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Objectives: The study seeks to explore rear-end collision risks in multi-vehicle car-following scenarios under adverse weather conditions by proposing an integrated framework.
Methods: The integrated framework is applied to a case study of three-vehicle car-following scenario in Norway without loss of generality. For identifying car-following groups with extreme collision risks, the collision risk of each group in the raw dataset is evaluated using an extended probabilistic driving risk field. Quantitative collision risks are analyzed to fit the Generalized Pareto distribution, and high-risk scenarios screened mean residual life plots and threshold stability plots. To determine risk-contributing factors, Generalized Pareto Regression Trees (GPRT) are constructed to pinpoint significant influences on rear-end collision risks. By integrating the classification and regression trees with extreme value theory, the GPRT discards data assumptions and covariate continuity requirements of most extreme value analysis (e.g., extreme quantile regression). Moreover, the GPRT not only identifies the hierarchical structure of variables affecting rear-end collision risks but also determines risk-impact thresholds for covariates, offering superior interpretability and engineering applicability.
Results: The results show that revealed risks conform well to the Generalized Pareto distribution, allowing for the formulating Generalized Pareto regression trees. Compared to the Generalized Additive Model (GAM) and Negative Binomial Regression (NBR) methods, the GPRT approach demonstrates superior performance in balancing risk fitting accuracy and model complexity. Vehicle speeds, weights, and headways emerge as critical factors for collision risks under clear, rainy, and snowy conditions. As weather conditions deteriorate from clear to rainy or snowy, the influence of vehicle speed and weight diminishes, while the influence of headway and road surface conditions becomes more pronounced. Collision risks are high on sunny days, regardless of whether the middle vehicles of three-vehicle groups are light or heavy vehicles.
Conclusions: The integrated evaluation framework developed in this study provides a tool for car-following safety assessment under extreme weather conditions.
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http://dx.doi.org/10.1080/15389588.2025.2517386 | DOI Listing |
Introduction: Some medical conditions may be associated with increased risks of collision and poor performance while driving. Traffic crashes could result in fatalities and injuries. The Australian national medical guidelines do not provide specific instructions for all medical conditions.
View Article and Find Full Text PDFJ Safety Res
September 2025
Department of Emergency Medicine, University of British Columbia, Vancouver General Hospital, Vancouver, BC, Canada. Electronic address:
Introduction: Older adults are increasingly involved in motor vehicle collisions (MVCs). Hypnotics are known to impair driving ability. This study investigated the prevalence of hypnotics use among older adult drivers involved in MVCs and evaluated their impact on injury severity and co-prevalence with other central nervous system (CNS) depressants.
View Article and Find Full Text PDFJ Safety Res
September 2025
Department of Civil Engineering, University of Louisiana, Lafayette, LA 70503, USA.
Introduction: Motorized rickshaws are a common mode of urban transportation in many low and middle-income countries, particularly in South Asia (e.g., Pakistan and India).
View Article and Find Full Text PDFJ Safety Res
September 2025
Operations Analysis and Essential Data, TriMet, United States.
Unlabelled: Recent research highlights significant shifts in travel patterns, traffic volumes, and safety measures due to the COVID-19 pandemic. Early findings suggest a nationwide decrease in crashes (22.0%) and injuries (16.
View Article and Find Full Text PDFAccid Anal Prev
September 2025
School of Vehicle and Mobility, Tsinghua University, 100084 Beijing, China. Electronic address:
Traffic accidents pose a significant threat to human life and property, and with the increasing presence of connected and autonomous vehicles (CAVs), effective risk assessment has become more critical. Current safety metrics, often limited to longitudinal or lateral assessments, fail to address omnidirectional risks or account for the uncertainties associated with vehicle intentions. This paper introduces a new omnidirectional safety metric, Interactive Risk (IR), which combines the concept of the driving risk field with multimodal trajectory prediction.
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