Simplistic Machine Learning-Based Air-to-Ground Path Loss Modeling in an Urban Environment

A. Tahat, T. Edwan, Hamza Al-Sawwaf, Jumana Al-Baw, Mohammad Amayreh
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引用次数: 9

Abstract

Unmanned aerial vehicles (UAVs) are being broadly employed lately in different domains because of their unique features such as ease of mobility and feasibility. A high fidelity communication link is the basis for guaranteeing the robustness of the UAV network between its ends. To offer reliable models for utilization in designing UAV communication systems, in addition to the processes of planning, deploying, and operating these systems, accurate estimation of the prevailing radio channel framework parameters is required. In this work, we suggest and present a strategy for constructing an empirical path loss (PL) model for air-to-ground radio frequency channels relying on machine learning (ML). ML regression algorithms including K-nearest-neighbors (kNN), Regression Trees (RT) and Artificial Neural Networks (ANN) are utilized in our versatile three-dimensional (3D) technique. To that end, we investigate the use of GPS coordinates (i.e., latitude, longitude, and altitude.) of both of the UAV transmitter and ground receiver, in addition to humidity, temperature and atmospheric pressure as features into the ML algorithm to predict the link PL. Hence, all environment parameters, and the corresponding implicit relationships are incorporated in the learning phase, and the subsequent prediction of the PL. The validity of our model and approach is verified through numerical results.
城市环境中基于简单机器学习的空对地路径损失建模
近年来,无人驾驶飞行器(uav)因其易于移动和可行性等独特特点在不同领域得到广泛应用。高保真通信链路是保证无人机网络两端间鲁棒性的基础。为了提供可靠的模型用于设计UAV通信系统,除了规划、部署和操作这些系统的过程之外,需要对现行无线电信道框架参数进行准确估计。在这项工作中,我们建议并提出了一种基于机器学习(ML)构建空对地射频信道的经验路径损失(PL)模型的策略。ML回归算法包括k -最近邻(kNN),回归树(RT)和人工神经网络(ANN)被用于我们的多功能三维(3D)技术。为此,我们研究了使用无人机发射器和地面接收器的GPS坐标(即纬度、经度和高度),以及湿度、温度和大气压力作为ML算法预测链路PL的特征。因此,所有环境参数以及相应的隐含关系都被纳入学习阶段。并通过数值结果验证了模型和方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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