A Machine Learning Based Approach to QoS Metrics Prediction in the Context of SDN

Hao Xu Hao Xu, Xian-Bin Wan Hao Xu, Hui Liu Xian-Bin Wan
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Abstract

With the advent of the industrial Internet era and rapid traffic growth, network optimization is increasingly needed, and network optimization starts with knowing QoS-related metrics. In this paper, we use a machine learning approach in a theoretical SDN architecture, using traffic as the input to a machine learning model, to predict network QoS metrics, focusing on network jitter and packet loss rate. We built a LAN and deployed a time server on the LAN in order to make the time of the devices on the LAN highly consistent. Experiments were conducted under this LAN to obtain data sets about traffic and QoS metrics. Then, we used the completed trained machine learning model to predict the network jitter and packet loss rate using traffic as the input to the machine learning model. The highest R² values for the prediction of network jitter and packet loss reached 0.9996 and 0.939, respectively. The experiments show that a suitable machine learning model is able to predict network jitter and packet loss rate relatively accurately for a specific network topology.  
基于机器学习的SDN环境下QoS指标预测方法
随着工业互联网时代的到来和流量的快速增长,对网络优化的需求越来越大,而网络优化从了解qos相关指标开始。在本文中,我们在理论SDN架构中使用机器学习方法,使用流量作为机器学习模型的输入,来预测网络QoS指标,重点关注网络抖动和丢包率。为了使局域网内设备的时间高度一致,我们建立了一个局域网,并在局域网内部署了时间服务器。在该局域网下进行了实验,获得了有关流量和QoS指标的数据集。然后,我们使用训练完成的机器学习模型,以流量作为机器学习模型的输入,预测网络抖动和丢包率。网络抖动和丢包预测的最高R²值分别达到0.9996和0.939。实验表明,合适的机器学习模型能够相对准确地预测特定网络拓扑结构下的网络抖动和丢包率。
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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