Abstract

This study describes four statistical models—Poisson; Negative Binomial; Zero-Inflated Poisson; and Zero-Inflated Negative Binomial—which were devised in order to examine traffic accidents and estimate the best probability estimating model in terms of future risk assessment at interurban road sections. The study was conducted on four sets of fixed-length sections of the road network: 500, 750, 1000, and 1500 m. The contribution of transportation and spatial parameters as predictors of road accident rates was evaluated for all four data sets separately. In addition, the Empirical Bayes method was applied. This method uses historical accidents information, allowing regression to the mean phenomenon so as to improve model results. The study was performed using Geographic Information System (GIS) software. Other analyses, such as statistical analyses combined with spatial parameters, interactions, and examination of other geographical areas, were also performed. The results showed that the short road sections data sets of 500 and 750 m yielded the most stable models. This allows focused treatment on short sections of the road network as a way to save resources (enforcement; education and information; finance) and potentially gain maximum benefit at minimum investment. It was found that the significant parameters affecting accident rates are: curvature of the road section; the region and traffic volume. An interaction between the region and traffic volume was also found.

Highlights

  • According to the World Health Organization, 600,000 people die and 15 million are injured every year in traffic accidents [1]

  • This paper described the development of Geographic Information System (GIS)-based prediction models for the assessment of traffic accidents in highway segments, using spatial and traffic-based parameters

  • This paper described the development of a GIS-based prediction model for the assessment of traffic accidents in highway segments, using spatial and traffic-based parameters

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Summary

Introduction

According to the World Health Organization, 600,000 people die and 15 million are injured every year in traffic accidents [1]. The authors of [17,18] were among the first who investigated the relationship between vehicle types and physical road characteristics using both linear and non-linear models In their research, they examined the relationships between physical variables of the road (e.g., segment length, curvature, shoulder width and slope), transportation variables (e.g., traffic volume, truck travel), and the number of accidents involving trucks within a particular section. Upon testing the Poisson distribution models, their study revealed that when incorporated into very short road sections (

Interactions between variables
Study Area and Dataset Construction
Modeling
Detecting Significant Parameters
Expected Accidents—Real Accidents Validation
Comparison of Training and Control Models
TOST Test for Equivalence
Proportions of Probabilities Comparison
Optimal Models
Model Parameters
Curvature
Region
Prediction Maps
Reproducibility and Opportunities for Further Study
Findings
Conclusions
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