基于平衡模型训练的蜂窝网络智能无线局域网省电

V. Singh, M. Gupta, C. Maciocco
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引用次数: 1

摘要

优化5G系统和下一代技术部署的功耗是一个关键问题。优化功耗的解决方案必须考虑到维护服务水平协议(SLA)的权衡。移动网络运营商(MNO)对于节省电力和维护SLA的目标可能有不同的优先级,这取决于诸如客户合同、位置、一天中的时间、流量类型等因素。在本文中,我们设计了一个智能解决方案,使用开关单元的通断动作来节省电力,使用机器学习(ML)/深度学习(DL)方法来预测未来的交通负载。我们首先确定了实际蜂窝网络中由于数据不平衡而导致的流量负载预测中的训练不平衡问题,以及MNO对节能和SLA维护的竞争目标的偏好。然后,我们提出了一种结合平衡损失函数的新解决方案,解决了训练不平衡问题。与之前的方法(如基于均方误差(MSE)最小化流量预测的方法)的性能相比,我们使用网络现场数据证明,我们的方法能够在服务质量中断方面实现高达3倍的改进,同时节省相当相似的电力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent RAN Power Saving using Balanced Model Training in Cellular Networks
optimizing power consumption of 5G systems and next generation technology deployments is a critical problem. It is essential that the solution for optimizing power consumption takes into account the tradeoffs with maintaining service level agreement (SLA). Mobile network operator (MNO) may have different priorities for the objectives of saving power and for maintaining SLA, which depends on factors, such as customer contract, location, time of day, type of traffic, etc. In this paper, we design an intelligent solution using switching cells on-off action to save power, using machine learning (ML)/ deep learning (DL) methods to forecast future traffic load. We firstly identify the problem of training imbalance in traffic load prediction due to data imbalance in real cellular networks, and MNO preferences for the competing objectives of saving power and SLA maintenance. We then propose a novel solution that incorporates Balancing Loss Function, which addresses the training imbalance problem. Compared with the performance of previous approaches such as Mean Square Error (MSE) minimization traffic forecast based methods, we demonstrate using network field data that our method is able to achieve upto 3X improvement in service quality outage, with fairly similar power savings.
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