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Research Article

Risk assessment of rear-end crashes by incorporating vehicular heterogeneity into Bayesian hierarchical extreme value models

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Article: 2323058 | Received 27 Oct 2023, Accepted 21 Feb 2024, Published online: 01 Mar 2024
 

Abstract

Extreme value theory (EVT) has been extensively used to assess road safety with traffic conflicts. However, most studies used pooled models that do not account for vehicle heterogeneity which is characterised by different static and dynamic vehicle parameters such as size, speed, acceleration, and braking capacity. This study proposes a risk assessment technique for rear-end crashes while incorporating vehicular heterogeneity. Video-based trajectory data were collected at four uncontrolled intersections, and conflicts were estimated using modified time-to-collision (MTTC). The crash risk was derived from the observed conflicts using pooled as well as Bayesian hierarchical EVT models. Unlike the pooled model, the hierarchical model revealed that crash risk varies across leader-follower pairs. Interactions that involve cars or light commercial vehicles with slow-moving vehicles are riskier. This study highlights the importance of incorporating vehicular heterogeneity in crash risk assessment. The proposed methodology can be utilised for more accurate risk assessment in heterogeneous traffic.

Acknowledgements

We would like to thank the Department of Civil Engineering at IIT (BHU) for the support received during their study. We also acknowledge the valuable feedback provided by the anonymous reviewers at Transportmetrica B: Transport Dynamics on previous versions of this manuscript.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Funding details

No specific grant was received for this research by any public, private, or non-profit funding organizations.

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