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首页> 外文期刊>IEEE communications letters >Differential Entropy-Driven Spectrum Sensing Under Generalized Gaussian Noise
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Differential Entropy-Driven Spectrum Sensing Under Generalized Gaussian Noise

机译:广义高斯噪声下的差分熵驱动频谱感知

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摘要

We propose a novel goodness-of-fit detection scheme for spectrum sensing, based on differential entropy in the received observations. The noise distribution is known to deviate from the Gaussian in many practical communication settings. We, therefore, permit that the noise process follows the generalized Gaussian distribution, which subsumes Gaussian and Laplacian as special cases. We obtain, in closed form, the distribution of the test statistic under the null hypothesis and compute the detection threshold that satisfies a constraint on the probability of false alarm. Furthermore, we derive a lower bound on the probability of detection in a general scenario, using the entropy power inequality. Through Monte Carlo simulations, we show that for a class of practically relevant fading channel and primary signal models, especially in low SNR regime, our detector achieves a higher probability of detection than the energy detector and the order statistics-based detector. We also demonstrate that the adverse effect of noise variance uncertainty is much less with the proposed detector compared with that of the energy detector.
机译:我们基于接收到的观测值中的差分熵,提出了一种新颖的频谱感拟合优度检测方案。在许多实际的通信环境中,噪声分布会偏离高斯分布。因此,我们允许噪声过程遵循广义的高斯分布,其中将高斯和拉普拉斯算子归为特例。我们以封闭形式获得零假设下检验统计量的分布,并计算满足对虚警概率的约束的检测阈值。此外,我们使用熵幂不等式推导了一般情况下的检测概率下限。通过蒙特卡洛仿真,我们表明,对于一类实际相关的衰落信道和主信号模型,尤其是在低SNR体制下,我们的检测器比能量检测器和基于阶数统计的检测器具有更高的检测概率。我们还证明,与能量检测器相比,建议的检测器对噪声方差不确定性的不利影响要小得多。

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