Department of Built Environment, Tokyo Institute of Technology, Nagatsuta-machi, Midori-ku, Yokohama, Kanagawa 226-8502, Japan.
Accid Anal Prev. 2012 Mar;45:373-81. doi: 10.1016/j.aap.2011.08.004. Epub 2011 Sep 6.
The concept of measuring the crash risk for a very short time window in near future is gaining more practicality due to the recent advancements in the fields of information systems and traffic sensor technology. Although some real-time crash prediction models have already been proposed, they are still primitive in nature and require substantial improvements to be implemented in real-life. This manuscript investigates the major shortcomings of the existing models and offers solutions to overcome them with an improved framework and modeling method. It employs random multinomial logit model to identify the most important predictors as well as the most suitable detector locations to acquire data to build such a model. Afterwards, it applies Bayesian belief net (BBN) to build the real-time crash prediction model. The model has been constructed using high resolution detector data collected from Shibuya 3 and Shinjuku 4 expressways under the jurisdiction of Tokyo Metropolitan Expressway Company Limited, Japan. It has been specifically built for the basic freeway segments and it predicts the chance of formation of a hazardous traffic condition within the next 4-9 min for a particular 250 meter long road section. The performance evaluation results reflect that at an average threshold value the model is able to successful classify 66% of the future crashes with a false alarm rate less than 20%.
由于信息系统和交通传感器技术的最新进展,在不久的将来测量极短时间窗口内的碰撞风险的概念变得更加实用。尽管已经提出了一些实时碰撞预测模型,但它们本质上仍然很原始,需要进行重大改进才能在实际中实施。本文研究了现有模型的主要缺点,并提出了一种改进的框架和建模方法来解决这些问题。它使用随机多项逻辑回归模型来确定最重要的预测因素以及最适合获取数据以构建此类模型的检测器位置。然后,它应用贝叶斯置信网络 (BBN) 来构建实时碰撞预测模型。该模型是使用从日本东京都高速公路公司管辖的涩谷 3 号和新宿 4 号高速公路收集的高分辨率检测器数据构建的。它是专门为基本高速公路段构建的,可预测在下一个 4-9 分钟内特定 250 米长路段形成危险交通状况的机会。性能评估结果表明,在平均阈值下,该模型能够成功分类 66%的未来碰撞事故,假警率小于 20%。