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基于潜在类别模型的公路铁路交叉口车辆驾驶员损伤严重度因素分析方法。

A latent class modeling approach for identifying vehicle driver injury severity factors at highway-railway crossings.

机构信息

Department of Civil Engineering and Applied Mechanics, McGill University, Canada.

出版信息

Accid Anal Prev. 2012 Jul;47:119-27. doi: 10.1016/j.aap.2012.01.027. Epub 2012 Feb 15.

DOI:10.1016/j.aap.2012.01.027
PMID:22342959
Abstract

In this paper, we aim to identify the different factors that influence injury severity of highway vehicle occupants, in particular drivers, involved in a vehicle-train collision at highway-railway grade crossings. The commonly used approach to modeling vehicle occupant injury severity is the traditional ordered response model that assumes the effect of various exogenous factors on injury severity to be constant across all accidents. The current research effort attempts to address this issue by applying an innovative latent segmentation based ordered logit model to evaluate the effects of various factors on the injury severity of vehicle drivers. In this model, the highway-railway crossings are assigned probabilistically to different segments based on their attributes with a separate injury severity component for each segment. The validity and strength of the formulated collision consequence model is tested using the US Federal Railroad Administration database which includes inventory data of all the railroad crossings in the US and collision data at these highway railway crossings from 1997 to 2006. The model estimation results clearly highlight the existence of risk segmentation within the affected grade crossing population by the presence of active warning devices, presence of permanent structure near the crossing and roadway type. The key factors influencing injury severity include driver age, time of the accident, presence of snow and/or rain, vehicle role in the crash and motorist action prior to the crash.

摘要

本文旨在确定影响公路车辆乘员(特别是驾驶员)在公路铁路交叉口与火车碰撞时受伤严重程度的不同因素。通常用于对车辆乘员受伤严重程度进行建模的方法是传统的有序响应模型,该模型假设各种外部因素对所有事故中受伤严重程度的影响是恒定的。目前的研究工作试图通过应用创新的基于潜在分段的有序逻辑模型来解决这个问题,该模型用于评估各种因素对车辆驾驶员受伤严重程度的影响。在该模型中,根据公路铁路交叉口的属性将其概率分配到不同的段中,每个段都有单独的受伤严重程度组件。使用美国联邦铁路局数据库对制定的碰撞后果模型的有效性和强度进行了测试,该数据库包含美国所有铁路道口的清单数据以及 1997 年至 2006 年这些公路铁路道口的碰撞数据。模型估计结果清楚地突出了在受影响的平交道口人群中存在风险细分,其影响因素包括活跃的警告装置的存在、交叉口附近永久结构的存在以及道路类型。影响受伤严重程度的关键因素包括驾驶员年龄、事故发生时间、是否有雪和/或雨、车辆在事故中的角色以及事故发生前驾驶员的行为。

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