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Weighted Blind Spectrum Sensing Based on Signal Auto-Correlation and Cross-Correlation Characteristics in Rayleigh Fading Channels

机译:基于瑞利衰落信道中信号自相关和互相关特性的加权盲频谱感知

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Algorithms based on signal correlation have low computational complexity and require little knowledge on primary signals or noise signals. However, their detection performance becomes relatively terrible in low signal-to-noise ratio (SNR) regime with weak signal correlation, which happens to be quite common in practical systems. In this paper, a weighted blind spectrum sensing algorithm based on signal correlation is proposed to effectively improve the detection performance on the basis of above-mentioned advantages of correlation- based detection. This proposed algorithm adequately exploits the auto-correlation (AC) and cross-correlation (CC) characteristics of received signals and assigns a proper weighting coefficient to each term in the test statistic of our algorithm, enlarging the difference of test statistic with or without the existence of primary users (PUs) and thus greatly promoting the detection performance. False alarm and detection probabilities are analyzed thoroughly in the low-SNR regime, and their approximate analytical expressions are derived based on the central limit theorem (CLT). Simulations are presented to verify the analyses. Experiments show that the proposed detection can significantly outperform other correlation-based algorithms.
机译:基于信号相关性的算法具有较低的计算复杂度,并且对基本信号或噪声信号的了解很少。但是,在信号相关性较弱的低信噪比(SNR)方案中,它们的检测性能变得相对较差,这在实际系统中非常普遍。本文基于上述基于相关检测的优点,提出了一种基于信号相关的加权盲频谱感知算法,以有效提高检测性能。提出的算法充分利用了接收信号的自相关(AC)和互相关(CC)特性,并为我们算法的测试统计量中的每个项分配了适当的加权系数,从而放大了有或没有时的测试统计量之差。主要用户(PU)的存在,从而大大提高了检测性能。在低信噪比条件下,对虚假警报和检测概率进行了全面分析,并基于中心极限定理(CLT)推导了它们的近似分析表达式。进行仿真以验证分析结果。实验表明,所提出的检测方法可以明显优于其他基于相关性的算法。

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