A spectrum sensing algorithm based on correlation coefficient and K-means

Yi Li, Yonghua Wang, Pin Wan, Shunchao Zhang, Yongwei Zhang, Tianyu Zhao
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引用次数: 1

Abstract

In order to improve the detection probability in the environment of low signal-to-noise ratio (SNR), and solving the problem of complex threshold derivation in traditional spectrum sensing technology, the improved spectrum sensing method is proposed in this paper. Firstly, the signal received by each secondary user is decomposed and recombined (DAR). Then the correlation coefficient (CC) based on the sampling signal matrix is extracted as the decision statistic, which reduces the influence of the noise uncertainty. Finally, the K-means clustering algorithm is used to class these decision statistics, accuracy greatly. In order to facilitate expression, the proposed algorithm is abbreviated as DARCCK. Through experimental simulation, the DARCCK algorithm exhibits better detection performance than the energy detection (ED), the maximum and minimum eigenvalue (MME) algorithm and the difference between the maximum and minimum eigenvalues (DMM) in the communication environment with low SNR.
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一种基于相关系数和k均值的频谱感知算法
为了提高在低信噪比环境下的检测概率,并解决传统频谱感知技术中阈值推导复杂的问题,本文提出了改进的频谱感知方法。首先,对每个二级用户接收到的信号进行分解和重组(DAR)。然后提取基于采样信号矩阵的相关系数(CC)作为决策统计量,降低了噪声不确定性的影响;最后,利用k均值聚类算法对这些决策统计量进行分类,提高了分类准确率。为了便于表达,本文提出的算法简称为DARCCK。通过实验仿真,在低信噪比的通信环境下,DARCCK算法比能量检测(ED)、最大最小特征值(MME)算法和最大最小特征值之差(DMM)算法表现出更好的检测性能。
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