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Spectrum Sensing of Interleaved SC-FDMA Signals in Cognitive Radio Networks

机译:认知无线电网络中交错式SC-FDMA信号的频谱感知

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摘要

This paper develops a spectrum sensing technique for interleaved single-carrier frequency-division multiple access (SC-FDMA) systems. By designing a metric that exploits cyclostationary features of interleaved SC-FDMA signals, we establish a framework for signal detection. Using Gaussian approximation for this metric, the parameters of the metric distributions under two hypotheses are derived, and both hypotheses are examined by the Neyman–Pearson test. We validate the accuracy of the Gaussian approximation by comparing theoretical and simulated metric histograms. The performance of the proposed method is presented for additive white Gaussian noise and multipath Rayleigh fading channels. We also investigate the effect of the block length, the number of users, the metric window length, and the presence of the pilot signals on the detection performance. Through comparative performance evaluation, we demonstrate the superiority of our proposed detection scheme over energy detection and the detection method based on autocorrelation of the cyclic prefix (CP). We obtain similar detection performance to that of the mentioned methods at about 8–13 dB lower signal-to-noise ratio (SNR). It is noteworthy that the complexity of our method is comparable to that of the energy detection and slightly higher than that of CP detection.
机译:本文开发了一种用于交错式单载波频分多址(SC-FDMA)系统的频谱感测技术。通过设计一种利用交错式SC-FDMA信号的循环平稳特性的度量,我们建立了信号检测的框架。使用针对该度量的高斯近似,可以得出两个假设下的度量分布参数,并且通过Neyman–Pearson检验检验这两个假设。通过比较理论和模拟度量直方图,我们验证了高斯近似的准确性。针对加性高斯白噪声和多径瑞利衰落信道,提出了该方法的性能。我们还研究了块长度,用户数量,度量窗口长度以及导频信号的存在对检测性能的影响。通过比较性能评估,我们证明了我们提出的检测方案优于能量检测和基于循环前缀(CP)自相关的检测方法的优越性。我们在信噪比(SNR)低约8–13 dB时获得了与上述方法相似的检测性能。值得注意的是,我们方法的复杂度可与能量检测相媲美,略高于CP检测。

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