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Main Authors: Baharlouei, Hamideh, Makanju, Adetokunbo, Zincir-Heywood, Nur
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.08564
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author Baharlouei, Hamideh
Makanju, Adetokunbo
Zincir-Heywood, Nur
author_facet Baharlouei, Hamideh
Makanju, Adetokunbo
Zincir-Heywood, Nur
contents In the domain of Vehicular Ad hoc Networks (VANETs), where the imperative of having a real-world malicious detector capable of detecting attacks in real-time and unveiling their perpetrators is crucial, our study introduces a system with this goal. This system is designed for real-time detection of malicious behavior, addressing the critical need to first identify the onset of attacks and subsequently the responsible actors. Prior work in this area have never addressed both requirements, which we believe are necessary for real world deployment, simultaneously. By seamlessly integrating statistical and machine learning techniques, the proposed system prioritizes simplicity and efficiency. It excels in swiftly detecting attack onsets with a remarkable F1-score of 99.66%, subsequently identifying malicious vehicles with an average F1-score of approximately 97.85%. Incorporating federated learning in both stages enhances privacy and improves the efficiency of malicious node detection, effectively reducing the false negative rate.
format Preprint
id arxiv_https___arxiv_org_abs_2401_08564
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ADVENT: Attack/Anomaly Detection in VANETs
Baharlouei, Hamideh
Makanju, Adetokunbo
Zincir-Heywood, Nur
Cryptography and Security
Machine Learning
In the domain of Vehicular Ad hoc Networks (VANETs), where the imperative of having a real-world malicious detector capable of detecting attacks in real-time and unveiling their perpetrators is crucial, our study introduces a system with this goal. This system is designed for real-time detection of malicious behavior, addressing the critical need to first identify the onset of attacks and subsequently the responsible actors. Prior work in this area have never addressed both requirements, which we believe are necessary for real world deployment, simultaneously. By seamlessly integrating statistical and machine learning techniques, the proposed system prioritizes simplicity and efficiency. It excels in swiftly detecting attack onsets with a remarkable F1-score of 99.66%, subsequently identifying malicious vehicles with an average F1-score of approximately 97.85%. Incorporating federated learning in both stages enhances privacy and improves the efficiency of malicious node detection, effectively reducing the false negative rate.
title ADVENT: Attack/Anomaly Detection in VANETs
topic Cryptography and Security
Machine Learning
url https://arxiv.org/abs/2401.08564