Department of Civil and Environmental Engineering, University of Utah, Salt Lake City, Utah.
Center for Urban Transportation Research, University of South Florida, Tampa, Florida.
Traffic Inj Prev. 2021;22(1):57-62. doi: 10.1080/15389588.2020.1841899. Epub 2020 Nov 18.
Few existing studies in the literature devoted efforts to examine the driver injury severity in left-turn crashes. To fill this research gap, this paper aims to provide a comprehensive study of the contributing factors of left-turn crashes and the corresponding injury severities.
The hierarchical ordered probit (HOPIT) model is first applied to study driver injury severity in left-turn crashes. The HOPIT model can overcome the limitations of traditional ordered probit models since its thresholds are always positive and ordered. It is a function of unique explanatory parameters that do not necessarily affect the ordered probability outcomes directly. Considering the driving condition during the wintertime could be significantly different from other seasons, this study divided the overall crash dataset into "winter" and "other-season" subsets based on the temperature, snowing condition, and other factors.
With the "other-season" dataset, results demonstrated that contributing factors, such as young drivers, male drivers, clear, light, and ramp intersection with crossroad, are associated with a decrease in injury severity. On the contrary, factors like drug, alcohol, disregard traffic control device, high-speed limit, the protected left-turn signal, etc., are related to an increase in injury severity. In winter, results revealed that only nine contributing factors are significant to the left-turn crash. Alcohol, disregard traffic control device, nighttime, high-speed limit, head-on collision, and state road are associated with an increase in injury severity. Also, two-vehicle involved, snow, ramp intersection with crossroad are related to a decrease in injury severity.
The HOPIT model is applied to examine contributing factors of left-turn crashes and the corresponding injury severity, based on left-turn crash records from 2010 to 2017 in Utah. Eighteen significant factors of left-turn crash injury severity are identified in the overall dataset. In seasons rather than winter, the significant factors are almost the same as that of the entire year. In the winter, less significant factors and different patterns are found compared with the overall crashes.
现有文献中很少有研究致力于研究左转碰撞中的驾驶员损伤严重程度。为了填补这一研究空白,本文旨在全面研究左转碰撞的影响因素及其相应的损伤严重程度。
首先应用分层有序概率(HOPIT)模型来研究左转碰撞中的驾驶员损伤严重程度。HOPIT 模型可以克服传统有序概率模型的局限性,因为其阈值始终为正且有序。它是一个独特解释参数的函数,这些参数不一定直接影响有序概率结果。考虑到冬季的驾驶条件可能与其他季节有很大的不同,本研究根据温度、下雪情况和其他因素将整个碰撞数据集分为“冬季”和“其他季节”两个子集。
使用“其他季节”数据集的结果表明,年轻驾驶员、男性驾驶员、晴朗、光线充足、带有交叉路口的匝道等因素与损伤严重程度降低有关。相反,药物、酒精、无视交通控制装置、高速限速、保护左转信号等因素与损伤严重程度增加有关。在冬季,结果表明只有九个因素对左转碰撞有显著影响。酒精、无视交通控制装置、夜间、高速限速、正面碰撞和州际公路与损伤严重程度增加有关。此外,两车相撞、下雪、带有交叉路口的匝道与损伤严重程度降低有关。
基于犹他州 2010 年至 2017 年的左转碰撞记录,应用 HOPIT 模型来检验左转碰撞的影响因素及其相应的损伤严重程度。在整个数据集中共确定了 18 个与左转碰撞损伤严重程度相关的显著因素。在整个年份中,非冬季的显著因素几乎与整个年份相同。在冬季,与整个碰撞相比,发现了较少的显著因素和不同的模式。