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Short-term traffic volume time series forecasting based on phase space reconstruction

机译:基于相空间重构的短期交通流量时间序列预测

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A method for the short-term prediction of traffic volume time series owning chaos characteristics based on reconstruction of phase space is described. The principle of nearest neighbor equal distance method in phase space is introduced, and this approach is firstly applied to forecast a real traffic volume time series and obtain the forecasting result of the traffic volume, and the forecasting result is compared with the results obtained by neural network and gray mode with one rank & one variable (abbreviated as GM (1,1)). The experiments prove that the short-term traffic volume forecasting based on phase space reconstruction is valid and feasible.
机译:描述了一种基于相空间重构的交通流量时间序列具有混沌特性的短期预测方法。介绍了相空间中的最近邻等距法的原理,该方法首先应用于预测实际交通量时间序列,并获得交通量的预测结果,并将其与神经网络的结果进行比较。网络和灰度模式,具有一个等级和一个变量(缩写为GM(1,1))。实验证明,基于相空间重构的短期交通量预测是有效可行的。

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