Comparative Analysis of the Features of a 5G Network Production Dataset: The Machine Learning Approach

C. Okpara, V. Idigo, Chukwunenye S. Okafor
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引用次数: 0

Abstract

5G networks deployment is much data driven, leading to more energy consumption. The need to efficiently manage this energy consumption is a major drive in the comparative analysis of the features of a 5G production dataset. The features of the 5G production dataset generated with G-Net track pro were analyzed using Python programming language. From the correlation coefficient results obtained, the highest correlation value of 0.78 exists between the reference signal power and the received signal reference power of the neighbouring cells. Using the significant indicator, we observed that the signal to noise ratio is the most important of all the features. Using heat map and scatter plots, we further observed that there were good relationships between the key features selected from the significant indicator. These features will play a big role in improving the energy efficiency of a 5G network.
5G网络生产数据集特征的比较分析:机器学习方法
5G网络部署在很大程度上是数据驱动的,从而导致更多的能源消耗。有效管理这种能源消耗的需求是对5G生产数据集特征进行比较分析的主要推动力。利用Python编程语言对G-Net track pro生成的5G生产数据集特征进行分析。从得到的相关系数结果来看,参考信号功率与相邻小区接收信号参考功率的相关值最高,为0.78。使用显著性指标,我们观察到信噪比是所有特征中最重要的。利用热图和散点图,我们进一步观察到,从显著性指标中选择的关键特征之间存在良好的关系。这些功能将在提高5G网络的能源效率方面发挥重要作用。
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