Computationally Efficient Compressive Sensing in Wideband Cognitive Radios

S. S. Alam, M. O. Mughal, L. Marcenaro, C. Regazzoni
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引用次数: 10

Abstract

Radio spectrum is an expensive resource and only licensed users have the right to use it. In the emerging paradigm of interoperable radio networks, the unlicensed users are allowed to use the radio frequency that is unoccupied by the licensed users in temporal and spatial manner. To support this spectrum optimization functionality, the unlicensed users are required to sense the radio environment periodically for being aware of the high-priority licensed users. Wideband spectrum sensing is a challenging task for the present analog-to-digital converters used in wireless systems due to the constraints of digital signal processing unit. Exploiting on the sparseness of the wideband signal, the spectrum can be recovered with only few compressive measurements, consequently employs relief of high-speed signal processing units. This paper presents a novel wideband sensing approach where a significant portion of wideband spectrum is approximated via compressive sensing rather than entire wideband spectrum estimation, thus reducing computational complexity for the cognitive radios. Detection performances are evaluated through spectrum estimation of the desired frequency band by means of a well-known energy detection method. Finally, reduction of computational burden and memory spaces obligation are described compared to the conventional compressive sensing preceded over a single RF chain, without interfering with the detection performances.
宽带认知无线电中计算高效的压缩感知
无线电频谱是一种昂贵的资源,只有获得许可的用户才有权使用它。在可互操作无线网络的新兴范例中,允许未获许可的用户以时间和空间方式使用未被获许可用户占用的无线电频率。为了支持这种频谱优化功能,要求未授权用户定期感知无线电环境,以了解高优先级的授权用户。由于数字信号处理单元的限制,目前用于无线系统的模数转换器的宽带频谱传感是一项具有挑战性的任务。利用宽带信号的稀疏性,只需要少量的压缩测量就可以恢复频谱,从而省去了高速信号处理单元。本文提出了一种新的宽带感知方法,该方法通过压缩感知来近似大部分宽带频谱,而不是整个宽带频谱估计,从而降低了认知无线电的计算复杂度。利用一种众所周知的能量检测方法,通过对所需频带的频谱估计来评估检测性能。最后,与传统的单射频链压缩感知相比,减少了计算负担和存储空间义务,而不会干扰检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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