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ML-based Analytics Framework for beyond 5G Mobile Communication Systems

机译:用于超出5G移动通信系统的ML基于ML的分析框架

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Predictive analysis of cellular network behaviour has many advantages, and will be one of the major breakthroughs on 5G and beyond 5G networks. Knowing the parameters that have impact on reliable network operation and their use in network performance analysis and evaluation are very important. Thus, in case of degradation, intervention is possible before the fault actually occurs and exactly on the faulty equipment. This brings an increase in efficiency with respect to the scenario in which the enhancement solutions are brought subsequent to network events. This paper proposes tracing a predictive behaviour for certain performance indicators of an LTE RAN network and in presenting optimisation solutions of the undesired behaviour. Also, we propose an analytics framework for the access network that can be applied to 5G and beyond 5G RANs. A set of APIs is used in order to extract all the parameters from the LTE RAN Network and store them into a database. After that, the data is exported for further processing and analytics. Results show that the Gradient Boosting algorithm is the most suitable to be used in such a framework.
机译:蜂窝网络行为的预测分析具有许多优点,并将是5G及超过5G网络的主要突破之一。了解对可靠网络运行产生影响的参数及其在网络性能分析和评估中的使用非常重要。因此,在劣化的情况下,在故障实际发生并准确地在故障设备上之前,可以进行干预。这引起了在网络事件之后推动了增强解决方案的情况的效率的提高。本文提出追踪LTE RAN网络的某些性能指标的预测行为,以及呈现不期望的行为的优化解决方案。此外,我们为可以应用于5G和超过5G RAN的接入网络提出了一个分析框架。使用一组API,以便从LTE RAN网络中提取所有参数并将其存储到数据库中。之后,将导出数据以进行进一步处理和分析。结果表明,梯度升压算法最适合在这种框架中使用。

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