Pattern recognition from light delivery vehicle crash characteristics

IF 2.4 3区 工程技术 Q3 TRANSPORTATION Journal of Transportation Safety & Security Pub Date : 2021-10-25 DOI:10.1080/19439962.2021.1995800
Subasish Das, Anandi Dutta, M. Rahman
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引用次数: 5

Abstract

Abstract In the era of food delivery and grocery delivery startups, traffic crashes associated with light delivery vehicles have increased significantly. Since the number of these crashes is increasing, it is important to investigate light vehicle crashes to gain insights into potential contributing factors. This study collected seven years (2010-2016) of data from traffic crash narrative reports and structured traffic crash data from Louisiana. Using text search options and manual exploration, a database of 1,623 light delivery-related crashes was examined with a comparatively robust clustering method known as cluster correspondence analysis. The findings identified six clusters with specific traits. The key clusters are fatigue, alcohol impairment, young drivers on low to moderate speed roadways, open country and moderate speed state/U.S. highways, and interstate-related crashes due to inattention. Policymakers can use the findings of the current study to perform data-driven policy development and promote safety for delivery-related travels.
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轻型运载车辆碰撞特征的模式识别
在食品配送和杂货配送初创公司的时代,与轻型配送车辆相关的交通事故显著增加。由于此类事故的数量正在增加,因此调查轻型车辆事故以深入了解潜在的影响因素非常重要。本研究收集了路易斯安那州7年(2010-2016年)的交通事故叙事报告和结构化交通事故数据。使用文本搜索选项和手动探索,使用称为聚类对应分析的相对健壮的聚类方法检查了包含1,623个轻量级交付相关崩溃的数据库。研究结果确定了六个具有特定特征的集群。主要人群是疲劳、酒精损害、年轻司机在低至中速道路、开阔地区和中速州/美国高速公路,以及州际间因注意力不集中而发生的撞车事故。政策制定者可以利用当前研究的结果来执行数据驱动的政策制定,并促进与配送相关的旅行的安全。
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来源期刊
CiteScore
6.00
自引率
15.40%
发文量
38
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