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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Local Prediction of Chaotic Time Series Based on Polynomial Coefficient Autoregressive Model
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Local Prediction of Chaotic Time Series Based on Polynomial Coefficient Autoregressive Model

机译:基于多项式系数自回归模型的混沌时间序列局部预测

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We apply the polynomial function to approximate the functional coefficients of the state-dependent autoregressive model for chaotic time series prediction. We present a novel local nonlinear model called local polynomial coefficient autoregressive prediction (LPP) model based on the phase space reconstruction. The LPP model can effectively fit nonlinear characteristics of chaotic time series with simple structure and have excellent one-step forecasting performance. We have also proposed a kernel LPP (KLPP) model which applies the kernel technique for the LPP model to obtain better multistep forecasting performance. The proposed models are flexible to analyze complex and multivariate nonlinear structures. Both simulated and real data examples are used for illustration.
机译:我们应用多项式函数来近似用于混沌时间序列预测的状态相关自回归模型的函数系数。我们提出了一种基于相空间重构的新型局部非线性模型,称为局部多项式系数自回归预测(LPP)模型。 LPP模型结构简单,有效地拟合了混沌时间序列的非线性特征,具有良好的一步预测性能。我们还提出了一种内核LPP(KLPP)模型,该模型将内核技术应用于LPP模型以获得更好的多步预测性能。所提出的模型可以灵活地分析复杂和多元的非线性结构。模拟和真实数据示例均用于说明。

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