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Spectrum Sensing for Digital Primary Signals in Cognitive Radio: A Bayesian Approach for Maximizing Spectrum Utilization

机译:认知无线电中数字主信号的频谱传感:一种最大化频谱利用率的贝叶斯方法

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摘要

With the prior knowledge that the primary user is highly likely idle and the primary signals are digitally modulated, we propose an optimal Bayesian detector for spectrum sensing to achieve higher spectrum utilization in cognitive radio networks. We derive the optimal detector structure for MPSK modulated primary signals with known order over AWGN channels and give its corresponding suboptimal detectors in both low and high SNR (Signal-to-Noise Ratio) regimes. Through approximations, it is found that, in low SNR regime, for MPSK (M>2) signals, the suboptimal detector is the energy detector, while for BPSK signals the suboptimal detector is the energy detection on the real part. In high SNR regime, it is shown that, for BPSK signals, the test statistic is the sum of signal magnitudes, but uses the real part of the phase-shifted signals as the input. We provide the performance analysis of the suboptimal detectors in terms of probabilities of detection and false alarm, and selection of detection threshold and number of samples. The simulations have shown that Bayesian detector has a performance similar to the energy detector in low SNR regime, but has better performance in high SNR regime in terms of spectrum utilization and secondary users' throughput.
机译:基于主要用户很可能处于空闲状态并且对主要信号进行了数字调制的先验知识,我们提出了一种用于频谱感知的最佳贝叶斯检测器,以在认知无线电网络中实现更高的频谱利用率。我们推导了在AWGN通道上具有已知阶数的MPSK调制主信号的最佳检测器结构,并给出了在低和高SNR(信噪比)体制下其对应的次优检测器。通过近似发现,在低SNR情况下,对于MPSK(M> 2)信号,次优检测器是能量检测器,而对于BPSK信号,次优检测器是实部能量检测。结果表明,在高SNR体制下,对于BPSK信号,测试统计量是信号幅度的总和,但使用相移信号的实部作为输入。我们根据检测和误报的可能性以及检测阈值和样本数量的选择来提供次优检测器的性能分析。仿真表明,贝叶斯检测器在低SNR情况下的性能类似于能量检测器,但在频谱利用率和次级用户吞吐量方面在高SNR情况下具有更好的性能。

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