Long-Term Mobile Traffic Forecasting Using Deep Spatio-Temporal Neural Networks

Chaoyun Zhang, P. Patras
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引用次数: 186

Abstract

Forecasting with high accuracy the volume of data traffic that mobile users will consume is becoming increasingly important for precision traffic engineering, demand-aware network resource allocation, as well as public transportation. Measurements collection in dense urban deployments is however complex and expensive, and the post-processing required to make predictions is highly non-trivial, given the intricate spatio-temporal variability of mobile traffic due to user mobility. To overcome these challenges, in this paper we harness the exceptional feature extraction abilities of deep learning and propose a Spatio-Temporal neural Network (STN) architecture purposely designed for precise network-wide mobile traffic forecasting. We present a mechanism that fine tunes the STN and enables its operation with only limited ground truth observations. We then introduce a Double STN technique (D-STN), which uniquely combines the STN predictions with historical statistics, thereby making faithful long-term mobile traffic projections. Experiments we conduct with real-world mobile traffic data sets, collected over 60 days in both urban and rural areas, demonstrate that the proposed (D-)STN schemes perform up to 10-hour long predictions with remarkable accuracy, irrespective of the time of day when they are triggered. Specifically, our solutions achieve up to 61% smaller prediction errors as compared to widely used forecasting approaches, while operating with up to 600 times shorter measurement intervals.
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基于深度时空神经网络的长期移动交通预测
准确预测移动用户将消耗的数据流量对于精准交通工程、需求感知网络资源分配以及公共交通变得越来越重要。然而,在密集的城市部署中收集测量数据是复杂和昂贵的,并且考虑到由于用户移动性而导致的移动流量的复杂时空变化,进行预测所需的后处理非常重要。为了克服这些挑战,在本文中,我们利用深度学习的特殊特征提取能力,提出了一种时空神经网络(STN)架构,专门用于精确的全网移动流量预测。我们提出了一种机制,可以微调STN并使其仅在有限的地面真值观测下运行。然后,我们引入了双STN技术(D-STN),该技术将STN预测与历史统计数据独特地结合起来,从而做出忠实的长期移动流量预测。我们对在城市和农村地区收集的60多天的真实移动交通数据集进行的实验表明,所提出的(D-)STN方案无论在一天中的何时触发,都能以惊人的准确性执行长达10小时的预测。具体来说,与广泛使用的预测方法相比,我们的解决方案的预测误差减少了61%,而测量间隔缩短了600倍。
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