Cognitive radio network as sensors: Low signal-to-noise ratio collaborative spectrum sensing

Feng Lin, R. Qiu, Zhen Hu, S. Hou, Lily Li, J. Browning, M. Wicks
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引用次数: 10

Abstract

This paper propose a function of covariance matrix based spectrum sensing approach for cognitive radio systems. The statistical covariance of signal and noise are usually different, so a binary hypothesis test on covariance matrix is employed to determine the existence of primary user. Collaborative sensing scenario is introduced for the proposed algorithm, in which each sensor only needs limited sample data for calculation and sends mediate result to fusion center. A performance comparison among different rational functions is provided, which shows different functions in this algorithm may have similar or distinct performance. So it is important to choose an appropriate function. The proposed algorithm has a reliable performance in very low signal-to-noise ratio (SNR) condition, and outperforms the Estimator-Correlator (EC) approach.
认知无线网络传感器:低信噪比协同频谱感知
提出了一种基于协方差矩阵函数的认知无线电系统频谱感知方法。信号和噪声的统计协方差通常不同,因此采用协方差矩阵的二元假设检验来确定主用户的存在性。该算法引入了协同传感场景,每个传感器只需要有限的样本数据进行计算,并将中间结果发送到融合中心。给出了不同有理函数之间的性能比较,表明该算法中不同函数的性能可能相似或不同。所以选择一个合适的函数是很重要的。该算法在极低信噪比(SNR)条件下具有可靠的性能,优于估计-相关器(EC)方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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