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首页> 外文期刊>Journal of Intelligent Transportation Systems >Predictions of Freeway Speeds and Volumes Using Vector Autoregressive Models
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Predictions of Freeway Speeds and Volumes Using Vector Autoregressive Models

机译:基于矢量自回归模型的高速公路速度和交通量预测

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Short-term traffic prediction on freeways is one of the critical components of advanced traveler information systems. The traditional methods of prediction have used univariate Auto-Regressive Integrated Moving Average (ARIMA) time series models, based on the autocorrelation function of the time series of traffic variable at a location; however, the effect of upstream and downstream location information has been largely neglected or underutilized in the case of freeway traffic prediction. It is the purpose of this article to demonstrate the effect of upstream as well as downstream locations on the traffic at a specific location. To achieve this, a section of five stations extending over 2.5 miles on 1-4 in the downtown region of Orlando, Florida is selected. The speeds from a station at the center of this location are then checked for crosscorrelations with stations upstream and downstream. Cross correlation function is analogous to autocorrelation function extended to two variables. It indicates whether the past values of an input series influence the future values of a response series. It was found that the past values of upstream as well as downstream stations influence the future values at a station and, therefore, can be used for prediction. A vector auto regressive model was found appropriate and better than the traditional ARIMA model for prediction at these stations.
机译:高速公路上的短期交通预测是高级旅行者信息系统的重要组成部分之一。传统的预测方法基于位置处交通变量的时间序列的自相关函数,使用单变量自回归综合移动平均(ARIMA)时间序列模型;然而,在高速公路交通量预测的情况下,上游和下游位置信息的影响已被大大忽略或未得到充分利用。本文的目的是演示上游和下游位置对特定位置的流量的影响。为了实现这一目标,在佛罗里达州奥兰多市区选择了1-4个范围超过2.5英里的5个站的一部分。然后检查从此位置中心的站点的速度与上游和下游站点的相互关系。互相关函数类似于自相关函数扩展到两个变量。它指示输入序列的过去值是否影响响应序列的将来值。发现上游站点和下游站点的过去值会影响站点的未来值,因此可以用于预测。在这些站点进行预测时,发现矢量自回归模型合适且优于传统的ARIMA模型。

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