Noise Variance Estimation for Spectrum Sensing in Cognitive Radio Networks

Adeel Ahmed, Yim Fun Hu, James M. Noras
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引用次数: 18

Abstract

Spectrum sensing is used in cognitive radio systems to detect the availability of spectrum holes for secondary usage. The simplest and most famous spectrum sensing techniques are based either on energy detection or eigenspace analysis from Random Matrix Theory (RMT) such as using the Marchenko-Pastur law. These schemes suffer from uncertainty in estimating the noise variance which reduces their performance. In this paper we propose a new method to evaluate the noise variance that can eliminate the limitations of the aforementioned schemes. This method estimates the noise variance from a measurement set of noisy signals or noise-only signals. Extensive simulations show that the proposed method performs well in estimating the noise variance. Its performance greatly improves with increasing numbers of measurements and also with increasing numbers of samples taken per measurement.

认知无线电网络频谱感知中的噪声方差估计
频谱感知在认知无线电系统中用于检测频谱孔的可用性以供二次使用。最简单和最著名的频谱传感技术是基于能量检测或随机矩阵理论(RMT)的特征空间分析,如使用Marchenko-Pastur定律。这些方案在估计噪声方差方面存在不确定性,降低了它们的性能。在本文中,我们提出了一种新的方法来评估噪声方差,可以消除上述方案的局限性。该方法估计噪声信号或纯噪声信号的测量集的噪声方差。大量的仿真结果表明,该方法能很好地估计噪声方差。它的性能随着测量次数的增加和每次测量的样本数量的增加而大大提高。
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