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Predict time series using extended, unscented, and cubature Kalman filters based on feed-forward neural network algorithm

机译:基于前馈神经网络算法,使用扩展的,无味的和温育的卡尔曼滤波器预测时间序列

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Successful application of artificial neural networks (ANNs) in prediction of nonlinear systems with a high degree has made extensive studies in this field. Time-varying, dynamic properties, as well as internal noise, are the problems that occur in prediction of nonlinear systems. The advantages of nonlinear filtering algorithms are controlling the addictive noise and high accurate estimation during the implementation process. This paper explores the use of time-series forecasting algorithms by combining nonlinear filters with feedforward neural networks. In this paper, space state equations and measurement of non-linear filters are written based on the weights and output of the ANNs. In other word, the extended, unscented, and cubature Kalman filters is used for training the feed-forward neural network (FNN). To evaluate the proposed method, these techniques have been used to forecast Mackey-Glass time series. The overall accuracy of cubature Kalman filter is better than the two others. The results are also confirmed by computer simulations.
机译:人工神经网络(ANN)在非线性系统的高度预测中的成功应用已在这一领域进行了广泛的研究。时变,动态特性以及内部噪声是非线性系统预测中出现的问题。非线性滤波算法的优点是在实施过程中控制着瘾噪声和高精度估算。本文通过将非线性滤波器与前馈神经网络相结合,探索了时间序列预测算法的使用。在本文中,基于神经网络的权重和输出,写出了空间状态方程和非线性滤波器的测量结果。换句话说,扩展的,无味的和宽敞的卡尔曼滤波器用于训练前馈神经网络(FNN)。为了评估所提出的方法,这些技术已用于预测Mackey-Glass时间序列。孵化器卡尔曼滤波器的总体精度优于其他两个。计算机模拟也证实了该结果。

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