Gotta Detect 'Em All: Fake Base Station and Multi-Step Attack Detection in Cellular Networks
Kazi Samin Mubasshir, Imtiaz Karim, Elisa Bertino

TL;DR
This paper introduces FBSDetector, a machine learning-based system that detects fake base stations and multi-step attacks in cellular networks using network traces, achieving high accuracy and low false positives, and is deployable on user devices.
Contribution
The paper presents the first large-scale datasets for FBS and MSA detection, and develops a novel ML framework that effectively detects these threats in real-world cellular environments.
Findings
FBSDetector achieves 96% accuracy in detecting fake base stations.
It maintains a false positive rate below 3% for both FBS and MSAs.
The system is deployable on mobile devices for real-time protection.
Abstract
Fake base stations (FBSes) pose a significant security threat by impersonating legitimate base stations (BSes). Though efforts have been made to defeat this threat, up to this day, the presence of FBSes and the multi-step attacks (MSAs) stemming from them can lead to unauthorized surveillance, interception of sensitive information, and disruption of network services. Therefore, detecting these malicious entities is crucial to ensure the security and reliability of cellular networks. Traditional detection methods often rely on additional hardware, rules, signal scanning, changing protocol specifications, or cryptographic mechanisms that have limitations and incur huge infrastructure costs. In this paper, we develop FBSDetector-an effective and efficient detection solution that can reliably detect FBSes and MSAs from layer-3 network traces using machine learning (ML) at the user equipment…
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Taxonomy
TopicsInternet Traffic Analysis and Secure E-voting · Network Security and Intrusion Detection · Advanced Malware Detection Techniques
