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On Identifying Primary User Emulation Attacks in Cognitive Radio Systems Using Nonparametric Bayesian Classification

机译:使用非参数贝叶斯分类识别认知无线电系统中的主要用户仿真攻击

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摘要

Primary user emulation (PUE) attacks, where attackers mimic the signals of primary users (PUs), can cause significant performance degradation in cognitive radio (CR) systems. Detection of the presence of PUE attackers is thus an important problem. In this paper, using device-specific features, we propose a passive, nonparametric classification method to determine the number of transmitting devices in the PU spectrum. Our method, called DECLOAK, is passive since the sensing device listens and captures signals without injecting any signal to the wireless environment. It is nonparametric because the number of active devices needs not to be known as a priori. Channel independent features are selected forming fingerprints for devices, which cannot be altered postproduction. The infinite Gaussian mixture model (IGMM) is adopted and a modified collapsed Gibbs sampling method is proposed to classify the extracted fingerprints. Due to its unsupervised nature, there is no need to collect legitimate PU fingerprints. In combination with received power and device MAC address, we show through simulation studies that the proposed method can efficiently detect the PUE attack. The performance of DECLOAK is also shown to be superior than that of the classical non-parametric mean shift (MS) based clustering method.
机译:攻击者模仿主要用户(PU)的信号的主要用户仿真(PUE)攻击可能会导致认知无线电(CR)系统的性能显着下降。因此,检测PUE攻击者的存在是一个重要的问题。在本文中,使用特定于设备的功能,我们提出了一种被动的非参数分类方法来确定PU频谱中的发送设备数量。我们的称为DECLOAK的方法是被动的,因为传感设备可以监听和捕获信号,而不会向无线环境注入任何信号。这是非参数的,因为有源设备的数量无需先验。选择与通道无关的功能以形成设备的指纹,这些指纹不能在后期制作中更改。采用无限高斯混合模型(IGMM),提出了一种改进的折叠Gibbs采样方法对提取的指纹进行分类。由于其不受监管的性质,因此无需收集合法的PU指纹。结合接收功率和设备MAC地址,我们通过仿真研究表明,该方法可以有效地检测PUE攻击。还显示了DECLOAK的性能优于基于经典非参数均值漂移(MS)的聚类方法。

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