Quantum-Classical Hybrid Framework for Zero-Day Time-Push GNSS Spoofing Detection
Abyad Enan, Mashrur Chowdhury, Sagar Dasgupta, Mizanur Rahman

TL;DR
This paper introduces a hybrid quantum-classical autoencoder for zero-day GNSS spoofing detection, capable of identifying unseen time-push attacks with high accuracy without prior spoofed data exposure.
Contribution
The paper presents a novel hybrid quantum-classical autoencoder that detects zero-day GNSS spoofing attacks, outperforming classical models and existing methods in accuracy and false negative rates.
Findings
Achieves 97.71% average detection accuracy for unseen spoofing attacks.
Outperforms classical and existing unsupervised models in detection tasks.
Effective in detecting sophisticated time-push spoofing attacks.
Abstract
Global Navigation Satellite Systems (GNSS) are critical for Positioning, Navigation, and Timing (PNT) applications. However, GNSS are highly vulnerable to spoofing attacks, where adversaries transmit counterfeit signals to mislead receivers. Such attacks can lead to severe consequences, including misdirected navigation, compromised data integrity, and operational disruptions. Most existing spoofing detection methods depend on supervised learning techniques and struggle to detect novel, evolved, and unseen attacks. To overcome this limitation, we develop a zero-day spoofing detection method using a Hybrid Quantum-Classical Autoencoder (HQC-AE), trained solely on authentic GNSS signals without exposure to spoofed data. By leveraging features extracted during the tracking stage, our method enables proactive detection before PNT solutions are computed. We focus on spoofing detection in…
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