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三轮摩托车事故严重程度预测的机器学习分类器比较研究。

A comparative study of machine learning classifiers for injury severity prediction of crashes involving three-wheeled motorized rickshaw.

机构信息

School of Transportation and Logistics, Southwest Jiaotong University, Chengdu, Sichuan, 610031, China.

College of Metropolitan Transportation, Beijing University of Technology, Beijing, 100124, China.

出版信息

Accid Anal Prev. 2021 May;154:106094. doi: 10.1016/j.aap.2021.106094. Epub 2021 Mar 21.

Abstract

Motorcycles and motorcyclists have a variety of attributes that have been found to be a potential contributor to the high liability of vulnerable road users (VRUs). Vulnerable Road Users (VRUs) that include pedestrians, bicyclists, cycle-rickshaw occupants, and motorcyclists constitute by far the highest share of road traffic accidents in developing countries. Motorized three-wheeled Rickshaws (3W-MR) is a popular public transport mode in almost all Pakistani cities and is used primarily for short trips to carry passengers and small-scale goods movement. Despite being an important mode of public transport in the developing world, little work has been done to understand the factors affecting the injury severity of three-wheeled motorized vehicles. Crash injury severity prediction is a promising research target in traffic safety. Traditional statistical models have underlying assumptions and predefined associations, which can yield misleading results if flouted. Machine learning(ML) is an emerging non-parametric method that can effectively capture the non-linear effects of both continuous and discrete variables without prior assumptions and achieve better prediction accuracy. This research analyzed injury severity of three-wheeled motorized rickshaws (3W-MR) using various machine learning-based identification algorithms, i.e., Decision jungle (DJ), Random Forest (RF), and Decision Tree (DT). Three years of crash data (from 2017 to 2019) was collected from Provincial Emergency Response Service RESCUE 1122 for Rawalpindi city, Pakistan. A total of 2,743 3W-MR crashes were reported during the study period that resulted in 258 fatalities. The predictive performance of proposed ML models was assessed using several evaluation metrics such as overall accuracy, macro-average precision, macro-average recall, and geometric means of individual class accuracies. Results revealed that DJ with an overall accuracy of 83.7 % outperformed the DT and RF-based on a stratified 10-fold cross-validation approach. Finally, Spearman correlation analysis showed that factors such as the lighting condition, crashes involving young drivers (aged 20-30 years), facilities with high-speed limits (over 60 mph), weekday, off-peak, and shiny weather conditions were more likely to worsen injury severity of 3W-MR crashes. The outcomes of this study could provide necessary and essential guidance to road safety agencies, particularly in the study area, for proactive implementation of appropriate countermeasures to curb road safety issues pertaining to three-wheeled motorized vehicles.

摘要

摩托车和骑摩托车的人有各种属性,这些属性被认为是弱势道路使用者(VRU)高责任的潜在因素。弱势道路使用者(VRU)包括行人和骑自行车的人、人力车乘客、机动三轮车乘客,构成了发展中国家道路交通事故的最高份额。机动三轮车(3W-MR)在巴基斯坦几乎所有城市都是一种受欢迎的公共交通方式,主要用于短途运送乘客和小规模货物运输。尽管它是发展中国家重要的公共交通方式之一,但很少有人致力于了解影响机动三轮车车辆伤害严重程度的因素。碰撞伤害严重程度预测是道路安全领域很有前景的研究目标。传统的统计模型有潜在的假设和预先定义的关联,如果违反这些假设和关联,可能会得出误导性的结果。机器学习(ML)是一种新兴的非参数方法,无需先验假设即可有效地捕捉连续和离散变量的非线性效应,并实现更好的预测精度。本研究使用各种基于机器学习的识别算法,即决策树(DT)、随机森林(RF)和决策丛林(DJ),对机动三轮车的伤害严重程度进行了分析。从巴基斯坦拉瓦尔品第省紧急救援服务 1122 处收集了 2017 年至 2019 年三年的碰撞数据。在研究期间,共报告了 2743 起机动三轮车碰撞事故,导致 258 人死亡。使用几种评估指标,如整体准确性、宏观平均精度、宏观平均召回率和个体类精度的几何平均值,评估了所提出的 ML 模型的预测性能。结果表明,在分层 10 倍交叉验证方法的基础上,DJ 的整体准确率为 83.7%,优于 DT 和 RF。最后,Spearman 相关分析表明,照明条件差、年轻司机(20-30 岁)参与的碰撞、限速高(超过 60 英里/小时)、工作日、非高峰时段和晴朗天气等因素更有可能使机动三轮车碰撞的伤害严重程度恶化。本研究的结果可以为道路安全机构提供必要和重要的指导,特别是在研究区域,以便主动实施适当的对策,遏制与机动三轮车相关的道路安全问题。

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