IQ失衡对物联网无线设备物理层认证的影响评估

G. Baldini, Raimondo Giuliani, C. Gentile
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引用次数: 3

摘要

利用无线设备固有的物理特性对其进行身份验证是近年来学术界研究的热点。其概念是,无线设备的材料和电子电路组成的微小差异会产生在空中传输的射频(RF)信号中的特定特征。虽然这些差异通常与阻碍无线服务的正确运作无关,但一旦它们被射频接收器收集和处理,它们就足以唯一地识别模型或电子设备本身。研究人员已经应用了各种技术从空间信号中提取特征,包括统计分析和机器学习算法。在理想条件下,研究文献中给出的分类准确率通常高于95%,但在非视线条件下,分类准确率会显著下降。研究界已经研究了低信噪比(SNR)或衰落效应对分类性能的影响,但射频接收器本身引入的干扰很少受到关注。在本文中,我们研究了射频接收器智商失衡对分类性能的影响,这在文献中还没有尝试过。通过从11个物联网无线设备收集的信号来评估这种影响,使用不同的IQ不平衡值来表示信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An assessment of the impact of IQ imbalances on the physical layer authentication of IoT wireless devices
Physical Layer Authentication of wireless devices using their intrinsic physical features has been investigated in recent years by the research community. The concept is that small differences in the material and the composition of the electronic circuits of the wireless devices produce specific features in the Radio Frequency (RF) signal transmitted over the air. While these differences are usually not relevant to obstacle the correct functioning of wireless services, they are significant enough to uniquely identify the model or the electronic device itself once they are collected and processed by a RF receiver. Researchers have applied a variety of techniques to extract the features from the signal in space including statistical analysis and machine learning algorithms. In ideal conditions, the classification accuracy presented in the research literature is often higher than 95% but it can degrade significantly in the presence of non Line of Sight conditions. The research community has investigated the impact of low Signal to Noise (SNR) ratios or fading effects on the classification performance, but the disturbances introduced by the RF receiver itself have received little attention. In this paper, we investigate the impact of IQ imbalances of the RF receiver on the classification performance, which has not been attempted in the literature, yet. This impact is evaluated by means of the signals collected from 11 IoT wireless devices, using different representations of the signal for different values of the IQ imbalances.
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