预测商用和运营 5G 平台中 5G 指标的机器学习方法:5G 和移动性

IF 4.5 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Computer Communications Pub Date : 2024-10-21 DOI:10.1016/j.comcom.2024.107974
Ana Almeida , Pedro Rito , Susana Brás , Filipe Cabral Pinto , Susana Sargento
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引用次数: 0

摘要

在互联性更强的社会中,对更安全、可用、可靠和快速网络的需求不断涌现。在此背景下,5G 网络旨在改变我们的通信和互动方式。在这项工作中,我们分析了商用 5G 部署的真实用户数据,并提出了预测技术,以帮助理解趋势和管理 5G 网络。我们建议创建一个指标来衡量流量负载。我们使用多种机器学习模型对该指标进行预测,并选择 LightGBM 作为最佳方法。我们发现,这种方法获得的结果准确性较高,优于其他机器学习方法,但如果模式中包含突发事件,其性能就会下降。此外,我们还引入了移动性数据,并将其与之前的流量负载指标相结合,通过使用移动性数据了解其相关性并预测 5G 指标。我们再次证明,LightGBM 是预测两种类型的 5G 切换(GNB 内切换和 GNB 间切换)的最佳模型,它使用了 5G 小区附近几条道路和车道上的雷达提供的移动信息。
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A machine learning approach to forecast 5G metrics in a commercial and operational 5G platform: 5G and mobility
The demand for more secure, available, reliable, and fast networks emerges in a more interconnected society. In this context, 5G networks aim to transform how we communicate and interact. However, studies using 5G data are sparse since there are only a few number of publicly available 5G datasets (especially about commercial 5G network metrics with real users).
In this work, we analyze the data of a commercial 5G deployment with real users, and propose forecasting techniques to help understand the trends and to manage 5G networks. We propose the creation of a metric to measure the traffic load. We forecast the metric using several machine learning models, and we choose LightGBM as the best approach. We observe that this approach obtains results with a good accuracy, and better than other machine learning approaches, but its performance decreases if the patterns contain unexpected events. Taking advantage of the lower accuracy in the performance, this is used to detect changes in the patterns and manage the network in real-time, supporting network resource elasticity by generating alarms and automating the scaling during these unpredictable fluctuations.
Moreover, we introduce mobility data and integrate it with the previously traffic load metric, understanding its correlation and the prediction of 5G metrics through the use of the mobility data. We show again that LightGBM is the best model in predicting both types of 5G handovers, intra- and inter-gNB handovers, using the mobility information through Radars in the several roads, and lanes, near the 5G cells.
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来源期刊
Computer Communications
Computer Communications 工程技术-电信学
CiteScore
14.10
自引率
5.00%
发文量
397
审稿时长
66 days
期刊介绍: Computer and Communications networks are key infrastructures of the information society with high socio-economic value as they contribute to the correct operations of many critical services (from healthcare to finance and transportation). Internet is the core of today''s computer-communication infrastructures. This has transformed the Internet, from a robust network for data transfer between computers, to a global, content-rich, communication and information system where contents are increasingly generated by the users, and distributed according to human social relations. Next-generation network technologies, architectures and protocols are therefore required to overcome the limitations of the legacy Internet and add new capabilities and services. The future Internet should be ubiquitous, secure, resilient, and closer to human communication paradigms. Computer Communications is a peer-reviewed international journal that publishes high-quality scientific articles (both theory and practice) and survey papers covering all aspects of future computer communication networks (on all layers, except the physical layer), with a special attention to the evolution of the Internet architecture, protocols, services, and applications.
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