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Noise variance estimation through penalized least-squares for ED-spectrum sensing

机译:通过惩罚最小二乘估计噪声方差,以进行ED谱检测

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Cognitive Radio (CR) is an auspicious solution to current problem of spectrum scarcity due to evaluation of new technologies. These techniques are useful in detecting spectral holes, and allocating them to secondary users. Energy Detection is a predominant method for spectrum sensing due to its low computational complexity and capability of detecting spectrum holes without requiring apriori knowledge of primary signal. The energy based spectrum detectors depends on the precision of threshold chosen to distinguish signal and noise. But, energy detection needs to estimate the noise variance for finding the detection threshold. Most of the conventional techniques use fixed threshold with known noise variance. In practical scenarios noise variance is unknown, so we are proposing a fast computational noise variance estimation algorithm for spectrum sensing using Penalized Least Squares (PLS). We have introduced a smoothing parameter which is determined by Discrete Cosine Transform (DCT) as the penalizing factor. The amount of smoothing is determined by minimizing Generalized Cross Validation (GCV). Simulations were carried out in AWGN and Rayleigh fading channels for the proposed noise variance estimation through which Receiver Operating Characteristics (ROC) are obtained.
机译:由于对新技术的评估,认知无线电(CR)是解决当前频谱稀缺问题的一种吉利解决方案。这些技术在检测频谱空洞并将其分配给二级用户方面很有用。能量检测是频谱检测的主要方法,因为它的计算复杂度低,并且无需先验知识就可以检测频谱孔。基于能量的频谱检测器取决于为区分信号和噪声而选择的阈值的精度。但是,能量检测需要估计噪声方差以找到检测阈值。大多数常规技术使用具有已知噪声方差的固定阈值。在实际情况下,噪声方差是未知的,因此我们提出一种使用惩罚最小二乘(PLS)进行频谱检测的快速计算噪声方差估计算法。我们引入了一个平滑参数,该参数由离散余弦变换(DCT)确定为惩罚因子。通过最小化通用交叉验证(GCV)来确定平滑量。在AWGN和瑞利衰落信道中进行了模拟,以进行建议的噪声方差估计,通过该估计可获得接收机工作特性(ROC)。

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