Vehicular Safety System : Driving Behaviour Identification Based on V2V Data Exchange System

Authors

  • Dr. Hussein Department of Computer Engineering Techniques, Al-Mustaqbal University College, Babil 51001, Iraq
  • Ali Hussein Shamman Department of Computer Engineering Techniques, Al-Mustaqbal University College, Babil, IRAQ
  • Hussein Ali Department of Computer Engineering Techniques, Al-Mustaqbal University College, Babil, IRAQ

Keywords:

Aggressive driving, V2V, Acceleration, Speed and GPS

Abstract

Driver behavior is a determining factor in more than 90% of road accidents. Previous research regarding the relationship between speeding behavior and crashes suggests that drivers who engage in frequent and extreme speeding behavior are overinvolved in crashes. Consequently, there is a significant benefit in identifying drivers who engage in unsafe driving practices to enhance road safety. The proposed method uses continuously logged driving data to collect vehicle operation information, including vehicle speed, engine revolutions per minute (RPM), throttle position, and calculated engine load via the on-board diagnostics (OBD) interface. Then the proposed method makes use of severity stratification of acceleration to create a driving behavior classification model to determine whether the current driving behavior belongs to safe driving or not. The safe driving behavior is characterized by an acceleration value that ranges from about ±2 m/s2. The risk of collision starts from ±4 m/s2, which represents in this study the aggressive drivers. By measuring the in-vehicle accelerations, it is possible to categorize the driving behavior into four main classes based on real-time experiments: safe drivers, normal, aggressive, and dangerous drivers. Subsequently, the driver’s characteristics derived from the driver model are embedded into the advanced driver assistance systems. When the vehicle is in a risk situation, the system based on nRF24L01 + power amplifier/low noise amplifier PA/LNA, global positioning system GPS, and OBD-II passes a signal to the driver using a dedicated liquid-crystal display LCD and light signal. Experimental results show the correctness of the proposed driving behavior analysis method can achieve an average of 90% accuracy rate in various driving scenarios.

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Published

07-06-2022

How to Cite

Ameen, H. A. ., Shamman, A. H., & Ali, H. . (2022). Vehicular Safety System : Driving Behaviour Identification Based on V2V Data Exchange System. Evolution of Information, Communication and Computing System, 3(1), 14-32. https://publisher.uthm.edu.my/bookseries/index.php/eiccs/article/view/31