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A Distance-Weighed Algorithm Based on Maximum-Minimum Eigenvalues for Cooperative Spectrum Sensing

机译:基于最大最小特征值的距离权重协作频谱感知算法

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In cognitive radio, spectrum sensing is a fairly crucial task for spectrum sharing. In the literature??Cthere are several classical methods in detecting spectrum holes such as the matched filter, the cyclostationary and the energy detection. Recently due to the advances in random matrix theory ??iRMT??j, many schemes relied on the eigenvalues of the covariance matrix of the received signal are introduced. However, these models based on the RMT are ideal without considering different positions of cognitive radios. As we know, different distances of cognitive users to the primary user can cause various signal-to-noise ratios (SNRs) of secondary users and signal-to-noise ratios greatly affect the reliabilities of the detection result. Thus in this paper, we propose an improved cooperative spectrum sensing method based on the maximum and the minimum eigenvalues of the signal's covariance matrix considering different distances of cognitive users to the primary user. We do some simulations of this algorithm, and its results verify a better performance of this method.
机译:在认知无线电中,频谱感测是频谱共享中相当关键的任务。在文献中,有几种检测频谱孔的经典方法,例如匹配滤波器,循环平稳和能量检测。近来,由于随机矩阵理论“ iRMT” j的发展,引入了许多依赖于接收信号协方差矩阵的特征值的方案。但是,这些基于RMT的模型是理想的,无需考虑认知无线电的不同位置。众所周知,认知用户到主要用户的距离不同会导致次要用户的各种信噪比(SNR),信噪比极大地影响了检测结果的可靠性。因此,在本文中,我们提出了一种基于信号协方差矩阵的最大和最小特征值的改进协作频谱感知方法,该方法考虑了认知用户到主要用户的不同距离。我们对该算法进行了一些仿真,其结果证明了该方法的更好性能。

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