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Estimation of rear-end vehicle crash frequencies in urban road tunnels

机译:估算城市道路隧道中车辆追尾事故的频率

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摘要

According to The Handbook of Tunnel Fire Safety, over 90% (55 out of 61 cases) of fires in road tunnels are caused by vehicle crashes (especially rear-end crashes). It is thus important to develop a proper methodology that is able to estimate the rear-end vehicle crash frequency in road tunnels. In this paper, we first analyze the time to collision (TTC) data collected from two road tunnels of Singapore and conclude that Inverse Gaussian distribution is the best-fitted distribution to the TTC data. An Inverse Gaussian regression model is hence used to establish the relationship between the TTC and its contributing factors. We then proceed to introduce a new concept of exposure to traffic conflicts as the mean sojourn time in a given time period that vehicles are exposed to dangerous scenarios, namely, the TTC is lower than a predetermined threshold value. We further establish the relationship between the proposed exposure to traffic conflicts and crash count by using negative binomial regression models. Based on the limited data samples used in this study, the negative binomial regression models perform well although a further study using more data is needed.
机译:根据《隧道消防安全手册》,道路隧道中超过90%的火灾(61起案件中的55起)是由车祸(尤其是追尾事故)引起的。因此,重要的是要开发一种能够估算道路隧道中车辆追尾事故频率的适当方法。在本文中,我们首先分析了从新加坡两条公路隧道收集的碰撞时间(TTC)数据,并得出结论,逆高斯分布是最适合TTC数据的分布。因此,使用逆高斯回归模型来建立TTC及其影响因素之间的关系。然后,我们继续引入暴露于交通冲突中的新概念,将其视为车辆在危险情况下(即TTC低于预定阈值)的给定时间段内的平均停留时间。通过使用负二项式回归模型,我们进一步建立了建议的交通冲突风险与崩溃计数之间的关系。基于本研究中使用的有限数据样本,负二项式回归模型的效果很好,尽管需要使用更多数据进行进一步研究。

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