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Theoretical stopping criteria guided Greedy Algorithm for Compressive Cooperative Spectrum Sensing

机译:压缩协作频谱感知的理论停止准则指导的贪婪算法

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摘要

Cooperative spectrum sensing (CSS) in homogeneous cognitive radio networks conducts cooperation among sensing users to jointly sense the information of spectrum usage for recovery of spectrum status and utilization of available ones. Motivated by the fact that the number of occupied channels is sparse, the mechanism of greedy multiple measurement vectors (MMVs) in the context of compressive/compressed sensing can ideally model the wideband CSS scenario to efficiently solve the support detection problem for identification of occupied channels. Actually, the number of sparsity is unknown, and the existing greedy algorithms for MMVs lack for a robust stopping criterion of determining when the greedy algorithm should terminate. In this paper, we analyze and derive oracle stopping bounds that are independent of prior information such as sparsity for greedy algorithms. Simulations are provided to confirm that, in compressive cooperative spectrum sensing, the proposed stopping criteria for greedy algorithms can remarkably improve detection performance. (C) 2017 Elsevier B.V. All rights reserved.
机译:同类认知无线电网络中的协作频谱感知(CSS)在感知用户之间进行协作,以共同感知频谱使用信息,以恢复频谱状态并利用可用频谱。由于占用信道数稀疏的事实,在压缩/压缩感知的情况下,贪婪多个测量向量(MMV)的机制可以理想地模拟宽带CSS场景,以有效解决用于识别占用信道的支持检测问题。实际上,稀疏性的数量是未知的,并且现有的MMV贪婪算法缺少确定贪婪算法何时终止的鲁棒停止准则。在本文中,我们分析并导出了与先验信息(例如,贪婪算法的稀疏性)无关的预言停止范围。提供仿真以确认在压缩协作频谱感测中,针对贪婪算法建议的停止标准可以显着提高检测性能。 (C)2017 Elsevier B.V.保留所有权利。

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