Investigating vehicle roadway usage patterns on the Shanghai urban expressway system and their impacts on traffic safety

Journal Article (2021)
Author(s)

Rongjie Yu (Ministry of Education, Shanghai, Tongji University)

Yiyun Wang (Ministry of Education, Shanghai, Tongji University)

Mohammed Quddus (Loughborough University)

Jian Li (Ministry of Education, Shanghai, Tongji University)

Xuesong Wang (Tongji University, Ministry of Education, Shanghai)

Ye Tian (Ministry of Education, Shanghai, Tongji University)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1080/15568318.2020.1722869 Final published version
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Publication Year
2021
Language
English
Affiliation
External organisation
Journal title
International Journal of Sustainable Transportation
Issue number
3
Volume number
15
Pages (from-to)
217-228
Downloads counter
193

Abstract

The urban expressway system serves as a key role in the roadway transportation system. It provides an efficient and comfortable approach for long-distance travel within the city. However, the safety status of the urban expressways is becoming a critical issue as the high-frequent traffic crashes have severely influenced the traffic operations. Among the safety influencing factors, including traffic operational parameters (such as traffic speed and volume), geometric features and traffic participants’ characteristics (such as vehicle roadway usage patterns), the traffic operational parameters and geometric features have been widely investigated. However, the impacts of traffic participants’ characteristics on traffic safety have never been examined. This unprecedented study aims to link vehicles’ roadway usage patterns with traffic safety through crash frequency analyses. First, the roadway usage patterns were identified using Latent Class Cluster Analysis (LCCA) based on their traveling rates. Then, the hourly-based crash frequency analysis data were formulated with traffic operational parameters, geometric features and crash data. Finally, crash frequency analysis models were developed to unveil the relationships between the crash occurrence and their influencing factors. The modeling results showed that the Random Effects Hurdle Negative Binomial Model (REHNBM) provided better goodness-of-fit. And it concluded that higher proportions of vehicles with low-level roadway usage pattern would substantially enhance the possibility of crash occurrence; while the proportions of vehicles with the medium-high-level roadway usage pattern had negative impacts on crash occurrence probability. Finally, safety improvement recommendations and strategies based on the modeling results were put forward.