Exploring injury severity of bicycle-motor vehicle crashes: A two-stage approach integrating latent class analysis and random parameter logit model

IF 2.4 3区 工程技术 Q3 TRANSPORTATION
Zhiyuan Sun, Yuxuan Xing, Jianyu Wang, Xin Gu, Huapu Lu, Yanyan Chen
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引用次数: 8

Abstract

Abstract Bicycle–motor vehicle (BMV) crashes have been identified as a major type of traffic accident affecting transportation safety. In order to determine the characteristics of BMV crashes in cold regions, this study presents an analysis using police-reported data from 2015 to 2017 on BMV crashes in Shenyang, China. A two-stage approach integrating latent class analysis (LCA) and the random parameter logit (RP-logit) model is proposed to identify specific crash groups and explore their contributing factors. First, LCA was used to classify data into several homogenous clusters, and then the RP-logit model was established to identify significant factors in the whole data model and the cluster-based model from LCA. The proposed two-stage approach can maximize the heterogeneity effects both among clusters and within clusters. Results show that three significant factors in the cluster-based model are obscured by the whole data model in which male cyclists are associated with a higher risk of fatality, especially in the winter. Additionally, differences exist in the exploration of factors due to the characteristics of clusters; thus, countermeasures for specific crash groups should be implemented. This research can provide references for regulators to develop targeted policies and reduce injury severity in BMV crashes in cold regions.
探讨自行车机动车碰撞损伤严重程度:一种结合潜在类分析和随机参数logit模型的两阶段方法
摘要:自行车-机动车碰撞事故是影响交通安全的主要交通事故类型。为了确定寒冷地区BMV碰撞的特征,本研究使用2015年至2017年中国沈阳警方报告的BMV碰撞数据进行了分析。提出了一种结合潜在类分析(LCA)和随机参数logit (RP-logit)模型的两阶段方法来识别特定的碰撞组并探索其影响因素。首先,利用LCA将数据划分为多个同质聚类,然后建立RP-logit模型,从LCA中识别整个数据模型和基于聚类的模型中的显著因素。本文提出的两阶段方法可以最大化集群间和集群内的异质性效应。结果表明,基于聚类的模型中的三个重要因素被整个数据模型所掩盖,其中男性骑自行车者与更高的死亡风险相关,特别是在冬季。此外,由于集群的特点,对因素的探索也存在差异;因此,应该针对特定的崩溃组实施对策。该研究可为监管部门制定针对性政策,降低寒冷地区BMV碰撞伤害严重程度提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.00
自引率
15.40%
发文量
38
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