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Predictive Modeling of Crash Frequency on Mountainous Highways: A Mixed-Effects Approach Applied to a Brazilian Road

Author

Listed:
  • Fernando Lima de Carvalho

    (Department of Transportation Engineering, Sao Carlos School of Engineering, University of Sao Paulo, Sao Carlos 13566-590, Brazil)

  • Ana Paula Camargo Larocca

    (Department of Transportation Engineering, Sao Carlos School of Engineering, University of Sao Paulo, Sao Carlos 13566-590, Brazil)

  • Orlando Yesid Esparza Albarracin

    (Department of Production Engineering, Mackenzie Presbyterian University, São Paulo 01302-907, Brazil)

Abstract

This study investigates the influence of roadway geometry and environmental conditions on traffic crash frequency along a 57 km mountainous segment of the BR-116/SP (Régis Bittencourt Highway), one of Brazil’s most critical freight and passenger corridors. A Generalized Linear Mixed Model (GLMM) with a Negative Binomial distribution was developed using monthly data aggregated by highway segment. Explanatory variables included traffic exposure, geometric design characteristics, and meteorological factors. The results revealed that horizontal curvature and longitudinal grade are key determinants of crash occurrence and that the interaction between these factors substantially amplifies crash risk. Specifically, segments with combined tight curvature (radius < 500 m) and moderate-to-steep grades showed up to a 4.3-fold increase in expected crash frequency compared with straight or flat sections. The model achieved satisfactory fit (RMSE = 1.273) and provided a robust framework for identifying high-risk locations. The findings highlight the importance of geometric consistency and integrated safety management strategies, contributing to sustainable transport management and offering methodological and practical contributions to data-driven road safety policies in Brazil.

Suggested Citation

  • Fernando Lima de Carvalho & Ana Paula Camargo Larocca & Orlando Yesid Esparza Albarracin, 2025. "Predictive Modeling of Crash Frequency on Mountainous Highways: A Mixed-Effects Approach Applied to a Brazilian Road," Sustainability, MDPI, vol. 18(1), pages 1-15, December.
  • Handle: RePEc:gam:jsusta:v:18:y:2025:i:1:p:395-:d:1830091
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