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

机译:通过机器学习信任5G开放式RAN:粉末PAWR平台上的RF指纹识别

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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.
机译:5G和Open Radio接入网络(开放式RAN)将导致供应商中性硬件部署,以便需要额外的勤奋来管理安全风险。这种新的范例将允许相同的网络基础架构支持用于传输不同波形的虚拟网络切片,例如在不同时间的5G新的无线电,LTE,WiFi。在该多功客,多协议/波形设置中,我们提出了一种额外的物理层认证方法,通过称为RF指纹识别的技术来检测特定的发射器。我们的深度学习方法使用卷积神经网络以三重态丢失增强,其中类似/不同信号样本的示例显示给分类器通过训练持续时间。我们展示了RF指纹基站在盐湖城,USA,USA的大规模上空实验粉平台上的可行性。使用现实世界数据集,我们展示了我们的方法如何克服通过改变信道条件和协议选择所构成的挑战,该选项对于不同培训和测试日的检测准确性为99.86%。

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