Litcius/Paper detail

Trust in 5G Open RANs through Machine Learning: RF Fingerprinting on the POWDER PAWR Platform

Guillem Reus-Muns, Dheryta Jaisinghani, Kunal Sankhe, Kaushik Chowdhury

202095 citationsDOI

Abstract

5G and open radio access networks (Open RANs) will result in vendor-neutral hardware deployment that will require additional diligence towards managing security risks. This new paradigm will allow the same network infrastructure to support virtual network slices for transmit different waveforms, such as 5G New Radio, LTE, WiFi, at different times. In this multivendor, multi-protocol/waveform setting, we propose an additional physical layer authentication method that detects a specific emitter through a technique called as RF fingerprinting. Our deep learning approach uses convolutional neural networks augmented with triplet loss, where examples of similar/dissimilar signal samples are shown to the classifier over the training duration. We demonstrate the feasibility of RF fingerprinting base stations over the large-scale over-the-air experimental POWDER platform in Salt Lake City, Utah, USA. Using real world datasets, we show how our approach overcomes the challenges posed by changing channel conditions and protocol choices with 99.86% detection accuracy for different training and testing days.

Topics & Concepts

Computer scienceConvolutional neural networkSoftware deploymentBase stationPhysical layerDeep learningAuthentication (law)Radio frequencyProtocol (science)Computer networkReal-time computingArtificial intelligenceComputer securityWirelessTelecommunicationsMedicineAlternative medicinePathologyOperating systemWireless Signal Modulation ClassificationWireless Communication Security TechniquesRadar Systems and Signal Processing