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An improved spectrum sensing algorithm based on random matrix theory

机译:基于随机矩阵理论的改进频谱感知算法

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Spectrum sensing is an essential problem in cognitive radio. Blind detection techniques such as the algorithm based on random matrix theory which is shown to outperform energy detection especially in case of noise uncertainty, sense the presence of a primary user's signal without prior knowledge of the signal characteristics, channel and noise power. In this paper, we improve the maximum and minimum eigenvalue algorithm from two aspects. Using some recent random matrix theory results, a new threshold based on the distribution of minimum eigenvalue is introduced first. Then the signals received by each cognitive user are decomposed into I and Q components to ensure maximum exploitation of signal correlation among the temporal, spatial and phase correlation (between I and Q components) present in the received signals. Numerical simulations show that the proposed detection rule perform better than the traditional eigenvalue-based algorithm while also proving to be more robust.
机译:频谱感测是认知无线电中的一个基本问题。诸如基于随机矩阵理论的算法之类的盲检测技术表现出比能量检测更好的性能,尤其是在噪声不确定的情况下,无需事先了解信号特性,信道和噪声功率即可感知主要用户信号的存在。本文从两个方面对最大和最小特征值算法进行了改进。利用最近的一些随机矩阵理论结果,首先引入了基于最小特征值分布的新阈值。然后,将每个认知用户接收到的信号分解为I和Q分量,以确保最大程度地利用接收到的信号中存在的时间,空间和相位相关性(I和Q分量之间)之间的信号相关性。数值仿真结果表明,所提出的检测规则比传统的基于特征值的检测算法具有更好的性能,同时也被证明具有更强的鲁棒性。

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