基于人工神经网络的移动网络流量预测

Anil Kirmaz, D. Michalopoulos, Irina Balan, W. Gerstacker
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引用次数: 3

摘要

由于移动用户的动态特性,移动通信系统需要适应时间和空间变化的移动网络流量,以提供高质量的服务。由于这些变化不是完全随机的,因此可以从观察到的网络流量中提取确定性部分和模式,以预测未来的网络流量状态。这种预测可以用于一系列主动网络管理程序,包括协调波束管理、波束激活/去激活和负载平衡。为此,本文提出了一种基于人工神经网络的智能预测器,并与基于线性预测的基线方案进行了比较。结果表明,神经网络方案在高度随机和确定性移动模式之间相对平衡的数据流量方面优于基线方案。对于高度随机或确定性的移动模式,两种考虑的方案的性能彼此相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile Network Traffic Forecasting Using Artificial Neural Networks
Mobile communication systems need to adapt to temporally and spatially changing mobile network traffic, due to dynamic characteristics of mobile users, in order to provide high quality of service. Since these changes are not purely random, one can extract the deterministic portion and patterns from the observed network traffic to predict the future network traffic status. Such prediction can be utilized for a series of proactive network management procedures including coordinated beam management, beam activation/deactivation and load balancing. To this end, in this paper, an intelligent predictor using artificial neural networks is proposed and compared with a baseline scheme that uses linear prediction. It is shown that the neural network scheme outperforms the baseline scheme for relatively balanced data traffic between highly random and deterministic mobility patterns. For highly random or deterministic mobility patterns, the performance of the two considered schemes is similar to each other.
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