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单车辆翻车事故中影响驾驶员伤害严重程度的因素的异质影响、时间稳定性和综合变化研究。

An investigation of heterogeneous impact, temporal stability, and aggregate shift in factors affecting the driver injury severity in single-vehicle rollover crashes.

机构信息

Department of Industrial and Systems Engineering, The Hong Kong Polytechnic University, Hung Hom, Hong Kong, China.

Department of Industrial and Systems Engineering, The Hong Kong Polytechnic University, Hung Hom, Hong Kong, China.

出版信息

Accid Anal Prev. 2024 Jun;200:107562. doi: 10.1016/j.aap.2024.107562. Epub 2024 Mar 29.

Abstract

Single-vehicle rollover crashes have been acknowledged as a predominant highway crash type resulting in serious casualties. To investigate the heterogeneous impact of factors determining different injury severity levels in single-vehicle rollover crashes, the random parameters logit model with unobserved heterogeneity in means and variances was employed in this paper. A five-year dataset on single-vehicle rollover crashes, gathered in California from January 1, 2013, to December 31, 2017, was utilized. Driver injury severities that were determined to be outcome variables include no injury, minor injury, and severe injury. Characteristics pertaining to the crash, driver, temporal, vehicle, roadway, and environment were acknowledged as potential determinants. The results showed that the gender indicator specified to minor injury was consistently identified as a significant random parameter in four years' models and the joint five-year model, excluding the 2016 crash model where the night indicator associated with no injury was observed to produce the random effect. Additionally, two series of likelihood ratio tests were conducted to assess the year-to-year and aggregate-to-component temporal stability of model estimation results. Marginal effects of explanatory variables were also calculated and compared to analyze the temporal stability and interpret the results. The findings revealed an overall temporal instability of model specifications across individual years, while there is no significant aggregate-to-component variation. Injury severities were observed to be stably affected by several variables, including improper turn indicator, under the influence of alcohol indicator, old driver indicator, seatbelt indicator, insurance indicator, and airbag indicator. Furthermore, the year-to-year and aggregate-to-component shift was quantified and characterized by calculating the differences in probabilities between within-sample observations and out-of-sample predictions. The overall results imply that continuing to expand and refine the model to incorporate more comprehensive datasets can result in more robust and stable injury severity prediction, thus benefiting in mitigating the associated driver injury severity.

摘要

单车翻车事故已被公认为导致严重伤亡的主要公路事故类型。为了研究确定单车翻车事故不同伤害严重程度的因素的异质性影响,本文采用了均值和方差存在未观测异质性的随机参数对数模型。本文使用了 2013 年 1 月 1 日至 2017 年 12 月 31 日在加利福尼亚州收集的五年单车翻车事故数据集。确定为结果变量的驾驶员伤害严重程度包括无伤害、轻微伤害和严重伤害。与事故、驾驶员、时间、车辆、道路和环境相关的特征被认为是潜在的决定因素。结果表明,在四年的模型和五年的综合模型中,指定为轻微伤害的性别指标一直被确定为一个重要的随机参数,除了 2016 年的事故模型,其中与无伤害相关的夜间指标被观察到产生随机效应。此外,还进行了两组似然比检验,以评估模型估计结果的逐年和综合到组成部分的时间稳定性。还计算了解释变量的边际效应,并进行了比较,以分析时间稳定性并解释结果。研究结果表明,模型规范在个别年份存在总体时间不稳定,而在综合到组成部分方面没有显著变化。伤害严重程度被观察到受到几个变量的稳定影响,包括不当转弯指标、酒精影响指标、老年驾驶员指标、安全带指标、保险指标和安全气囊指标。此外,通过计算样本内观察值和样本外预测值之间的概率差异,量化和描述了逐年和综合到组成部分的变化。总体结果表明,继续扩展和完善模型以纳入更全面的数据集可以实现更稳健和稳定的伤害严重程度预测,从而有助于减轻相关驾驶员伤害严重程度。

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