GPS-IDS: An Anomaly-based GPS Spoofing Attack Detection Framework for Autonomous Vehicles
- URL: http://arxiv.org/abs/2405.08359v1
- Date: Tue, 14 May 2024 06:55:16 GMT
- Title: GPS-IDS: An Anomaly-based GPS Spoofing Attack Detection Framework for Autonomous Vehicles
- Authors: Murad Mehrab Abrar, Raian Islam, Shalaka Satam, Sicong Shao, Salim Hariri, Pratik Satam,
- Abstract summary: GPS networks are vulnerable to cyber-attacks like spoofing and jamming.
These threats are expected to intensify with the widespread deployment of AVs.
This paper proposes GPS Intrusion Detection System to detect GPS spoofing attacks on AVs.
- Score: 0.8906214436849204
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Autonomous Vehicles (AVs) heavily rely on sensors and communication networks like Global Positioning System (GPS) to navigate autonomously. Prior research has indicated that networks like GPS are vulnerable to cyber-attacks such as spoofing and jamming, thus posing serious risks like navigation errors and system failures. These threats are expected to intensify with the widespread deployment of AVs, making it crucial to detect and mitigate such attacks. This paper proposes GPS Intrusion Detection System, or GPS-IDS, an Anomaly Behavior Analysis (ABA)-based intrusion detection framework to detect GPS spoofing attacks on AVs. The framework uses a novel physics-based vehicle behavior model where a GPS navigation model is integrated into the conventional dynamic bicycle model for accurate AV behavior representation. Temporal features derived from this behavior model are analyzed using machine learning to detect normal and abnormal navigation behavior. The performance of the GPS-IDS framework is evaluated on the AV-GPS-Dataset - a real-world dataset collected by the team using an AV testbed. The dataset has been publicly released for the global research community. To the best of our knowledge, this dataset is the first of its kind and will serve as a useful resource to address such security challenges.
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