Analysis of traffic conflicts with right-turning vehicles at unsignalized intersections in suburban areas

Abbas Sheykhfard , Farshidreza Haghighi , Sarah Bakhtiari , Sara Moridpour , Kun Xie , Grigorios Fountas
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Abstract

Right-turn collisions at intersections are one of the most dominant crash types in suburban areas, especially at unsignalized intersections. There is, however, a lack of comprehensive research on the speed patterns of vehicles during right-turn manoeuvres and their impacts on crashes. To provide an in-depth investigation of the factors determining the safety of right-turn manoeuvres, driving behavior data were collected through an instrumented vehicle study. Using this data, binary logistic regression models were developed to identify the factors affecting the probability of vehicle-vehicle (V-V) and vehicle-pedestrian (V-P) conflicts at six suburban intersections in Babol, Iran, during right-turn stage manoeuvres. In total, 1 456 V-V and V-P conflicts were identified from the data analysis. The results from the logistic regression model showed that the vehicle speed, the distance between road users, as well as driver and pedestrian distractions were associated with a higher risk for V-V or V-P conflicts. To estimate the safe right-turn speeds to be selected by drivers at different stages of the right turn, i.e., at the start, during, and end of the movement, linear regression models were developed. The results showed that participants adjust their driving behaviors the same way toward pedestrians as they do toward vehicles. The findings of this study can be leveraged for the development of a robust advanced driving assistance system, the use of which can further improve the safety performance of right-turn manoeuvres.
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城郊无信号交叉口右转车辆交通冲突分析
交叉口右转碰撞是城郊地区最主要的碰撞类型之一,特别是在无信号交叉口。然而,缺乏对车辆右转时的速度模式及其对碰撞的影响的全面研究。为了深入研究决定右转操作安全性的因素,通过仪表车辆研究收集了驾驶行为数据。利用这些数据,建立了二元逻辑回归模型,以确定伊朗巴博勒六个郊区十字路口右转阶段机动过程中车辆与车辆(V-V)和车辆与行人(V-P)冲突概率的影响因素。从数据分析中共发现1 456个V-V和V-P冲突。逻辑回归模型的结果显示,车速、道路使用者之间的距离以及驾驶员和行人的分心与V-V或V-P冲突的高风险相关。为了估计驾驶员在右转的不同阶段,即开始、过程和结束时选择的安全右转速度,建立了线性回归模型。结果显示,参与者对行人和车辆调整驾驶行为的方式是一样的。这项研究的结果可以用于开发强大的先进驾驶辅助系统,该系统的使用可以进一步提高右转操作的安全性能。
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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
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