Treffer: Using machine learning to understand driving behavior patterns.

Title:
Using machine learning to understand driving behavior patterns.
Authors:
Valente, Jorge1 (AUTHOR), Ramalho, Cláudia1 (AUTHOR), Vinha, Pedro1 (AUTHOR), Mora, Carlos2 (AUTHOR), Jardim, Sandra2 (AUTHOR) sandra.jardim@ipt.pt
Source:
Procedia Computer Science. 2024, Vol. 239, p1823-1830. 8p.
Database:
Supplemental Index

Weitere Informationen

Driver behavior is one of the principal factors associated with road accidents. Much research to date focusing on Machine learning technology has been successfully applied to identifying driving styles and recognizing unsafe behaviors. In this paper, the development of an android mobile application (Driver Alert) is described, with the aim of collecting data from mobile phone sensors data to identify certain patterns and understand drivers' behaviors. Additional information was recorded regarding weather and traffic information, using public API's to complement the data directly collected from the vehicle. Four machine learning models (K-Means, Algorithm Agglomerative Hierarchical, Random Forest and Support Vector Machines) were tested and compared to identify different driver profiles. A native mobile application named DriverAlert was developed to support collect data and make it available, through an online dashboard, to drivers and researchers. Due to the available tools and libraries, it possesses, Python language was used, as it is a powerful programming language for workloads in data science, machine learning, and scientific computing. [ABSTRACT FROM AUTHOR]