论文标题
使用3D地图和深度学习的空间信号强度预测
Spatial Signal Strength Prediction using 3D Maps and Deep Learning
论文作者
论文摘要
由于大数据,机器学习(ML)和人工神经网络(ANN)已通过学习物理模型成功地用于模拟复杂的物理。受到ANN在物理建模中的成功的启发,我们使用深层神经网络(DNN)来预测城市环境中的无线电信号强度场。我们的算法取决于在预测空间中收集的信号强度和环境的3D图,这使其能够预测无线电波在环境中的散射。尽管在空间信号强度预测中已经存在广泛的研究体系,但我们的方法与大多数现有方法不同,因为它不需要发射机位置的知识,但它不需要侧向渠道信息,例如衰减和阴影参数,并且据我们所知,它是第一项工作,可以使用3D地图来实现信号强度预测的任务。该算法的开发是为了放置无人机或移动机器人的位置,以最大程度地提高固定收发器的信号强度,但它还与动态频谱访问网络,蜂窝覆盖范围设计,功率控制算法等相关。
Machine learning (ML) and artificial neural networks (ANNs) have been successfully applied to simulating complex physics by learning physics models thanks to large data. Inspired by the successes of ANNs in physics modeling, we use deep neural networks (DNNs) to predict the radio signal strength field in an urban environment. Our algorithm relies on samples of signal strength collected across the prediction space and a 3D map of the environment, which enables it to predict the scattering of radio waves through the environment. While already extensive body of research exists in spatial signal strength prediction, our approach differs from most existing approaches in that it does not require the knowledge of the transmitter location, it does not require side channel information such as attenuation and shadowing parameters, and it is the first work, to the best of our knowledge, to use 3D maps to accomplish the task of signal strength prediction. This algorithm is developed for the purpose of placement optimization of a UAV or mobile robot to maximize the signal strength to or from a stationary transceiver but it also holds relevance to dynamic spectrum access networks, cellular coverage design, power control algorithms, etc.