Abstract

Studies have been implemented in the literature to enhance the safety of traffic barriers by identification of the contributory factors to those crashes. However, almost all those past studies are subject to potential pitfalls of just answering the cause-and-effect question by traditional statistical methods, which fail to account for possible endogeneity. Modeling traffic barrier crash severity with traditional statistical methods might be biased as many parameters such as barrier’s types is endogenous to unseen factors including policy makers’ decisions in allocating those barriers. Not accounting for the possible endogeneity in the dataset and ignoring correlation between regressors’ error terms might result in biased or erroneous coefficients’ estimates. That is especially true in the presence of strong correlations across models’ error terms. Thus, this study was conducted to model barriers’ crash severity by taking into consideration the endogeneity and correlations across the models’ error terms. Here, the trivariate copula-based method was implemented to simultaneously model traffic barrier crash severity, shoulder width and barrier’s types, while accounting for interrelationships across the models’ error terms. The results provide strong evidence of correlations between the unseen factors to the selections of barrier’s types, shoulder width installation, and crash injury levels. For instance, we found in the presence of accounting for endogeneity and correlation between unseen factors, concrete traffic barrier type and higher shoulder width installation are negatively correlated with unseen factors contributing to severe barriers’ crashes That is despite the fact that the observed factors of those predictors were found to have a reverse impact on the severity of barriers’ crashes.

Highlights

  • Received: 12 August 2021Accepted: 25 October 2021Published: 1 November 2021Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.Traffic crashes have been ranked as the 7th causes of death in the U.S [1]

  • The first two subsections would present the results of two endogenous binary variables of shoulder width and barrier types

  • It would detail the results of the main model of barrier crash severity

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Traffic crashes have been ranked as the 7th causes of death in the U.S [1]. This is equivalent to $871 billion dollars based on the crash collisions costs [2]. Run-off-road (ROR) crashes account for significant proportion of those crash collision cost, especially as those crashes result in a significant proportion of severe crashes. Even though traffic barriers are one of the well-known countermeasures, which could be employed to reduce the severity of ROR crashes, the severity of barrier crashes still account for high proportion of severe crashes.

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