Pirdavani Ali, De Pauw Ellen, Brijs Tom, Daniels Stijn, Magis Maarten, Bellemans Tom, Wets Geert
a Transportation Research Institute (IMOB), School for Transportation Sciences, Hasselt University , Diepenbeek , Belgium.
b Research Foundation-Flanders (FWO) , Brussels , Belgium.
Traffic Inj Prev. 2015;16(8):786-91. doi: 10.1080/15389588.2015.1017572. Epub 2015 Mar 20.
There is a growing trend in development and application of real-time crash risk prediction models within dynamic safety management systems. These real-time crash risk prediction models are constructed by associating crash data with the real-time traffic surveillance data (e.g., collected by loop detectors). The main objective of this article is to develop a real-time risk model that will potentially be utilized within traffic management systems. This model aims to predict the likelihood of crash occurrence on motorways.
In this study, the potential prediction variables are confined to traffic-related characteristics. Given that the dependent variable (i.e., traffic safety condition) is dichotomous (i.e., "no-crash" or "crash"), a rule-based approach is considered for model development. The performance of rule-based classifiers is further compared with the more conventional techniques like binary logistic regression and decision trees. The crash and traffic data used in this study were collected between June 2009 and December 2011 on a part of the E313 motorway in Belgium between Geel-East and Antwerp-East exits, on the direction toward Antwerp.
The results of analysis show that several traffic flow characteristics such as traffic volume, average speed, and standard deviation of speed at the upstream loop detector station and the difference in average speed on upstream and downstream loop detector stations significantly contribute to the crash occurrence prediction. The final chosen classifier is able to predict 70% of crash occasions accurately, and it correctly predicts 90% of no-crash instances, indicating a 10% false alarm rate.
The findings of this study can be used to predict the likelihood of crash occurrence on motorways within dynamic safety management systems.
在动态安全管理系统中,实时碰撞风险预测模型的开发与应用呈增长趋势。这些实时碰撞风险预测模型是通过将碰撞数据与实时交通监测数据(如环形探测器收集的数据)相关联而构建的。本文的主要目标是开发一种可在交通管理系统中潜在应用的实时风险模型。该模型旨在预测高速公路上碰撞发生的可能性。
在本研究中,潜在的预测变量限于与交通相关的特征。鉴于因变量(即交通安全状况)是二分的(即“无碰撞”或“碰撞”),考虑采用基于规则的方法进行模型开发。将基于规则的分类器的性能与二元逻辑回归和决策树等更传统的技术进行进一步比较。本研究中使用的碰撞和交通数据于2009年6月至2011年12月在比利时E313高速公路位于海尔-东和安特卫普-东出口之间、往安特卫普方向的路段收集。
分析结果表明,几个交通流特征,如上游环形探测器站的交通量、平均速度和速度标准差,以及上游和下游环形探测器站的平均速度差异,对碰撞发生预测有显著贡献。最终选定的分类器能够准确预测70%的碰撞情况,正确预测90%的无碰撞实例,误报率为10%。
本研究结果可用于在动态安全管理系统中预测高速公路上碰撞发生的可能性。