基于聚类对应和层次二元logit模型的摩托车碰撞严重程度分析

Richard Dzinyela , Bahar Dadashova , Grant Westfall , Subasish Das , Chiara Silvestri-Dobrovolny , Emmanuel Kofi Adanu , Dominique Lord
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引用次数: 0

摘要

涉及摩托车手的撞车事故占交通相关伤亡事故的很大一部分。尽管摩托车只占所有登记车辆的3%,但摩托车手占所有道路死亡人数的14%。随着摩托车手人数的增加,迫切需要了解影响他们在碰撞中受伤严重程度的因素。本文采用聚类对应分析(CCA)和层次二元logit模型对2016 - 2020年犹他州摩托车手碰撞损伤严重程度的影响因素进行了研究。采用聚类对应分析方法将碰撞数据聚类为7类,并采用层次二元logit模型识别影响摩托车碰撞伤害严重程度的显著因素。研究结果表明,摩托车手年龄、道路线形、道路安全系统和时间因素对摩托车手碰撞严重程度有显著影响。模型结果进一步解释了碰撞数据中集群内变量的相关性。随着本研究中碰撞因素与伤害严重程度之间关系的深入了解,研究结果可以帮助决策者实施有针对性的对策,以提高摩托车驾驶员的安全水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of motorcyclists crash severity using cluster correspondence and hierarchical binary logit models
Crashes involving motorcyclists account for a significant portion of traffic-related injuries and fatalities. Despite motorcycles making only three percent of all registered vehicles, motorcyclists account for 14 percent of all roadway fatalities. As the number of motorcyclists increase, there is an urgent need to understand the factors that affect the severity of injuries they sustain in crashes. In this paper, we use cluster correspondence analysis (CCA) and hierarchical binary logit model to explore the factors associated with motorcyclists’ crash injury severities in Utah between 2016 and 2020. Cluster correspondence analysis was used to cluster the crash data into seven groups, while hierarchical binary logit model was used to identify the significant factors that contributed to the injury severity of motorcycle crashes. The results of this study indicate that among the crash-contributing factors the motorcyclist age, roadway alignment, roadside safety systems and temporal factors significantly contribute to motorcyclist crash severities. The model results further account for the correlation of variables within the clusters in the crash data. With the deeper understanding of the relationship between crash factors and injury severity in this study, the findings can help decision makers to implement targeted countermeasures to improve motorcyclist safety.
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