Objective: Evaluating the safety risks at unsignalized intersections becomes increasingly complex amid conditions of dense traffic flow, a heterogeneous mix of vehicles, nonadherence to lane demarcations, and reactive driving techniques. Understanding driver behavior under such varying circumstances is crucial for accurately assessing the potential hazards present at these intersections. The study aims to assess the safety of unsignalized intersections by incorporating both spatial and temporal variables under heterogeneous conditions.
Methods: The study presents a new safety indicator, dynamic postencroachment time (DPET), formulated to encapsulate both the spatial and temporal variables of heterogeneous traffic. Six unsignalized intersections were selected as the study areas in Assam, India, to assess the new indicator for merging and crossing conflicts. A videographic survey of the intersections was done to obtain vehicles' trajectory data and capture their conflict behaviors based on their position, speed, and steering angle. The peak over threshold (POT) approach of extreme value theory (EVT) was used to examine the feasibility of the indicator, and the methodology was validated using 4 years of crash data.
Results: The result showed that a common threshold of 0.7 s from the POT approach is sufficient to identify severe conflicts. Furthermore, the threshold level yielded a shape parameter greater than -0.5, affirming that the maximum likelihood estimates retain the standard asymptotic attributes associated with EVT. The DPET approach estimated more crashes than observed fatal crashes, reflecting its ability to capture extreme events at a lower threshold. In comparison, the traditional PET approach estimated fewer crashes due to higher values influenced by evasive actions. Graphical analysis demonstrated a strong correlation between the observed crash data over 4 years and the estimated crashes derived from the EVT models.
Conclusions: Integrating spatial variables in PET analysis provides a more robust measure for conflict analysis and assessment of potential traffic conflicts at unsignalized intersections. The subsequent validation of the model with actual crash data highlights its practical applicability in enhancing road safety. The findings from the study provide a promising direction for future research and the potential for widespread implementation in traffic management systems.
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http://dx.doi.org/10.1080/15389588.2024.2416485 | DOI Listing |
Sensors (Basel)
December 2024
Computer Engineering, Brandenburg University of Technology, Cottbus-Senftenberg, 03046 Cottbus, Germany.
Occasionally, four cars arrive at the four legs of an unsignalized intersection at the same time or almost at the same time. If each lane has a stop sign, all four cars are required to stop. In such instances, gestures are used to communicate approval for one vehicle to leave.
View Article and Find Full Text PDFAccid Anal Prev
March 2025
Department of Civil and Environmental Engineering, Michigan State University, Lansing, MI 48910, USA. Electronic address:
Navigating intersections is a major challenge for autonomous vehicles (AVs) because of the complex interactions between different roadway user types, conflicting movements, and diverse operational and geometric features. This study investigated intersection-related AV-involved traffic conflicts by analyzing the Arogoverse-2 motion forecasting dataset to understand the driving behavior of AVs at intersections. The conflict scenarios were categorized into AV-involved and no AV conflict scenarios.
View Article and Find Full Text PDFTraffic Inj Prev
November 2024
Department of Civil Engineering, National Institute of Technology Silchar, Silchar, India.
Objective: Evaluating the safety risks at unsignalized intersections becomes increasingly complex amid conditions of dense traffic flow, a heterogeneous mix of vehicles, nonadherence to lane demarcations, and reactive driving techniques. Understanding driver behavior under such varying circumstances is crucial for accurately assessing the potential hazards present at these intersections. The study aims to assess the safety of unsignalized intersections by incorporating both spatial and temporal variables under heterogeneous conditions.
View Article and Find Full Text PDFTraffic Inj Prev
November 2024
Department of Civil Engineering, Indian Institute of Technology Jammu (IIT-Jammu), Jammu, India.
Objective: In a developing country like India, where the share of motorcyclists is increasing exponentially, their road crashes are also rising at an alarming rate. The majority of these road crashes occur at unsignalized intersections. Therefore, the present study aims to analyze the safety of motorcyclists at unsignalized three-arm intersections under a heterogeneous traffic environment using a fully automated trajectory data extraction tool.
View Article and Find Full Text PDFTraffic Inj Prev
October 2024
Department of Civil Engineering, Indian Institute of Technology (IIT) Roorkee, Roorkee, India.
Objectives: This study aims to develop and validate a novel deep-learning model that predicts the severity of pedestrian-vehicle interactions at unsignalized intersections, distinctively integrating Transformer-based models with Multilayer Perceptrons (MLP). This approach leverages advanced feature analysis capabilities, offering a more direct and interpretable method than traditional models.
Methods: High-resolution optical cameras recorded detailed pedestrian and vehicle movements at study sites, with data processed to extract trajectories and convert them into real-world coordinates precise georeferencing.
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