基于符号的射频统计指纹识别伪基站

Arslan Ali, G. Fischer
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引用次数: 9

摘要

随着各种软件定义无线电平台和移动标准的发展,蜂窝网络中假基站(FBS)的识别变得具有挑战性。因此,本文提出了一种鲁棒的统计方法来检测基于发射机硬件损伤的独特非线性。利用常规基站(RBS)的功率放大器(PA)是一种昂贵且高精度的设备,并提供复杂的数字预失真(DPD)硬件实现,相反,这种基于DPD的线性化工作在现有的SDR平台中没有花费,因此基于SDR的FBS的PA与RBS相比容易违反频谱掩模并在传输信号中引入较大的幅度和相位误差。首先,在用户设备(UE)处触发二阶基于符号的误差矢量幅值(EVM)方法来测量各种基于SDR的FBS的PA引起的非线性。然后,结合实际测量结果,提出了一种高四阶矩即峰度的方法来确定UE处接收信号的噪声结构。提取的复杂噪声云的峰度值是识别FBS的一个重要指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Symbol Based Statistical RF Fingerprinting for Fake Base Station Identification
The identification of fake base station (FBS) in a cellular network has become challenging with the development of various software defined radio platforms and mobile standards. This paper, therefore, presents robust statistical approach to detect unique non-linearities based hardware impairments of the transmitter. Employing the fact that power amplifier (PA) of a regular base station (RBS) is a costly and high precision device with a provision of sophisticated digital predistortion (DPD) hardware implementation and in contrary, this DPD based linearization effort is not spent in existing SDR platforms so PA of an SDR based FBS tends to violate the spectral mask and introduces large amplitude and phase errors in the transmitted signal compared to the RBS. At first, a second order symbol-based error vector magnitude (EVM) approach is triggered at the user equipment (UE) to measure the non-linearity induced by the PA of various SDR based FBS. Afterward, a higher fourth order moment i.e. kurtosis approach has been proposed along with the actual measurement results to determine the noise structuredness of the received signal at UE. The kurtosis on magnitude of extracted complex noise cloud is found to be a strong indicator to identify the FBS.
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