UAV Mapping for Multiple Primary Users Localization

Zhuyin Li, A. Giorgetti, S. Kandeepan
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Abstract

The unique features of unmanned aerial vehicles (UAVs) extend a large number of existing technologies into environments that are not suitable for on-site operations. Localization, a critical basis of many applications such as cognitive radio and first response networks, can benefit UAV technology as well. In such scenarios, an underinvestigated problem is the non-collaborative localization of multiple primary users (PUs). Therefore, this work proposes a data-driven multiple PU localization algorithm based on the angular and power measurements performed by a UAV equipped with an antenna array. The measured data firstly generate a score map, then a threshold and a hierarchical clustering method are applied to the score map to both detect the number of PUs and estimate their location. The performance of the algorithm is assessed by numerical results in terms of probability of detecting the number of PUs, and root-mean-square-error of position estimation. The proposed solution exhibit remarkable performance considering that the approach requires only the knowledge of the PUs frequency band.
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多主用户定位的无人机映射
无人机的独特功能将大量现有技术扩展到不适合现场操作的环境中。定位是认知无线电和第一反应网络等许多应用的关键基础,也可以使无人机技术受益。在这种情况下,一个未被充分研究的问题是多个主用户(pu)的非协作本地化。因此,本研究提出了一种数据驱动的多PU定位算法,该算法基于配备天线阵列的无人机进行的角度和功率测量。测量数据首先生成一个分数图,然后对分数图应用阈值和分层聚类方法来检测pu的数量和估计它们的位置。通过检测pu数量的概率和位置估计的均方根误差的数值结果来评估算法的性能。考虑到该方法只需要了解pu频段,所提出的解决方案表现出显著的性能。
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