Non-cooperative and cooperative PUEA detection using physical layer in mobile OFDM-based cognitive radio networks

Trong Nghia Le, Wen-Long Chin, Ya-Hsuan Lin
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引用次数: 9

Abstract

This work proposes novel non-cooperative and cooperative detection methods for identifying primary user emulation attacks (PUEAs) based on a channel-tap power in mobile OFDM-based CR networks. The channel-tap power is utilized as a radio-frequency fingerprint (RFF) to directly detect users via physical (PHY) layer. A channel-based detection for the noncooperative detection is proposed using the Neyman-Pearson test to discriminate between the primary users (PUs) and PUEAs. To improve the detection performance in the shadowing and fading environment, the cooperative detection scheme using the fixed sample size test (FSST) is devised. The proposed methods helps PHY layer completely detect the identities of PUs and PUEAs. From simulation results, for a mobile CR speed of 70 km/h, SNR=-5 dB, and false alarm probability of 0.03, the FSST using ten cooperative nodes can achieve the detection probability of 0.99, which is increased by 1.94 times that of a single node.
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基于移动ofdm的认知无线网络中基于物理层的非合作和合作PUEA检测
本文提出了一种新的非合作和合作检测方法,用于识别基于移动ofdm的CR网络中基于信道分接功率的主用户仿真攻击(puea)。通道分接电源被用作射频指纹(RFF),通过物理层直接检测用户。提出了一种基于信道的非合作检测方法,使用Neyman-Pearson测试来区分主用户(pu)和puea。为了提高在阴影和衰落环境下的检测性能,设计了基于固定样本量测试(FSST)的协同检测方案。该方法有助于物理层完全检测pu和puea的身份。仿真结果表明,在移动CR速度为70 km/h、信噪比为-5 dB、虚警概率为0.03的条件下,采用10个合作节点的FSST检测概率为0.99,是单节点检测概率的1.94倍。
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