Back to the Future: Throughput Prediction For Cellular Networks using Radio KPIs

Darijo Raca, A. Zahran, C. Sreenan, R. Sinha, Emir Halepovic, R. Jana, V. Gopalakrishnan
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引用次数: 16

Abstract

The availability of reliable predictions for cellular throughput would offer a fundamental change in the way applications are designed and operated. Numerous cellular applications, including video streaming and VoIP, embed logic that attempts to estimate achievable throughput and adapt their behaviour accordingly. We believe that providing applications with reliable predictions several seconds into the future would enable profoundly better adaptation decisions and dramatically benefit demanding applications like mobile virtual and augmented reality. The question we pose and seek to address is whether such reliable predictions are possible. We conduct a preliminary study of throughput prediction in a cellular environment using statistical machine learning techniques. An accurate prediction can be very challenging in large scale cellular environments because they are characterized by highly fluctuating channel conditions. Using simulations and real-world experiments, we study how prediction error varies as a function of prediction horizon, and granularity of available data. In particular, our simulation experiments show that the prediction error for mobile devices can be reduced significantly by combining measurements from the network with measurements from the end device. Our results indicate that it is possible to accurately predict achievable throughput up to 8 sec in the future where 50th percentile of all errors are less than 15% for mobile and 2% for static devices.
回到未来:使用无线电kpi的蜂窝网络吞吐量预测
对蜂窝吞吐量的可靠预测的可用性将从根本上改变应用程序的设计和操作方式。包括视频流和VoIP在内的许多蜂窝应用都嵌入了试图估计可实现吞吐量并相应地调整其行为的逻辑。我们相信,为应用程序提供几秒钟后的可靠预测,将大大提高适应性决策,并极大地有利于移动虚拟和增强现实等要求苛刻的应用程序。我们提出并试图解决的问题是,这种可靠的预测是否可能。我们使用统计机器学习技术在细胞环境中进行吞吐量预测的初步研究。在大规模的蜂窝环境中,准确的预测是非常具有挑战性的,因为它们的特点是高度波动的信道条件。通过模拟和现实世界的实验,我们研究了预测误差如何随着预测范围和可用数据粒度的变化而变化。特别是,我们的仿真实验表明,通过将来自网络的测量与来自终端设备的测量相结合,可以显着降低移动设备的预测误差。我们的结果表明,未来可以准确预测可实现的吞吐量高达8秒,其中所有错误的第50百分位数在移动设备中小于15%,在静态设备中小于2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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