Ground Level Mobile Signal Prediction Using Higher Altitude UAV Measurements and ANN

Ibtihal Al Saadi, N. Tarhuni, M. Mesbah
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引用次数: 1

Abstract

Testing the mobile network signal strength is essential for evaluating actual user experience. This procedure is done by measurement campaign, where a person or a group of people walk or drive through the target area holding a measuring equipment. However, this is not suitable to do in hard-to-reach areas. In order to minimize human involvement and to reduce resources, labour, and time consumed, an alternative approach for physical assessment of cellular coverage and quality evaluating is needed. In this work, we used a drone to measure mobile network signal strength to generate a two-dimensional coverage map for difficult-to-reach areas. A machine learning algorithm is used to estimate the signal strength in other locations within the area to generate a dense 2D coverage map. The measurements were done on Sultan Qaboos University Campus, Muscat, Oman. Our finding shows that a drone equipped with a low-cost signal strength measuring device and an artificial neural network (ANN) algorithm are able to generate an accurate dense map of mobile signal strength in a flexible and cost-effective manner. The ANN was capable of predicting the signal strength at the ground from measurement at higher altitudes with an accuracy of 97%.
基于高空无人机测量和人工神经网络的地面移动信号预测
测试移动网络信号强度对于评估实际用户体验至关重要。这个过程是通过测量活动来完成的,其中一个人或一群人手持测量设备步行或开车穿过目标区域。然而,这并不适合在难以到达的地区。为了尽量减少人员的参与,减少资源、劳动力和时间的消耗,需要一种对蜂窝覆盖和质量进行物理评估的替代方法。在这项工作中,我们使用无人机测量移动网络信号强度,为难以到达的地区生成二维覆盖图。利用机器学习算法估计区域内其他位置的信号强度,生成密集的二维覆盖图。测量是在阿曼马斯喀特的苏丹卡布斯大学校园进行的。我们的研究结果表明,配备低成本信号强度测量装置和人工神经网络(ANN)算法的无人机能够以灵活和经济的方式生成准确的移动信号强度密集图。人工神经网络能够从更高海拔的测量中预测地面的信号强度,准确率达到97%。
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