基于非参数数据挖掘技术的主干道交通网络错误驾驶碰撞损伤分析

IF 2.4 3区 工程技术 Q3 TRANSPORTATION Journal of Transportation Safety & Security Pub Date : 2021-08-30 DOI:10.1080/19439962.2021.1960660
S. Nafis, Priyanka Alluri, Wensong Wu, B. G. Kibria
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引用次数: 6

摘要

与其他类型的碰撞相比,错误方向驾驶(WWD)导致的每次碰撞死亡人数更多,涉及的车辆更多,道路封闭时间更长。以往的研究使用描述性和参数统计模型来确定影响有限通道设施WWD崩溃严重程度的因素。本研究采用非参数数据挖掘技术,旨在识别影响非受限访问设施WWD崩溃严重程度的因素模式。这些非参数方法可以很好地处理碰撞数据集的异质性。在本研究中,采用分层聚类方法将碰撞数据集划分为同构聚类。采用随机森林分析选择重要变量,生成决策树和决策规则,显示影响WWD崩溃严重程度的不同因素之间的潜在模式和相互作用。该分析是基于2012年至2016年在佛罗里达州主干道上发生的1475起WWD事故。结果表明,正面碰撞、周末、高速设施、车道驶入车辆碰撞、黑暗无灯道路、驾驶员年龄较大和驾驶员损伤是影响非限制通道设施WWD碰撞严重程度的重要因素。
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Wrong-way driving crash injury analysis on arterial road networks using non-parametric data mining techniques
Abstract Wrong-way driving (WWD) crashes result in more fatalities per crash, involve more vehicles, and cause extended road closures compared to other types of crashes. Previous studies have used descriptive and parametric statistical models to identify factors that affect WWD crash severity on limited access facilities. This study adopted a combination of non-parametric data mining techniques aiming to recognize the pattern of contributing factors that affect the WWD crash severity on non-limited access facilities. These non-parametric methods can handle heterogeneity in crash datasets well. In this study, hierarchical clustering was used to divide the crash dataset into homogeneous clusters. A random forests analysis was used to select important variables, and decision trees and decision rules were generated to show the underlying pattern and interactions between different factors that affect WWD crash severity. The analysis was based on 1,475 WWD crashes that occurred on arterial streets from 2012-2016 in Florida. Results show that head-on collisions, weekend days, high-speed facilities, crashes involving vehicles entering from a driveway, dark-not lighted roadways, older drivers, and driver impairment are important factors that play a crucial role in WWD crash severity on non-limited access facilities.
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CiteScore
6.00
自引率
15.40%
发文量
38
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