Estimating Baseline Travel Times for the UK Strategic Road Network

Alvaro Cabrejas Egea, Peter De-Ford, C. Connaughton
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引用次数: 4

Abstract

We present a new method for long-term estimation of the expected travel time for links on highways and their variation with time. The approach is based on a time series analysis of travel time data from the UK's National Traffic Information Service (NTIS). Time series of travel times are characterised by a noisy background variation exhibiting the expected daily and weekly patterns punctuated by large spikes associated with congestion events. Some spikes are caused by peak hour congestion and some are caused by unforeseen events like accidents. Our algorithm uses thresholding to split the data into background and spike signals, each of which is analysed separately. The the background signal is extracted using spectral filtering. The periodic part of the spike signal is extracted using locally weighted regression (LWR). The final estimated travel time is obtained by recombining these two. We assess our method by cross-validating in several UK motorways. We use 8 weeks of training data and calculate the error of the resulting travel time estimates for a week of test data, repeating this process 4 times. We find that the error is significantly reduced compared to estimates obtained by simple segmentation of the data and compared to the estimates published by the NTIS system.
估算英国战略道路网络的基线旅行时间
我们提出了一种新的方法来长期估计公路上的期望旅行时间及其随时间的变化。该方法基于英国国家交通信息服务(NTIS)对旅行时间数据的时间序列分析。旅行时间的时间序列以嘈杂的背景变化为特征,显示出预期的每日和每周模式,并伴有与拥堵事件相关的大峰值。一些峰值是由高峰时段的拥堵引起的,而另一些则是由意外事故等不可预见的事件引起的。我们的算法使用阈值法将数据分割成背景信号和尖峰信号,分别对它们进行分析。利用频谱滤波提取背景信号。利用局部加权回归(LWR)提取尖峰信号的周期部分。将两者重新组合得到最终的估计旅行时间。我们通过在几条英国高速公路上进行交叉验证来评估我们的方法。我们使用8周的训练数据,并计算一周测试数据的旅行时间估计值的误差,重复此过程4次。我们发现,与通过简单分割数据获得的估计值和与NTIS系统发布的估计值相比,误差显着降低。
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