Vehicles (Apr 2021)

Comparative Analysis of Machine Learning-Based Approaches for Anomaly Detection in Vehicular Data

  • Konstantinos Demestichas,
  • Theodoros Alexakis,
  • Nikolaos Peppes,
  • Evgenia Adamopoulou

DOI
https://doi.org/10.3390/vehicles3020011
Journal volume & issue
Vol. 3, no. 2
pp. 171 – 186

Abstract

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The rapid growth of demand for transportation, both for people and goods, as well as the massive accumulation of population in urban centers has augmented the need for the development of smart transport systems. One of the needs that have arisen is to efficiently monitor and evaluate driving behavior, so as to increase safety, provide alarms, and avoid accidents. Capitalizing on the evolution of Information and Communication Technologies (ICT), the development of intelligent vehicles and platforms in this domain is getting more feasible than ever. Nowadays, vehicles, as well as highways, are equipped with sensors that collect a variety of data, such as speed, acceleration, fuel consumption, direction, and more. The methodology presented in this paper combines both advanced machine learning algorithms and open-source based tools to correlate different data flows originating from vehicles. Particularly, the data gathered from different vehicles are processed and analyzed with the utilization of machine learning techniques in order to detect abnormalities in driving behavior. Results from different suitable techniques are presented and compared, using an extensive real-world dataset containing field measurements. The results feature the application of both supervised univariate anomaly detection and unsupervised multivariate anomaly detection methods in the same dataset.

Keywords