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Achieving Autonomous Compressive Spectrum Sensing for Cognitive Radios

机译:实现认知无线电的自主压缩频谱感知

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Compressive sensing (CS) technologies present many advantages over other existing approaches for implementing wideband spectrum sensing in cognitive radios (CRs), such as reduced sampling rate and computational complexity. However, there are two significant challenges: 1) choosing an appropriate number of sub-Nyquist measurements and 2) deciding when to terminate the greedy recovery algorithm that reconstructs wideband spectrum. In this paper, an autonomous compressive spectrum sensing (ACSS) framework is presented that enables a CR to automatically choose the number of measurements while guaranteeing the wideband spectrum recovery with a small predictable recovery error. This is realized by the proposed measurement infrastructure and the validation technique. The proposed ACSS can find a good spectral estimate with high confidence by using only a small testing subset in both noiseless and noisy environments. Furthermore, a sparsity-aware spectral recovery (SASR) algorithm is proposed to recover the wideband spectrum without requiring knowledge of the instantaneous spectral sparsity level. Such an algorithm bridges the gap between CS theory and practical spectrum sensing. Simulation results show that ACSS not only can recover the spectrum using an appropriate number of measurements but can considerably improve the spectral recovery performance as well, compared with existing CS approaches. The proposed recovery algorithm can autonomously adopt a proper number of iterations, therefore solving the problems of underfitting or overfitting, which commonly exist in most greedy recovery algorithms.
机译:与在认知无线电(CR)中实现宽带频谱感测的其他现有方法相比,压缩感测(CS)技术具有许多优势,例如降低的采样率和计算复杂性。但是,存在两个重大挑战:1)选择适当数量的次奈奎斯特测量,以及2)确定何时终止重构宽带频谱的贪婪恢复算法。在本文中,提出了一种自主压缩频谱感测(ACSS)框架,该框架使CR能够自动选择测量次数,同时保证宽带频谱恢复并具有较小的可预测恢复误差。这是通过提出的测量基础结构和验证技术来实现的。所提出的ACSS通过在无噪声和嘈杂的环境中仅使用一个小的测试子集就可以找到具有高置信度的良好频谱估计。此外,提出了一种稀疏感知频谱恢复(SASR)算法来恢复宽带频谱,而无需了解瞬时频谱稀疏性级别。这种算法弥补了CS理论与实际频谱感测之间的差距。仿真结果表明,与现有的CS方法相比,ACSS不仅可以使用适当数量的测量来恢复光谱,而且还可以显着提高光谱恢复性能。提出的恢复算法可以自主采用适当的迭代次数,因此解决了大多数贪婪恢复算法中普遍存在的拟合不足或拟合过度的问题。

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