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Non-Cooperative Spectrum Sensing Based on Cyclostationary Model of Digital Signals in the Context of Cognitive Radio

机译:基于认知无线电背景下数字信号裂纹运动模型的非协作频谱感应

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This paper addresses the problem of the opportunistic spectrum access in Cognitive Radio. Indeed, most spectrum sensing algorithms suffer from a high computational cost to achieve the detection process. They need a prior knowledge of signal characteristics and present a bad performance in low Signal to Noise Ratio (SNR) environment. The choice of the optimal detection threshold is another issue for these spectrum sensing algorithms. To overcome the limits of spectrum detectors, we propose in this paper, a blind detection method based on the cyclostationary features of communication signals. Our detector evaluates the level of hidden periodicity contained in the observed signal to make decision on the state of a bandwidth. In order to reduce the computational cost, we take advantage of the FFT Accumulation Method to estimate the cyclic spectrum of the observed signal. Then, we generate the Cyclic Domain Profile of the cyclic spectrum which allows us to evaluate the level of the hidden periodicity in the signal. This level of periodicity is quantified through the crest factor of Cyclic Domain Profile, which represents the decision statistic of the proposed detector. We have established the analytic expression of the optimal threshold of the detection and the probability of detection to evaluate the performance of the proposed detector. Simulation results show that the proposed detector is able to detect the presence of a communication signal on a bandwidth in a very low SNR scenario.
机译:本文解决了认知无线电的机会频谱访问问题。实际上,大多数频谱感测算法遭受高计算成本以实现检测过程。他们需要先前的信号特性知识,并在低信噪比(SNR)环境中表现出不良性能。最佳检测阈值的选择是这些频谱感测算法的另一个问题。为了克服频谱探测器的极限,我们提出了一种基于通信信号裂纹特征的盲检测方法。我们的探测器评估观察到的信号中包含的隐藏周期水平,以决定带宽的状态。为了降低计算成本,我们利用FFT累积方法来估计观察信号的循环谱。然后,我们生成循环频谱的循环域配置文件,其允许我们评估信号中的隐藏周期性的水平。通过循环域配置文件的波峰因子量化这种周期性,这代表了所提出的探测器的决策统计。我们已经建立了检测的最佳阈值的分析表达和检测概率来评估所提出的检测器的性能。仿真结果表明,所提出的检测器能够在非常低的SNR场景中检测带宽上的通信信号的存在。

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