Hybrid PLS-ML Authentication Scheme for V2I Communication Networks
Hala Amin, Jawaher Kaldari, Nora Mohamed, Waqas Aman, Saif Al-Kuwari

TL;DR
This paper introduces a hybrid PLS-ML authentication scheme for V2I networks that uses vehicle position and ML models to improve security, outperforming angle-based methods in detecting malicious nodes.
Contribution
A novel position-based authentication scheme combining PLS and ML techniques for enhanced security in vehicular networks.
Findings
Outperforms angle of arrival-based schemes in detecting malicious vehicles.
Support vector regression and decision tree effectively track vehicle mobility.
Achieves lower missed detection probabilities compared to baseline methods.
Abstract
Vehicular communication networks are rapidly emerging as vehicles become smarter. However, these networks are increasingly susceptible to various attacks. The situation is exacerbated by the rise in automated vehicles complicates, emphasizing the need for security and authentication measures to ensure safe and effective traffic management. In this paper, we propose a novel hybrid physical layer security (PLS)-machine learning (ML) authentication scheme by exploiting the position of the transmitter vehicle as a device fingerprint. We use a time-of-arrival (ToA) based localization mechanism where the ToA is estimated at roadside units (RSUs), and the coordinates of the transmitter vehicle are extracted at the base station (BS).Furthermore, to track the mobility of the moving legitimate vehicle, we use ML model trained on several system parameters. We try two ML models for this purpose,…
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Taxonomy
TopicsBiometric Identification and Security · Wireless Signal Modulation Classification · User Authentication and Security Systems
MethodsBalanced Selection
