Deep Predictive Coding Neural Network for RF Anomaly Detection in Wireless Networks
Nistha Tandiya, Ahmad Jauhar, Vuk Marojevic, Jeffrey H. Reed

TL;DR
This paper introduces a deep predictive coding neural network that detects RF spectrum anomalies in wireless networks by analyzing spectrogram images, enabling real-time detection of diverse unforeseen events.
Contribution
It adapts a video prediction model for RF spectrum anomaly detection, providing a novel approach that leverages image sequence analysis for wireless security.
Findings
Effective detection of jamming, spectrum hijacking, and node failure
High detection ratio with low false alarm rate
Real-time anomaly detection demonstrated in simulations
Abstract
Intrusion detection has become one of the most critical tasks in a wireless network to prevent service outages that can take long to fix. The sheer variety of anomalous events necessitates adopting cognitive anomaly detection methods instead of the traditional signature-based detection techniques. This paper proposes an anomaly detection methodology for wireless systems that is based on monitoring and analyzing radio frequency (RF) spectrum activities. Our detection technique leverages an existing solution for the video prediction problem, and uses it on image sequences generated from monitoring the wireless spectrum. The deep predictive coding network is trained with images corresponding to the normal behavior of the system, and whenever there is an anomaly, its detection is triggered by the deviation between the actual and predicted behavior. For our analysis, we use the images…
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