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Spectrum sensing using principal component analysis

机译:使用主成分分析进行频谱感测

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In the recent past considerable research has been performed on blind signal detection techniques that exploit the covariance matrix of the signals received at a cognitive radio (CR). These techniques overcome the noise uncertainty problem of the energy detection (ED) method and can even perform better than ED for correlated signals. Contrary to the previous work where the main evaluation technique has been theoretical analysis and simulations, in this paper we use Software defined radios (SDRs) with correlated signal reception capability to evaluate the sensing performance of the existing covariance based detection (CBD) techniques. The existing techniques considered in this work are; Covariance absolute value (CAV), Maximum-minimum eigenvalue (MME), Energy with minimum eigenvalue (EME) and Maximum eigenvalue detection (MED). Most importantly this paper presents a novel technique for blind signal detection that uses Principal Component (PC) Analysis. The PC based signal detection algorithm and the CBD algorithms are tested in a real scenario with SDRs and their sensing performance is compared. The PC algorithm outperforms the MED and EME algorithms under all conditions and it performs better than the MME and CAV algorithms under certain conditions.
机译:最近,在盲信号检测技术方面进行了大量研究,该技术利用了在认知无线电(CR)处接收到的信号的协方差矩阵。这些技术克服了能量检测(ED)方法的噪声不确定性问题,甚至可以在相关信号方面比ED表现更好。与以前的主要评估技术是理论分析和模拟的工作相反,在本文中,我们使用具有相关信号接收能力的软件定义无线电(SDR)来评估现有基于协方差的检测(CBD)技术的传感性能。在这项工作中考虑的现有技术是:协方差绝对值(CAV),最大最小特征值(MME),最小特征值的能量(EME)和最大特征值检测(MED)。最重要的是,本文介绍了一种使用主成分(PC)分析的盲信号检测新技术。在具有SDR的真实场景中测试了基于PC的信号检测算法和CBD算法,并比较了它们的感测性能。在所有条件下,PC算法均优于MED和EME算法,并且在某些条件下,其性能优于MME和CAV算法。

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