Road Rage and Aggressive Driving Behaviour Detection in Usage-Based Insurance Using Machine Learning

Road Rage and Aggressive Driving Behaviour Detection in Usage-Based Insurance Using Machine Learning

Subramanian Arumugam, R. Bhargavi
Copyright: © 2023 |Volume: 11 |Issue: 1 |Pages: 29
ISSN: 2166-7160|EISSN: 2166-7179|EISBN13: 9781668479919|DOI: 10.4018/IJSI.319314
Cite Article Cite Article

MLA

Arumugam, Subramanian, and R. Bhargavi. "Road Rage and Aggressive Driving Behaviour Detection in Usage-Based Insurance Using Machine Learning." IJSI vol.11, no.1 2023: pp.1-29. http://doi.org/10.4018/IJSI.319314

APA

Arumugam, S. & Bhargavi, R. (2023). Road Rage and Aggressive Driving Behaviour Detection in Usage-Based Insurance Using Machine Learning. International Journal of Software Innovation (IJSI), 11(1), 1-29. http://doi.org/10.4018/IJSI.319314

Chicago

Arumugam, Subramanian, and R. Bhargavi. "Road Rage and Aggressive Driving Behaviour Detection in Usage-Based Insurance Using Machine Learning," International Journal of Software Innovation (IJSI) 11, no.1: 1-29. http://doi.org/10.4018/IJSI.319314

Export Reference

Mendeley
Favorite Full-Issue Download

Abstract

Driving behaviour is a critical issue in modern transportation systems due to the increasing concerns about the safety of drivers, passengers, and road users. Machine learning models are capable of learning driving patterns from sensor data and recognizing individuals by their driving behaviours. This paper presents a novel framework for aggressive driving detection and driver classification based on driving events identified from GPS data collected with smartphones and heart rate of the driver captured with a wearable device. The proposed system for road rage and aggressive driving detection (RAD) is realized with an integral framework with components for data acquisition, event detection, driver classification, and model interpretability. The system is implemented by generating a prediction model by training machine learning classifiers with a dataset collected in a cohort to classify drivers into good, unhealthy, road rage, and always bad. The proposed system is to improve road safety and to customize insurance premiums in the best interest of policy holders and insurance companies.