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Statistics Shared CAF Diversity Combining Based Sensing Using Weight Computation Technique

机译:统计使用权重计算技术结合基于CAF的CAF多样性

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This paper presents weight computation techniques for spectrum sensing based on a cyclic autocorrelation function (CAF) shared diversity combining. We had reported that the performance of signal detection can be improved by the weight factor obtained from time-averaged of the CAF values, and the technique is based on cyclostationary detection based spectrum sensing. In the technique, time-averaged CAFs are used to extract a channel state information and compute a weight factor for the spectrum sensing based on the CAFs. However, the weight factor also includes the CAFs computed by purely additive white Gaussian noise, and the performance of signal detection degrades. In this paper, only the CAFs when it is judged that a primary user is presence are employed to obtain the time-averaged CAF. The presented results show that the performance of signal detection can be improved as compared with the conventional weight computation technique.
机译:本文介绍了基于循环自相关函数(CAF)共享分集组合的频谱感测的重量计算技术。我们报道说,信号检测的性能可以通过从CAF值的时间平均获得的权重因因子来改善,并且该技术基于基于裂纹的频谱感测。在该技术中,时间平均的CAF用于提取信道状态信息并基于CAF来计算用于频谱感测的权重因子。然而,权重因子还包括通过纯粹添加剂白色高斯噪声计算的CAF,并且信号检测的性能降低。在本文中,仅在判断主要用户存在时,只有CAFS就会用于获得时间平均的CAF。所提出的结果表明,与传统的重量计算技术相比,可以提高信号检测的性能。

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