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Iteratively reweighted compressive sensing based algorithm for spectrum cartography in cognitive radio networks

机译:认知无线电网络中基于迭代加权压缩感知的频谱制图算法

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摘要

Spectrum cartography is the process of constructing a map showing Radio Frequency signal strength over a finite geographical area. In our previous work we formulated spectrum cartography as a compressive sensing problem and we illustrated how cartography can be used in the context of discovering spectrum holes in space that can be exploited locally in cognitive radio networks. This paper investigates the performance of compressive sensing based approach to cartography in a fading environment where realtime channel estimation is not feasible. To accommodate for lack of channel information we take an iterative approach. We extend the well-known iteratively reweighted ℓ1 minimisation approach by exploiting spatial correlation between two points in space. We evaluate the performance in an urban environment where Rayleigh fading is prominent. Our numerical results show a significant improvement in the probability of accurately making a spectrum sensing decision, in comparison to the well-known weighted approach and the traditional compressive sensing based method.
机译:频谱制图是构建地图的过程,该地图显示有限地理区域上的射频信号强度。在我们之前的工作中,我们将频谱制图公式化为一个压缩感测问题,并说明了如何在发现空间中的频谱空洞的背景下使用制图,这些空洞可以在认知无线电网络中本地利用。本文研究了在实时信道估计不可行的衰落环境中基于压缩感知的制图方法的性能。为了适应缺乏渠道信息的情况,我们采用了迭代方法。通过利用空间中两个点之间的空间相关性,我们扩展了众所周知的迭代加权ℓ1最小化方法。我们评估瑞利衰落最为突出的城市环境下的性能。与众所周知的加权方法和传统的基于压缩感测的方法相比,我们的数值结果表明,准确做出频谱感测决策的概率有了显着提高。

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