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Approach for Localizing Scatterers in Urban Drone-to-Drone Propagation Environments

机译:本地无人机到无人机传播环境中定位散射体的方法

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In the near future an increasing number of unmanned aerial vehicles (UAVs) are expected to be integrated into urban airspace. Direct Drone-to-Drone (D2D) communication is a promising approach for exchanging information in order to prevent mid-air collisions especially in dense urban areas. For a reliable and efficient communication the fundamental propagation mechanisms must be understood and specific channel models be developed. In previous work we identified the origin of some multipath components (MPCs) in first wideband channel measurements by applying a geometrical signal path simulation considering the outline of buildings and recorded flight tracks. But the performance of this approach depends on the degree of simulated details and can easily get computationally expensive in order to identify the origin of all measured MPCs. Therefore, in this work we enhance the identification by jointly estimating the delay and doppler frequency probability density functions (PDFs) for each scatterer and localize their origins by transforming the estimation into the 3D Cartesian domain and intersecting the results with known objects. We show the feasibility of this approach by investigating the parameter dependency on the results under simulated conditions and then compare the results when being applied on real measurement data. For estimating key parameters of the MPCs, we employ the Kalman enhanced super resolution tracking algorithm (KEST) algorithm.
机译:在不久的将来,预计越来越多的无人驾驶飞行器(无人机)将集成到城市空域中。直接无人机到无人机(D2D)通信是一种有希望的交换信息的方法,以防止中空碰撞尤其是密集的城市地区。为了可靠和有效的通信,必须了解基本传播机制,并且开发特定的频道模型。在以前的工作中,我们通过考虑建筑物的轮廓和记录的飞行轨道的几何信号路径仿真来确定第一宽带通道测量中一些多径分量(MPC)的起源。但这种方法的性能取决于模拟细节的程度,并且可以容易地获得计算昂贵,以识别所有测量的MPC的起源。因此,在这项工作中,我们通过共同估计每个散射者的延迟和多普勒频率概率密度函数(PDF)来增强识别,并通过将估计转换为3D笛卡尔域,并将结果与​​已知对象交联。我们通过在模拟条件下调查结果的参数依赖性来展示这种方法的可行性,然后在实际测量数据上应用结果进行比较结果。为了估算MPC的关键参数,我们采用Kalman增强的超分辨率跟踪算法(KEST)算法。

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