Evaluation of the quality of service of MTN and ORANGE based on RSRP and RSRQ collected in the rural and urban localities of Maroua and Ngaoundere in Cameroon

Pascal Valandi, Nsouandele Jean Luc, Djorwé Témoa, Dokrom Froumsia, Eloundou Tsama Pascal
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Abstract

The evaluation of the quality of service of mobile networks is as necessary as the need to improve the quality of service. It necessarily involves measuring, collecting and analyzing performance indicators. In the case of LTE mobile networks, it can be done using several tools and methods. Objectively and even subjectively, data science turns out to be an adequate and elegant method for managing the multitude of data that can be used to make the results credible. The objective of this study is initially to collect, using the CELL INFO application, the power levels of certain performance indicators of mobile network operators in Cameroon. It mainly involves collecting RSRP and RSRQ and other related parameters like operator id, mobility speed, geographic location and analyzing through tools used in data sciences these parameters to assess the quality of service of mobile telephone operators. The study focused on the collection and analysis of data from the LTE mobile networks of Orange and MTN in urban and rural areas, in simple mobility during the period June-October 2023.
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根据在喀麦隆马鲁阿和恩冈代雷城乡地区收集的 RSRP 和 RSRQ,评估 MTN 和 ORANGE 的服务质量
评估移动网络的服务质量与提高服务质量同样必要。这必然涉及性能指标的测量、收集和分析。就 LTE 移动网络而言,可以使用多种工具和方法进行评估。客观上,甚至主观上,数据科学都被证明是一种管理大量数据的适当而优雅的方法,可用于使结果可信。本研究的最初目的是利用 CELL INFO 应用程序收集喀麦隆移动网络运营商某些性能指标的功率水平。它主要涉及收集 RSRP 和 RSRQ 以及其他相关参数,如运营商 ID、移动速度、地理位置,并通过数据科学中使用的工具对这些参数进行分析,以评估移动电话运营商的服务质量。研究重点是收集和分析 2023 年 6 月至 10 月期间 Orange 和 MTN LTE 移动网络在城市和农村地区的简单移动数据。
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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来源期刊
Indian Journal of Computer Science and Engineering
Indian Journal of Computer Science and Engineering Engineering-Engineering (miscellaneous)
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