车载无线电环境下的在线QoS估计

Rodrigo Hernangómez, Alexandros Palaios, Gayathri Guruvayoorappan, Martin Kasparick, N. Ain, Sławomir Stańczak
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引用次数: 2

摘要

服务质量(QoS)估计是无线网络的关键实现因素。机器学习(ML)不断增强的能力促进了这一点。然而,机器学习算法在处理非平稳数据时往往表现不佳,这是无线电环境的典型情况。在这样的环境中,机器学习方案可能需要额外的信号来进行再训练。在本文中,我们提出了一种在线QoS估计方法,其中训练好的模型可以作为基本估计器,并使用来自用户设备(UE)和小区本身的信息进行微调。提出的方法基于自适应随机森林(ARF)算法,该算法使用流数据并对概念漂移下的变化做出反应,即对数据统计属性的变化做出反应。这有效地允许在车辆ue访问不同的无线电环境时重新训练ML模型的部分内容。我们用覆盖多种无线电环境的蜂窝测试网络中广泛测量活动的真实数据来评估这种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online QoS estimation for vehicular radio environments
Quality of service (QoS) estimation is a key enabler in wireless networks. This has been facilitated by the increasing capabilities of machine learning (ML). However, ML algorithms often underperform when presented with non-stationary data, which is typically the case for radio environments. In such environments, ML schemes might require extra signaling for retraining. In this paper, we propose an approach to online QoS estimation, where a trained model can be taken as a base estimator and fine-tuned with information from the user equipment (UE) and the cell itself. The proposed approach is based on the Adaptive Random Forest (ARF) algorithm, which uses streaming data and reacts on changes under concept drift, i.e., to changes in the data's statistical properties. This effectively allows to retrain parts of the ML model as vehicular UEs visit diverse radio environments. We evaluate this method with real data from an extensive measurement campaign in a cellular test network that covered diverse radio environments.
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