The dramatic growth in cellular traffic volume requires cellular network operators to develop strategies to carefully dimension and manage the available network resources. Forecasting traffic volumes is a fundamental building block for any proactive management strategy and is therefore of great interest in such a context. Differently from what found in the literature, where network traffic is generally predicted in the short-term, in this work we tackle the problem of forecasting busy hour traffic, i.e., the time series of observed daily maxima traffic volumes. We tackle specifically forecasting in the long term (one, two months ahead) and we compare different approaches for the task at hand, considering different forecasting algorithms as well as relying or not on a cluster-based approach which first groups network cells with similar busy hour traffic profiles and then fits per-cluster forecasting models to predict the traffic loads. Results on a real cellular network dataset show that busy hour traffic can be forecasted with errors below 10% for look-ahead periods up to 2 months in the future. Moreover, when clusters are available, we improve forecasting accuracy up to 8% and 5% for look-ahead of 1 and 2 months, respectively.
翻译:蜂窝流量的急剧增长要求蜂窝网络操作员制定策略,仔细看待并管理现有的网络资源。 预测流量量是任何积极主动的管理战略的基本基石,因此对这种情况非常感兴趣。 不同于文献中发现的情况,即网络流量一般是短期预测的,在这项工作中,我们处理的是预测忙时流量的问题,即观测到的每日最大流量的时序。 我们具体处理的是长期预测(1个月,两个月),我们比较手头任务的不同方法,考虑到不同的预测算法,以及依赖或不依赖以集群为基础的方法,这种方法首先将具有类似繁忙小时流量的网络电池分组起来,然后适合每个分组预测流量的预测模型。 真正的蜂窝网络数据集的结果显示,如果能够预测到未来2个月时段的忙时流量时流量差低于10%,那么当有集群时,我们就会将预测的准确率提高到8%和5%,然后分别预测1个月和2个月。