, as outlined above, performs with an appreciably low value of modeling error, and give exact reproduction of the output time series and states, as generated from the dynamical equations. The Lyapunov exponents of the model are calculated, from the state space evolution, which confirms the chaotic behaviour.
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