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利用实时交通和信号数据预测信号交叉口的车辆乘员伤害。

Prediction of vehicle occupants injury at signalized intersections using real-time traffic and signal data.

机构信息

Mercer University, United States.

Department of Civil and Environmental Engineering, Florida International University, 10555 West Flagler Street, EC 3720, Miami, FL, 33174, United States.

出版信息

Accid Anal Prev. 2021 Jan;149:105869. doi: 10.1016/j.aap.2020.105869. Epub 2020 Nov 16.

Abstract

Intersections are among the most dangerous roadway facilities due to the existence of complex movements of traffic. Most of the previous intersection safety studies are conducted based on static and highly aggregated data such as average daily traffic and crash frequency. The aggregated data may result in unreliable findings because they are based on averages and might not necessarily represent the actual conditions at the time of the crash. This study uses real-time event-based detection records, and crash data to develop predictive models for the vehicle occupants' injury severity. The three-year (2017-2019) data were acquired from the arterial highways in the City of Tallahassee, Florida. Random Forest (RF) and eXtreme Gradient Boosting (XGBoost) classifiers were used to identify the important factors on the vehicle occupants' injury severity prediction. The performance comparison of the two classifiers revealed that the XGBoost has a higher balanced accuracy score than RF. Using the XGBoost classifier, five topmost influential factors on injury prediction were identified. The factors are the manner of the collision, through and right-turn traffic volume, arrival on red for through and right-turn traffic, split failure for through traffic, and delays for through and right-turn traffic. Moreover, the partial dependency plots of the influential variables are presented to reveal their impact on vehicle occupant injury prediction. The knowledge gained from this study will be useful in developing effective proactive countermeasures to mitigate intersection-related crash injuries in real-time.

摘要

交叉口是道路设施中最危险的地方之一,因为存在着复杂的交通流运动。以前的大多数交叉口安全研究都是基于静态的和高度汇总的数据进行的,如平均日交通量和碰撞频率。汇总数据可能会导致不可靠的结果,因为它们是基于平均值的,不一定代表碰撞时的实际情况。本研究使用实时基于事件的检测记录和碰撞数据,为车辆乘员的伤害严重程度开发预测模型。三年(2017-2019 年)的数据是从佛罗里达州塔拉哈西市的动脉高速公路上获得的。随机森林(RF)和极端梯度提升(XGBoost)分类器用于识别车辆乘员伤害严重程度预测的重要因素。两种分类器的性能比较表明,XGBoost 的平衡准确率得分高于 RF。使用 XGBoost 分类器,确定了对伤害预测影响最大的五个因素。这些因素是碰撞方式、左右转交通量、左右转红灯到达、左转交通流的分裂故障以及左右转交通的延误。此外,还提出了影响变量的部分依赖关系图,以揭示它们对车辆乘员伤害预测的影响。本研究获得的知识将有助于实时开发有效的主动预防措施,以减轻交叉口相关碰撞伤害。

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