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Short-term travel time prediction

机译:短期旅行时间预测

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摘要

Effective prediction of travel times is central to many advanced traveler information and transportation management systems. In this paper we propose a method to predict freeway travel times using a linear model in which the coefficients vary as smooth functions of the departure time. The method is straightforward to implement, computationally efficient and applicable to widely available freeway sensor data. We demonstrate the effectiveness of the proposed method by applying the method to two real-life loop detector data sets. The first data set―on I-880―is relatively small in scale, but very high in quality, containing information from probe vehicles and double loop detectors. On this data set the prediction error ranges from 5% for a trip leaving immediately to 10% for a trip leaving 30 min or more in the future. Having obtained encouraging results from the small data set, we move on to apply the method to a data set on a much larger spatial scale, from Caltrans District 12 in Los Angeles. On this data set, our errors range from about 8% at zero lag to 13% at a time lag of 30 min or more. We also investigate several extensions to the original method in the context of this larger data set.
机译:有效的旅行时间预测对于许多高级旅行者信息和运输管理系统至关重要。在本文中,我们提出了一种使用线性模型预测高速公路行驶时间的方法,其中系数随出发时间的平滑函数而变化。该方法易于实现,计算效率高并且适用于广泛可用的高速公路传感器数据。我们通过将该方法应用于两个实际的环路检测器数据集,证明了该方法的有效性。 I-880上的第一个数据集规模较小,但质量很高,其中包含来自探测车和双回路探测器的信息。在此数据集上,预测误差的范围从立即离开的5%到将来离开30分钟或更长时间的一次的10%。从较小的数据集获得了令人鼓舞的结果之后,我们继续将该方法应用于来自洛杉矶的Caltrans第12区的更大空间尺度的数据集。在此数据集上,我们的误差范围从零延迟的8%到30分钟或更长时间的13%的误差。我们还将在这个更大的数据集的背景下研究原始方法的几种扩展。

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