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Autonomous Compressive-Sensing-Augmented Spectrum Sensing

机译:自主压缩感测增强频谱感测

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摘要

This paper proposes a new spectrum sensing technique, referred to as autonomous compressive sensing (CS)-augmented spectrum sensing, which can be developed to provide more efficient spectrum opportunity identification than geolocation database methods. First, we propose an autonomous CS-based sensing algorithm that enables the local secondary users (SUs) to automatically choose the minimum sensing time without knowledge of spectral sparsity or channel characteristics. The compressive samples are collected block-by-block in time, while the spectral is gradually reconstructed until the proposed stopping criterion is reached. Moreover, a CS-based blind cooperating user selection algorithm is proposed to select the cooperating SUs via indirectly measuring the degeneration of the signal-to-noise ratio experienced by different SUs. Numerical and real-world test results demonstrate that the proposed algorithms achieve high detection performance with reduced sensing time and number of cooperating SUs in comparison with the conventional compressive spectrum sensing algorithms.
机译:本文提出了一种新的频谱感知技术,称为自主压缩感知(CS)增强频谱感知,可以开发该技术以提供比地理位置数据库方法更有效的频谱机会识别。首先,我们提出了一种基于CS的自主感应算法,该算法使本地次要用户(SU)能够自动选择最短感应时间,而无需了解频谱稀疏性或信道特性。在逐块的情况下及时收集压缩样本,同时逐步重建频谱,直到达到建议的停止标准为止。此外,提出了一种基于CS的盲协作用户选择算法,通过间接测量不同SU经历的信噪比的退化来选择协作SU。数值和实际测试结果表明,与常规压缩频谱感知算法相比,该算法在减少感知时间和协同SU数量上具有较高的检测性能。

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