Abstract

Road departure crashes tend to be hazardous, especially in rural areas like Wyoming. Traffic barriers could be installed to mitigate the severity of those crashes. However, the severity of traffic barriers crashes still persists. Besides various drivers and environmental characteristics, the roadways and barrier geometric characteristics play a critical role in the severity of barrier crashes. The Wyoming department of transportation (WYDOT) has initiated a project to identify and optimize the heights of those barriers that are below the design standard, while prioritizing them based on the monetary benefit. This is to optimize first barriers that need an immediate attention, considering the limited budget, and then all other barriers being under design. In order to account for both aspects of frequency and severity of crashes, equivalent property damage only (EPDO) was considered. The data of this type besides having an over-dispersion, exhibits excess amounts of zeroes. Thus, a two-component model was employed to provide a flexible way of addressing this problem. Beside this technique, one-component hierarchical modeling approach was considered for a comparison purpose. This paper presents an empirical cost-benefit analysis based on Bayesian hierarchical machine learning techniques. After identifying the best model in terms of the performance, deviance information criterion (DIC), the results were converted into an equation, and the equation was used for a purpose of machine learning technique. An automated method generated cost based on barriers’ current conditions, and then based on optimized barrier heights. The empirical analysis showed that cost-sensitive modeling and machine learning technique deployment could be used as an effective way for cost-benefit analysis. That could be achieved through measuring the associated costs of barriers’ enhancements, added benefits over years and consequently, barrier prioritization due to lack of available budget. A comprehensive discussion across the two-component models, zero-inflated and hurdle, is included in the manuscript.

Highlights

  • Crashes are rare, but their occurrence can have devastating impact on the passengers of vehicles.These crashes are one of the leading causes of high number of deaths worldwide, with more than a million deaths and about 50 million severe injuries annually [1]

  • The results indicated that alcohol involvement, clear weather conditions, being a female driver, and having an improper restrain increased the equivalent property damage only (EPDO) of barrier crashes

  • This section would highlight the results of zero-inflated with negative binomial (ZINB) machine learning technique in identification of benefit associated with various barriers

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Summary

Introduction

But their occurrence can have devastating impact on the passengers of vehicles. These crashes are one of the leading causes of high number of deaths worldwide, with more than a million deaths and about 50 million severe injuries annually [1]. Run off the road (ROTR) accounts for a significant proportion of the high number of fatalities. Traffic barriers could be installed with the objective of reducing the severity of ROTR crashes. The severity of those crashes still persists; traffic barrier crashes are identified as the third most common causes of fixed-object fatalities, after trees and the utility poles [2].

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