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信号交叉口闯红灯的影响因素及基于罕见事件逻辑回归模型的预测

Influential factors of red-light running at signalized intersection and prediction using a rare events logistic regression model.

作者信息

Ren Yilong, Wang Yunpeng, Wu Xinkai, Yu Guizhen, Ding Chuan

机构信息

School of Transportation Science and Engineering, Beihang University, 37 Xueyuan Road, Haidian District, Beijing, China.

出版信息

Accid Anal Prev. 2016 Oct;95(Pt A):266-73. doi: 10.1016/j.aap.2016.07.017. Epub 2016 Jul 26.

Abstract

Red light running (RLR) has become a major safety concern at signalized intersection. To prevent RLR related crashes, it is critical to identify the factors that significantly impact the drivers' behaviors of RLR, and to predict potential RLR in real time. In this research, 9-month's RLR events extracted from high-resolution traffic data collected by loop detectors from three signalized intersections were applied to identify the factors that significantly affect RLR behaviors. The data analysis indicated that occupancy time, time gap, used yellow time, time left to yellow start, whether the preceding vehicle runs through the intersection during yellow, and whether there is a vehicle passing through the intersection on the adjacent lane were significantly factors for RLR behaviors. Furthermore, due to the rare events nature of RLR, a modified rare events logistic regression model was developed for RLR prediction. The rare events logistic regression method has been applied in many fields for rare events studies and shows impressive performance, but so far none of previous research has applied this method to study RLR. The results showed that the rare events logistic regression model performed significantly better than the standard logistic regression model. More importantly, the proposed RLR prediction method is purely based on loop detector data collected from a single advance loop detector located 400 feet away from stop-bar. This brings great potential for future field applications of the proposed method since loops have been widely implemented in many intersections and can collect data in real time. This research is expected to contribute to the improvement of intersection safety significantly.

摘要

闯红灯已成为信号交叉口的一个主要安全问题。为防止与闯红灯相关的撞车事故,识别显著影响驾驶员闯红灯行为的因素并实时预测潜在的闯红灯行为至关重要。在本研究中,从三个信号交叉口的环形探测器收集的高分辨率交通数据中提取的9个月的闯红灯事件,被用于识别显著影响闯红灯行为的因素。数据分析表明,占用时间、时间间隔、使用的黄灯时间、距黄灯开始剩余的时间、前车在黄灯期间是否通过交叉口以及相邻车道上是否有车辆通过交叉口是影响闯红灯行为的显著因素。此外,由于闯红灯事件具有罕见性,因此开发了一种改进的罕见事件逻辑回归模型用于闯红灯预测。罕见事件逻辑回归方法已在许多领域用于罕见事件研究,并显示出令人印象深刻的性能,但到目前为止,以前的研究都没有将该方法应用于闯红灯研究。结果表明,罕见事件逻辑回归模型的性能明显优于标准逻辑回归模型。更重要的是,所提出的闯红灯预测方法完全基于从距离停车线400英尺处的单个前置环形探测器收集的环形探测器数据。由于环形探测器已在许多交叉口广泛安装并能实时收集数据,这为该方法未来的现场应用带来了巨大潜力。预计本研究将对显著提高交叉口安全性做出贡献。

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