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首页> 外文期刊>Vehicular Technology, IEEE Transactions on >Autocorrelation-Based Spectrum Sensing for Cognitive Radios
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Autocorrelation-Based Spectrum Sensing for Cognitive Radios

机译:基于自相关的认知无线电频谱感知

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摘要

We propose a new spectrum-sensing technique based on the sample autocorrelation of the received signal. We assume that the received signal is oversampled and allow for frequency offset between the local oscillator and the carrier of the primary signal. We evaluate the performance of this algorithm for both additive white Gaussian noise (AWGN) and Rayleigh-fading channels and study its sensitivity to carrier frequency offset. Simulation results are presented to verify the accuracy of the approximation assumptions in our analysis. The performance of the proposed algorithm is also compared with those from the energy detector, the covariance detector, and the cyclic-autocorrelation detector. The results show that our algorithm outperforms the covariance detector and the cyclic autocorrelation detector. It also outperforms the energy detector in the presence of noise power uncertainty or in the case of unknown primary signal bandwidth. Finally, we investigate three diversity combining techniques, namely 1) equal gain combining, 2) selective combining and 3) equal gain correlation combining. Our simulations show that for detection probabilities of interest (e.g., $ > $ 0.9), a system with a four-branch diversity achieves a signal-to-noise ratio (SNR) gain of more than 5 dB over the no-diversity system that uses the same number of received signal samples.
机译:我们基于接收信号的样本自相关提出了一种新的频谱感知技术。我们假设接收到的信号被过采样,并且允许本地振荡器和主信号载波之间发生频率偏移。我们针对加性高斯白噪声(AWGN)和瑞利衰落信道评估了该算法的性能,并研究了其对载波频率偏移的敏感性。给出仿真结果以验证我们分析中近似假设的准确性。还将所提出算法的性能与能量检测器,协方差检测器和循环自相关检测器的性能进行比较。结果表明,我们的算法优于协方差检测器和循环自相关检测器。在存在噪声功率不确定性或未知主信号带宽的情况下,其性能也优于能量检测器。最后,我们研究了三种分集组合技术,即1)等增益组合,2)选择性组合和3)等增益相关组合。我们的仿真表明,对于感兴趣的检测概率(例如,$> $ 0.9),具有四分支分集的系统在无分集系统上的信噪比(SNR)增益超过5 dB。使用相同数量的接收信号样本。

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