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Low-rank matrix completion based malicious user detection in cooperative spectrum sensing

机译:协作频谱感知中基于低秩矩阵完成的恶意用户检测

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In a cognitive radio (CR) system, cooperative spectrum sensing (CSS) is the key to improving sensing performance in deep fading channels. In CSS networks, signals received at the secondary users (SUs) are sent to a fusion center to make a final decision of the spectrum occupancy. In this process, the presence of malicious users sending false sensing samples can severely degrade the performance of the CSS network. In this paper, with the compressive sensing (CS) technique being implemented at each SU, we build a CSS network with double sparsity property. A new malicious user detection scheme is proposed by utilizing the adaptive outlier pursuit (AOP) based low-rank matrix completion in the CSS network. In the proposed scheme, the malicious users are removed in the process of signal recovery at the fusion center. The numerical analysis of the proposed scheme is carried out and compared with an existing malicious user detection algorithm.
机译:在认知无线电(CR)系统中,协作频谱感测(CSS)是提高深衰落信道中感测性能的关键。在CSS网络中,在次要用户(SU)处接收到的信号被发送到融合中心,以做出频谱占用的最终决定。在此过程中,恶意用户发送错误的感知样本会严重降低CSS网络的性能。在本文中,通过在每个SU上实施压缩感知(CS)技术,我们构建了具有双稀疏特性的CSS网络。通过利用CSS网络中基于自适应离群值追踪(AOP)的低秩矩阵完成,提出了一种新的恶意用户检测方案。在提出的方案中,在融合中心进行信号恢复的过程中,将恶意用户去除。对该方案进行了数值分析,并与现有的恶意用户检测算法进行了比较。

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