基于机器学习的地面移动网络覆盖预测与无人机测量

N. Tarhuni, Ibtihal Al Saadi, H. M. Asif, M. Mesbah, O. Eldirdiry, A. Hossen
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引用次数: 0

摘要

未来的移动网络运营商和电信当局的目标是提供可靠的网络覆盖。信号强度是与用户满意度密切相关的一个重要因素,通常通过对目标区域的标准驱动测试来评估。然而,驾驶测试既耗时又昂贵,而且在难以到达的地区可能很危险。另一种安全的方法是使用无人机或无人驾驶飞行器(uav)。本研究的目的是使用无人机测量距离地面几米的离散点的信号强度,并使用人工神经网络(ANN)处理测量数据并预测地面的信号强度。这架无人机配备了低成本的数据记录设备。人工神经网络还用于根据信号覆盖将特定的地面位置分为差、一般、好和极好。用于训练和测试人工神经网络的数据是由连接在阿曼马斯喀特苏丹卡布斯大学校园不同区域的无人机上的测量单元收集的。共扫描了12个具有不同拓扑结构的位置。所提出的方法在预测基于高海拔测量的地面覆盖率方面达到了97%的精度。此外,使用几个测试场景评估了人工神经网络预测地面信号强度的性能,均方误差(MSE)小于3%。此外,还测试了与垂直方向不同角度的数据,发现在68度的角度下,预测的MSE小于约3%。此外,室外测量用于预测室内覆盖率,MSE小于约6%。此外,为了找到目标区域的全局准确的神经网络模块,将所有区域的测量值在针对不同区域训练的神经网络模块上进行交叉测试。经过评估,在测试场景中,仅使用来自一个区域的数据训练的人工神经网络模块可以实现小于约10%的MSE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine-Learning-Based Ground-Level Mobile Network Coverage Prediction Using UAV Measurements
Future mobile network operators and telecommunications authorities aim to provide reliable network coverage. Signal strength, normally assessed using standard drive tests over targeted areas, is an important factor strongly linked to user satisfaction. Drive tests are, however, time-consuming, expensive, and can be dangerous in hard-to-reach areas. An alternative safe method involves using drones or unmanned aerial vehicles (UAVs). The objective of this study was to use a drone to measure signal strength at discrete points a few meters above the ground and an artificial neural network (ANN) for processing the measured data and predicting signal strength at ground level. The drone was equipped with low-cost data logging equipment. The ANN was also used to classify specific ground locations in terms of signal coverage into poor, fair, good, and excellent. The data used in training and testing the ANN were collected by a measurement unit attached to a drone in different areas of Sultan Qaboos University campus in Muscat, Oman. A total of 12 locations with different topologies were scanned. The proposed method achieved an accuracy of 97% in predicting the ground level coverage based on measurements taken at higher altitudes. In addition, the performance of the ANN in predicting signal strength at ground level was evaluated using several test scenarios, achieving less than 3% mean square error (MSE). Additionally, data taken at different angles with respect to the vertical were also tested, and the prediction MSE was found to be less than approximately 3% for an angle of 68 degrees. Additionally, outdoor measurements were used to predict indoor coverage with an MSE of less than approximately 6%. Furthermore, in an attempt to find a globally accurate ANN module for the targeted area, all zones’ measurements were cross-tested on ANN modules trained for different zones. It was evaluated that, within the tested scenarios, an MSE of less than approximately 10% can be achieved with an ANN module trained on data from only one zone.
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