The energy consumption of the fifth generation(5G) of mobile networks is one of the major concerns of the telecom industry. However, there is not currently an accurate and tractable approach to evaluate 5G base stations (BSs) power consumption. In this article, we propose a novel model for a realistic characterisation of the power consumption of 5G multi-carrier BSs, which builds on a large data collection campaign. At first, we define a machine learning architecture that allows modelling multiple 5G BS products. Then, we exploit the knowledge gathered by this framework to derive a realistic and analytically tractable power consumption model, which can help driving both theoretical analyses as well as feature standardisation, development and optimisation frameworks. Notably, we demonstrate that such model has high precision, and it is able of capturing the benefits of energy saving mechanisms. We believe this analytical model represents a fundamental tool for understanding 5G BSs power consumption, and accurately optimising the network energy efficiency.
翻译:移动网络第五代(5G)的能源消耗是电信业的主要关切之一,然而,目前没有准确和可移植的方法来评价5G基站的电耗。在本篇文章中,我们提出了一个5G多载BS电力消耗现实化的新模式,该模式以大规模数据收集运动为基础。首先,我们定义了一种机器学习结构,可以模拟多个5GBS产品。然后,我们利用这个框架所收集的知识来得出一个现实的、可分析的可移动的电力消费模式,它既能推动理论分析,又能推动特征标准化、开发和优化框架。值得注意的是,我们证明这种模式非常精确,能够抓住节能机制的好处。我们认为,这一分析模式是理解5GBS电力消耗和准确优化网络能源效率的基本工具。