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采用多元泊松-对数正态模型和联合负二项广义有序 Probit 分数分裂模型,通过伤害严重程度和车辆损坏进行高速公路安全评估和改进以降低事故发生率。

Highway safety assessment and improvement through crash prediction by injury severity and vehicle damage using Multivariate Poisson-Lognormal model and Joint Negative Binomial-Generalized Ordered Probit Fractional Split model.

机构信息

Connecticut Transportation Safety Research Center, Connecticut Transportation Institute, University of Connecticut, United States.

Department of Civil, Environmental & Construction Engineering, University of Central Florida, United States.

出版信息

J Safety Res. 2021 Feb;76:44-55. doi: 10.1016/j.jsr.2020.11.005. Epub 2020 Dec 14.

Abstract

INTRODUCTION

Predicting crash counts by severity plays a dominant role in identifying roadway sites that experience overrepresented crashes, or an increase in the potential for crashes with higher severity levels. Valid and reliable methodologies for predicting highway accidents by severity are necessary in assessing contributing factors to severe highway crashes, and assisting the practitioners in allocating safety improvement resources.

METHODS

This paper uses urban and suburban intersection data in Connecticut, along with two sophisticated modeling approaches, i.e. a Multivariate Poisson-Lognormal (MVPLN) model and a Joint Negative Binomial-Generalized Ordered Probit Fractional Split (NB-GOPFS) model to assess the methodological rationality and accuracy by accommodating for the unobserved factors in predicting crash counts by severity level. Furthermore, crash prediction models based on vehicle damage level are estimated using the same two methodologies to supplement the injury severity in estimating crashes by severity when the sample mean of severe injury crashes (e.g., fatal crashes) is very low.

RESULTS

The model estimation results highlight the presence of correlations of crash counts among severity levels, as well as the crash counts in total and crash proportions by different severity levels. A comparison of results indicates that injury severity and vehicle damage are highly consistent.

CONCLUSIONS

Crash severity counts are significantly correlated and should be accommodated in crash prediction models. Practical application: The findings of this research could help select sound and reliable methodologies for predicting highway accidents by injury severity. When crash data samples have challenges associated with the low observed sampling rates for severe injury crashes, this research also confirmed that vehicle damage can be appropriate as an alternative to injury severity in crash prediction by severity.

摘要

简介

通过严重程度预测碰撞次数在识别严重程度代表性过高的道路点或潜在更高严重程度碰撞的增加方面起着主导作用。通过严重程度预测公路事故的有效和可靠方法对于评估严重公路事故的促成因素以及协助从业人员分配安全改进资源是必要的。

方法

本文使用康涅狄格州的城市和郊区交叉口数据以及两种复杂的建模方法,即多变量泊松-对数正态(MVPLN)模型和联合负二项式-广义有序概率分数分裂(NB-GOPFS)模型,通过容纳未观测因素来评估方法的合理性和准确性。通过严重程度预测碰撞次数。此外,使用相同的两种方法估计基于车辆损坏程度的碰撞预测模型,以补充当严重伤害碰撞(例如致命碰撞)的样本平均值非常低时通过严重程度估计碰撞的伤害严重程度。

结果

模型估计结果突出了不同严重程度的碰撞次数之间的相关性,以及总碰撞次数和不同严重程度的碰撞比例。结果的比较表明,伤害严重程度和车辆损坏高度一致。

结论

碰撞严重程度计数显着相关,应在碰撞预测模型中加以考虑。实际应用:本研究的发现可以帮助选择预测伤害严重程度的公路事故的合理可靠方法。当碰撞数据样本存在与严重伤害碰撞的低观察采样率相关的挑战时,本研究还证实,在通过严重程度进行碰撞预测时,车辆损坏可以替代伤害严重程度作为替代方案。

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