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Unravelling incipient accidents: a machine learning prediction of incident risks in highway operations

Loretta Bortey (Infrastructure Futures Research Group, Birmingham City University, Birmingham, UK)
David J. Edwards (Infrastructure Futures Research Group, Birmingham City University, Birmingham, UK) (Faculty of Engineering and the Built Environment, University of Johannesburg, Johannesburg, South Africa)
Chris Roberts (Infrastructure Futures Research Group, Birmingham City University, Birmingham, UK) (Quantity Surveying Department, Nelson Mandela University – South Campus, Port Elizabeth, South Africa)
Iain Rillie (Highways England Company Limited Birmingham, Birmingham, UK) (Infrastructure Futures Research Group, Birmingham City University, Birmingham, UK)

Smart and Sustainable Built Environment

ISSN: 2046-6099

Article publication date: 15 October 2024

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Abstract

Purpose

Safety research has focused on drivers, pedestrians and vehicles, with scarce attention given to highway traffic officers (HTOs). This paper develops a robust prediction model which enables highway safety authorities to predict exclusive incidents occurring on the highway such as incursions and environmental hazards, respond effectively to diverse safety risk incident scenarios and aid in timely safety precautions to minimise HTO incidents.

Design/methodology/approach

Using data from a highway incident database, a supervised machine learning method that employs three algorithms [namely Support Vector Machine (SVM), Random Forests (RF) and Naïve Bayes (NB)] was applied, and their performances were comparatively analysed. Three data balancing algorithms were also applied to handle the class imbalance challenge. A five-phase sequential method, which includes (1) data collection, (2) data pre-processing, (3) model selection, (4) data balancing and (5) model evaluation, was implemented.

Findings

The findings indicate that SVM with a polynomial kernel combined with the Synthetic Minority Over-sampling Technique (SMOTE) algorithm is the best model to predict the various incidents, and the Random Under-sampling (RU) algorithm was the most inefficient in improving model accuracy. Weather/visibility, age range and location were the most significant factors in predicting highway incidents.

Originality/value

This is the first study to develop a prediction model for HTOs and utilise an incident database solely dedicated to HTOs to forecast various incident outcomes in highway operations. The prediction model will provide evidence-based information to safety officers to train HTOs on impending risks predicted by the model thereby equipping workers with resilient shocks such as awareness, anticipation and flexibility.

Keywords

Acknowledgements

The authors wish to thank National Highways (a UK Government company reporting to the Department for Transport) for funding and supporting this research.

Citation

Bortey, L., Edwards, D.J., Roberts, C. and Rillie, I. (2024), "Unravelling incipient accidents: a machine learning prediction of incident risks in highway operations", Smart and Sustainable Built Environment, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/SASBE-08-2024-0316

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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