In this paper, we consider the problem of wireless channel prediction, where we are interested in predicting the channel quality at unvisited locations in an area of interest, based on a small number of prior received power measurements collected by an unmanned vehicle in the area. We propose a new framework for channel prediction that can not only predict the detailed variations of the received power, but can also predict the detailed makeup of the wireless rays (i.e., amplitude, angle-of-arrival, and phase of all the incoming paths). More specifically, we show how an enclosure-based robotic route design ensures that the received power measurements at the prior measurement locations can be utilized to fully predict detailed ray parameters at unvisited locations. We then show how to first estimate the detailed ray parameters at the prior measurement route and then fully extend them to predict the detailed ray makeup at unvisited locations in the workspace. We experimentally validate our proposed framework through extensive real-world experiments in three different areas, and show that our approach can accurately predict the received channel power and the detailed makeup of the rays at unvisited locations in an area, considerably outperforming the state-of-the-art in wireless channel prediction.
翻译:在本文中,我们考虑了无线频道预测问题,我们有兴趣根据该地区无人驾驶飞行器收集的少量先前收到的电量测量结果,预测一个感兴趣的地区未受访地点的频道质量。我们提出了一个新的频道预测框架,不仅可以预测接收电量的详细变化,还可以预测无线射线的详细构成(即振幅、抵达角度和所有进入路径的阶段)。更具体地说,我们展示了基于封闭的机器人线路设计如何确保利用先前测量地点收到的电量测量结果,充分预测未受访地点的详细射线参数。然后我们展示了如何首先估计先前测量路线的详细射线参数,然后全面扩展这些参数,以预测工作空间未受访地点的详细射线组成情况(即振幅、到达角度和所有进入路径的阶段)。我们通过在三个不同领域进行广泛的真实世界实验,实验验证了我们提出的框架,并表明我们的方法可以准确预测在未受访地点获得的频道动力和无线射线的详细组成情况。我们随后展示了如何在无线频道地区对未受访地点进行无线预测的情况进行重大演化。