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A Blind Signal Samples Detection Algorithm for Accurate Primary User Traffic Estimation

机译:一种盲信号样本检测算法,用于准确主要用户流量估计

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摘要

The energy detection process for enabling opportunistic spectrum access in dynamic primary user (PU) scenarios, where PU changes state from active to inactive at random time instances, requires the estimation of several parameters ranging from noise variance and signal-to-noise ratio (SNR) to instantaneous and average PU activity. A prerequisite to parameter estimation is an accurate extraction of the signal and noise samples in a received signal time frame. In this paper, we propose a low-complexity and accurate signal samples detection algorithm as compared to well-known methods, which is also blind to the PU activity distribution. The proposed algorithm is analyzed in a semi-experimental simulation setup for its accuracy and time complexity in recognizing signal and noise samples, and its use in channel occupancy estimation, under varying occupancy and SNR of the PU signal. The results confirm its suitability for acquiring the necessary information on the dynamic behavior of PU, which is otherwise assumed to be known in the literature.
机译:用于启用动态主用户(PU)方案中的机会频谱访问的能量检测过程,其中PU将状态从活动处于无效在随机时间实例中无效,要求估计来自噪声方差和信噪比的若干参数(SNR )瞬时和平均PU活动。参数估计的先决条件是在接收信号时间帧中的信号和噪声样本的精确提取。在本文中,与众所周知的方法相比,我们提出了低复杂性和准确的信号样本检测算法,这也是PU活动分布的视而不见。在半实验模拟设置中分析了所提出的算法,以获得其准确性和时间复杂性,在识别信号和噪声样本中,其在频道占用估计中使用的不同占用和PU信号的SNR。结果证实了它适用于获取有关PU的动态行为的必要信息,否则假设在文献中已知。

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