How Do Drivers Behave at Roundabouts in a Mixed Traffic? A Case Study Using Machine Learning
Farah Abu Hamad, Rama Hasiba, Deema Shahwan, and Huthaifa I. Ashqar

TL;DR
This study uses machine learning to classify driver behavior at roundabouts in Germany, revealing that most drivers are conservative or normal, with interactions with vulnerable road users increasing crash risks and informing safety policies.
Contribution
It introduces an unsupervised machine learning approach to classify driving styles at roundabouts in mixed traffic, highlighting behavioral patterns and safety implications.
Findings
Most drivers are classified as conservative or normal.
Drivers interacting with VRUs tend to be more conservative.
Behavioral patterns can inform safety policies and ADAS development.
Abstract
Driving behavior is considered a unique driving habit of each driver and has a significant impact on road safety. Classifying driving behavior and introducing policies based on the results can reduce the severity of crashes on the road. Roundabouts are particularly interesting because of the interconnected interaction between different road users at the area of roundabouts, which different driving behavior is hypothesized. This study investigates driving behavior at roundabouts in a mixed traffic environment using a data-driven unsupervised machine learning to classify driving behavior at three roundabouts in Germany. We used a dataset of vehicle kinematics to a group of different vehicles and vulnerable road users (VRUs) at roundabouts and classified them into three categories (i.e., conservative, normal, and aggressive). Results showed that most of the drivers proceeding through a…
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Taxonomy
TopicsTraffic and Road Safety · Safety Warnings and Signage · Traffic Prediction and Management Techniques
