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Auteurs principaux: Lebaku, Prathyush Kumar Reddy, Gao, Lu, Sun, Jingran, Wang, Xingju, Kang, Xuejian
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2506.16485
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author Lebaku, Prathyush Kumar Reddy
Gao, Lu
Sun, Jingran
Wang, Xingju
Kang, Xuejian
author_facet Lebaku, Prathyush Kumar Reddy
Gao, Lu
Sun, Jingran
Wang, Xingju
Kang, Xuejian
contents Road safety is impacted by a range of factors that can be categorized into human, vehicle, and roadway/environmental elements. This research explores the connection between pavement performance and road safety, particularly in relation to crash frequency and severity, using data from the Iowa Department of Transportation (DOT) for 2022. By merging crash data with pavement inventory data, we conduct a spatial analysis that incorporates the geographical coordinates of crash sites with the conditions of road segments. Statistical methods are applied to compare crash rates and severity across various pavement condition categories. To identify the most influential factors affecting crash rates and severity, we use machine learning models along with negative binomial and ordered probit regression models. The study's key findings reveal that higher speed limits, well-maintained roads, and improved friction scores correlate with lower crash rates, whereas rougher roads and adverse weather conditions are linked to higher crash severity. This analysis emphasizes the critical need for prioritizing pavement maintenance and integrating safety-focused design principles to boost road safety. Moreover, the study underscores the ongoing need for research to better understand and address the intricate relationship between pavement performance and road safety.
format Preprint
id arxiv_https___arxiv_org_abs_2506_16485
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Assessing the Influence of Pavement Performance on Road Safety Through Crash Frequency and Severity Analysis
Lebaku, Prathyush Kumar Reddy
Gao, Lu
Sun, Jingran
Wang, Xingju
Kang, Xuejian
Physics and Society
Road safety is impacted by a range of factors that can be categorized into human, vehicle, and roadway/environmental elements. This research explores the connection between pavement performance and road safety, particularly in relation to crash frequency and severity, using data from the Iowa Department of Transportation (DOT) for 2022. By merging crash data with pavement inventory data, we conduct a spatial analysis that incorporates the geographical coordinates of crash sites with the conditions of road segments. Statistical methods are applied to compare crash rates and severity across various pavement condition categories. To identify the most influential factors affecting crash rates and severity, we use machine learning models along with negative binomial and ordered probit regression models. The study's key findings reveal that higher speed limits, well-maintained roads, and improved friction scores correlate with lower crash rates, whereas rougher roads and adverse weather conditions are linked to higher crash severity. This analysis emphasizes the critical need for prioritizing pavement maintenance and integrating safety-focused design principles to boost road safety. Moreover, the study underscores the ongoing need for research to better understand and address the intricate relationship between pavement performance and road safety.
title Assessing the Influence of Pavement Performance on Road Safety Through Crash Frequency and Severity Analysis
topic Physics and Society
url https://arxiv.org/abs/2506.16485