大规模网络中数据驱动的能效建模:基于专家知识和 ML 的方法

David López-Pérez;Antonio De Domenico;Nicola Piovesan;Mérouane Debbah
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摘要

移动网络的能耗是一个严峻的挑战。为缓解这一问题,有必要部署和优化网络节能解决方案,如载波关闭,以动态管理网络资源。由于存在大量小区、随机流量、信道变化和复杂的权衡等因素,传统的优化方法非常复杂。本文介绍了通信网络模拟现实(SRCON)框架,这是一种新颖的数据驱动建模范例,它利用实时网络数据,并融合了基于机器学习(ML)和专家的模型。这些混合模型能准确描述网络组件的功能,并预测特定网络中任何能源载体关断配置的网络能效和用户设备(UE)的服务质量。有别于现有方法,SRCON 无需依赖昂贵的专家知识、驱动测试或不完整的地图来预测网络性能。本文详细介绍了 SRCON 将大型网络能效建模问题分解为基于 ML 和专家的子模型的过程。它展示了如何通过采用随机性和精心设计这些子模型之间的关系来降低总体计算复杂度和提高预测准确性。从真实网络数据中得出的结果突显了 SRCON 带来的模式转变,与一家运营商用于网络能效建模的最先进方法相比,SRCON 取得了显著的进步。事实证明,这种由数据驱动的本地网络建模的可靠性是网络节能优化的关键资产。
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Data-Driven Energy Efficiency Modeling in Large-Scale Networks: An Expert Knowledge and ML-Based Approach
The energy consumption of mobile networks poses a critical challenge. Mitigating this concern necessitates the deployment and optimization of network energy-saving solutions, such as carrier shutdown, to dynamically manage network resources. Traditional optimization approaches encounter complexity due to factors like the large number of cells, stochastic traffic, channel variations, and intricate trade-offs. This paper introduces the simulated reality of communication networks (SRCON) framework, a novel, data-driven modeling paradigm that harnesses live network data and employs a blend of machine learning (ML)- and expert-based models. These mix of models accurately characterizes the functioning of network components, and predicts network energy efficiency and user equipment (UE) quality of service for any energy carrier shutdown configuration in a specific network. Distinguishing itself from existing methods, SRCON eliminates the reliance on expensive expert knowledge, drive testing, or incomplete maps for predicting network performance. This paper details the pipeline employed by SRCON to decompose the large network energy efficiency modeling problem into ML- and expert-based submodels. It demonstrates how, by embracing stochasticity, and carefully crafting the relationship between such submodels, the overall computational complexity can be reduced and prediction accuracy enhanced. Results derived from real network data underscore the paradigm shift introduced by SRCON, showcasing significant gains over a state-of-the-art method used by a operator for network energy efficiency modeling. The reliability of this local, data-driven modeling of the network proves to be a key asset for network energy-saving optimization.
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