一类基于统计协方差的低复杂度频谱感知算法

Ruixun Liu, Yufei Wu, Dongming Wang, Yu Yang, Shaoli Kang
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引用次数: 1

摘要

对信号检测算法的评价包括计算复杂度和性能两个方面。基于信号的统计协方差,在[1]中提出了著名的频谱感知算法——最大与最小比值特征值(MME)算法。MME是一种盲信号检测算法,具有良好的性能。MME的主要优点是它与噪声功率无关。然而,由于涉及特征值分解,MME具有很高的计算复杂度。MME不是基于统计协方差矩阵的最佳信号检测算法。因此,可能存在比mme性能更好的其他算法。本文基于矩阵特征值近似的思想,提出了三种较低复杂度的频谱感知算法。这些算法也属于盲频谱感知算法,对噪声功率不敏感。仿真结果表明,它们的性能优于MME算法。
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A class of low complexity spectrum sensing algorithms based on statistical covariances
The evaluation of signal detection algorithm involves two aspects: computational complexity and performance. Based on the statistical covariances of the signal, the well-known spectrum sensing algorithm named as maximum-to-minimum ratio eigenvalue (MME) algorithm was proposed in [1]. MME is a blind signal detection algorithm and it has good performance. The main advantage of MME is that it does not related to the noise power. However, due to involving eigenvalue decomposition, MME has a high computational complexity. MME is not the best signal detection algorithm based on statistical covariance matrix. Therefore there may be other algorithm can perform better than MME. In this paper, based on the idea of the approximation of the eigenvalue of the matrix, we proposed three spectrum sensing algorithms with lower complexity. These algorithms are also blind spectrum sensing algorithms, and they are not sensitive to the noise power. Simulation results demonstrate that their performances are better than that of the MME algorithm.
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