Coverage Prediction and REM Construction for 5G Networks in Band n78

Carla E. García, Insoo Koo
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Abstract

Currently, a great number of commercial fifth-generation (5G) networks are deployed on the mid-band, especially in the range between 3.3 GHz and 3.8 GHz, denominated Band n78. Therefore, a radio environment map (REM) construction is a meaningful task for a network operator to indicate the service areas of 5G cellular systems, improve network planning, and handle mobility. Thus, we propose a novel approach to predict the coverage of outdoor-to-indoor propagation for 5G mid-band operational networks, based on the extremely randomized trees regressor (ERTR) algorithm. Then, we construct a REM to improve the visualization of the results and easily detect coverage holes and traffic hotspots.For this purpose, we utilize a dataset of channel measurements in a building of Sapienza University of Rome, Italy. Furthermore, we use three error metrics: relative error, mean absolute error (MAE), and root mean square error (RMSE) to validate our proposed ERTR-based scheme. For comparison purposes, we evaluate the performance of five additional machine learning (ML) regression algorithms. Satisfactorily, the proposed ERTR technique outperforms the comparative approaches by improving the accuracy of coverage prediction in all scenarios.
n78频段5G网络覆盖预测与REM构建
目前,大量商用5G网络部署在中频,特别是3.3 GHz ~ 3.8 GHz频段,称为n78频段。因此,构建无线环境图(REM)对于网络运营商指出5G蜂窝系统的服务区域、改进网络规划和处理移动性是一项有意义的任务。因此,我们提出了一种基于极度随机树回归(ERTR)算法的新方法来预测5G中频运营网络的室外到室内传播覆盖范围。然后,我们构建REM,提高结果的可视化,方便地检测覆盖漏洞和交通热点。为此,我们利用了意大利罗马萨皮恩扎大学一栋建筑的通道测量数据集。此外,我们使用三个误差指标:相对误差、平均绝对误差(MAE)和均方根误差(RMSE)来验证我们提出的基于ertr的方案。为了比较,我们评估了另外五种机器学习(ML)回归算法的性能。令人满意的是,所提出的ERTR技术在所有场景下的覆盖预测精度都优于比较方法。
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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