LSTM-based generation of cellular network traffic

Anne Josiane Kouam, A. C. Viana, A. Tchana
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Abstract

Domain-wide recognized by their high value in human activity and network monitoring studies, cellular network traffic (i.e., Charging Data Records, named CDRs), however, present accessibility and usability issues, restricting their exploitation and research reproducibility. This paper tackles such challenges by modeling CDRs that fulfill real-world data attributes. Our designed framework, named Zen leverages LSTM to realistically model network users’ traffic behavior through a 4-stage generative pipeline. Results show that Zen’s models accurately capture individual and global distributions of a fully anonymized real-world traffic CDRs dataset. Finally, we validate Zen CDRs ability of reproducing daily cellular behaviors of the urban population and its usefulness in practical networking applications such as Radio Access Network’s power savings, and anomaly detection as compared to real-world CDRs.
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基于lstm的蜂窝网络流量生成
蜂窝网络流量(即收费数据记录,简称cdr)在人类活动和网络监测研究中的高价值得到了广泛的认可,然而,它们存在可访问性和可用性问题,限制了它们的开发和研究的可重复性。本文通过对满足真实世界数据属性的cdr进行建模来解决这些挑战。我们设计的框架Zen利用LSTM通过一个4阶段的生成管道来真实地模拟网络用户的流量行为。结果表明,Zen的模型准确地捕获了完全匿名的真实世界流量话单数据集的个人和全球分布。最后,我们验证了Zen cdr再现城市人口日常蜂窝行为的能力及其在实际网络应用中的实用性,例如与真实cdr相比,无线接入网的节能和异常检测。
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