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Highway accident severities and the mixed logit model: An exploratory empirical analysis

机译:公路事故严重程度和混合logit模型:探索性经验分析

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摘要

Many transportation agencies use accident frequencies, and statistical models of accidents frequencies, as a basis for prioritizing highway safety improvements. However, the use of accident severities in safety programming has been often been limited to the locational assessment of accident fatalities, with little or no emphasis being placed on the full severity distribution of accidents (property damage only, possible injury, injury)-which is needed to fully assess the benefits of competing safety-improvement projects. In this paper we demonstrate a modeling approach that can be used to better understand the injury-severity distributions of accidents on highway segments, and the effect that traffic, highway and weather characteristics have on these distributions. The approach we use allows for the possibility that estimated model parameters can vary randomly across roadway segments to account for unobserved effects potentially relating to roadway characteristics, environmental factors, and driver behavior. Using highway-injury data from Washington State, a mixed (random parameters) logit model is estimated. Estimation findings indicate that volume-related variables such as average daily traffic per lane, average daily truck traffic, truck percentage, interchanges per mile and weather effects such as snowfall are best modeled as random-parameters-while roadway characteristics such as the number of horizontal curves, number of grade breaks per mile and pavement friction are best modeled as fixed parameters. Our results show that the mixed logit model has considerable promise as a methodological tool in highway safety programming.
机译:许多运输机构都将事故发生频率和事故发生频率的统计模型用作优先考虑改善公路安全的基础。但是,在安全程序中使用事故严重程度通常仅限于对事故死亡人数进行位置评估,而很少或根本没有重视事故的严重程度的全部分布(仅财产损失,可能的伤害,伤害)。需要充分评估竞争性安全改进项目的收益。在本文中,我们演示了一种建模方法,可用于更好地理解公路段事故的伤害严重性分布以及交通,公路和天气特征对这些分布的影响。我们使用的方法允许估计的模型参数可以在整个道路段之间随机变化,以解决可能与道路特征,环境因素和驾驶员行为有关的未观察到的影响。使用华盛顿州的高速公路伤害数据,可以估算出混合(随机参数)logit模型。估计结果表明,与体积有关的变量(例如,每条车道的平均每日通行量,卡车的平均每日通行量,卡车所占百分比,每英里的互换量和降雪等天气影响)最好建模为随机参数,而道路特征(例如水平路数)则最好建模。最好将曲线,每英里的坡度折断次数和路面摩擦建模为固定参数。我们的结果表明,混合logit模型作为高速公路安全编程中的一种方法学工具具有很大的希望。

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