粒子滤波在无人机基站rssi定位中的应用

Serife Senem Karaman, A. Akarsu, Tolga Girici
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引用次数: 3

摘要

无人机基站(DBSs)提供了灵活的部署和视距覆盖机会,这导致了许多用例,如宽带互联网,军事,监视,农业等。DBSs可以根据用户位置信息优化和调整它们的位置。特别是在gps拒绝的战术场景下,地面用户位置估计是一个重要的问题。在这项工作中,我们研究了粒子滤波作为用户位置估计的方法。我们利用最近提出的空对地路径损失模型进行基于rssi的位置估计。我们研究了不同的DBS轨迹和各种重采样方法。最后,我们通过仿真表明,粒子滤波的性能与最大似然估计相当,这使得它成为定位和跟踪的合适选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Particle Filtering in RSSI-Based Localization by Drone Base Stations
Drone Base Stations (DBSs) provide flexible deployment and line-of-sight coverage opportunities, which led to many use cases, such as broadband Internet, military, surveillance, agriculture etc. DBSs can optimize and adapt their positions based on user location information. Especially in GPS-denied tactical scenarios ground user location estimation is an important problem. In this work we investigate particle filter as a method of user position estimation. We utilize the recently proposed air-to-ground pathloss model for RSSI-based location estimation. We investigate different DBS trajectories and various resampling methods. Finally, we show by simulations that particle filtering performs comparably to maximum likelihood estimation, which makes it a suitable alternative for localization and tracking.
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