通过智能手机传感数据融合发现受waze启发的频谱

Sen Lin, Junshan Zhang, Lei Ying
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引用次数: 2

摘要

我们研究了受waze启发的频谱发现,其中云收集来自许多智能手机的频谱感知结果,并基于信息融合预测特定位置的频谱可用性。观察到,在有限的传感能力下,每个智能手机只能感应有限数量的频道;此外,每台智能手机感知的频道越多,感知结果就越不准确。为了得到全面的理解,我们将谱发现问题视为矩阵恢复问题,这与经典的矩阵补全问题不同,因为它只需要确定矩阵恢复公式中的部分矩阵项就足够了。研究表明,广泛使用的基于相似度的协同过滤方法由于需要每个智能手机感知太多的频道而不能很好地工作。基于这一动机,我们提出了一种位置辅助智能手机数据融合方法,并表明每个智能手机需要感知的频道数可以大大减少。利用定位辅助数据融合方法对部分矩阵恢复性能进行了分析,数值结果证实了随着智能手机感知信道数量的增加,恢复性能会先提高,但随着感知精度的降低,恢复性能会在一定程度上下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Waze-inspired spectrum discovery via smartphone sensing data fusion
We study Waze-inspired spectrum discovery, where the cloud collects the spectrum sensing results from many smartphones and predicts location-specific spectrum availability based on information fusion. Observe that with limited sensing capability, each smartphone can sense only a limited number of channels; and further, the more channels each smartphone senses, the less accurate the sensing results would be. To develop a comprehensive understanding, we cast the spectrum discovery problem as a matrix recovery problem, which is different from the classical matrix completion problem, in the sense that it suffices to determine only part of the matrix entries in the matrix recovery formulation. It is shown that the widely-used similarity-based collaborative filtering method would not work well because it requires each smartphone to sense too many channels. With this motivation, we propose a location-aided smartphone data fusion method and show that the channel numbers each smartphone needs to sense could be dramatically reduced. Moreover, we analyze the partial matrix recovery performance by using the location-aided data fusion method, and numerical results corroborate the intuition that with each smartphone sensing more channels, the recovery performance improves at first but then degrades beyond some point because of the decreasing sensing accuracy.
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