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Eigenvalue-Based Cooperative Spectrum Sensing Algorithm

机译:基于特征值的协作频谱感知算法

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摘要

Accurate spectrum sensing is the key technique of cognitive networks. According to characteristic of random matrix, a cooperative spectrum sensing algorithm is proposed, which is based the eigenvalue of the signals covariance matrix. Regarded the average eigenvalue of the signals received at the different nodes as the average noise power, the ratio of maximum eigenvalue to average eigenvalue is used to decide whether the primary signal is present. It reduces the sensing period and improves the performance of spectrum sensing. Simulation results show that the cooperative algorithm has about 2 dB margin over other algorithms in signal-to-noise ratio.
机译:准确的频谱感知是认知网络的关键技术。根据随机矩阵的特点,提出了一种基于信号协方差矩阵特征值的协作频谱感知算法。将在不同节点处接收到的信号的平均特征值作为平均噪声功率,最大特征值与平均特征值之比用于确定是否存在主信号。它缩短了感测周期并提高了频谱感测的性能。仿真结果表明,协同算法在信噪比方面比其他算法具有约2 dB的余量。

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