基于Informer的5G移动网络带宽预测

Tahmina Azmin, mohamadreza ahmadinejad, Nashid Shahriar
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引用次数: 0

摘要

第五代(5G)移动网络希望通过超可靠和低延迟的连接提供极高的数据速率。随着移动互联网的日益普及和移动应用对带宽需求的增加,用户体验质量(QoE)变得越来越重要。5G网络需要预测信道的实时带宽,以满足带宽密集型应用(如视频流/会议、虚拟/增强/混合现实和自动驾驶)的QoE。如果可以提前预测未来的带宽,那么需要带宽的应用程序就可以利用这些估计来调整它们的数据传输速率,并显著提高用户QoE。通过分析由信道、上下文和与吞吐量信息相关的蜂窝指标组成的公开可用的5G数据集,现有的工作使用基于长短期记忆(LSTM)的机制来预测未来的带宽。我们将基于transformer的模型(即“Informer”)应用于5G数据集,发现带宽预测的误差降低了约95%。此外,我们结合了一些新的特征分析方法(LASSO和带新超参数的随机森林),以找出最准确的预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bandwidth Prediction in 5G Mobile Networks Using Informer
Fifth-generation (5G) mobile networks aspire to deliver exceptionally high data rates with ultra-reliable and low-latency connectivity. With the growing popularity of mobile Internet and the increased bandwidth requirements of mobile applications, user Quality of Experience (QoE) is becoming increasingly critical. 5G networks demand predicting the real-time bandwidth of a channel to satisfy the QoE for bandwidth-savvy applications such as video streaming/conferencing, vir-tual/augmented/mixed reality, and autonomous driving. If future bandwidth can be forecast in advance, the bandwidthhungry applications may utilize the estimates to adapt their data transmission rates and dramatically enhance user QoE. By analyzing a publicly available 5G dataset comprised of the channel, context, and cell-related metrics with throughput information, existing work has used Long Short Term Memory (LSTM) based mechanisms to predict future bandwidth. We applied the Transformer-based model, namely ‘Informer,’ to the 5G dataset and found significant improvement of about 95% error decrease for bandwidth prediction. In addition, we combined some new feature analysis approaches (LASSO and Random Forest with new hyper-parameters) in addition to the the existing Random Forest with Informer to find out the most accurate prediction approach.
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