Analysis of SD-WAN Packets using Machine Learning Algorithm

Douglas Emmanuel Ikiomoye, N. Linge, S. Hill
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Abstract

In recent years, legacy networks have evolved to incorporate the use of programmability features with the aim of improving performance and resource utilisation. In achieving this goal, packets need to be monitored and classified. In this study, an optimal monitoring tool is used in capturing the packets or flows in an emulated Software Defined Wide Area Network using GNS3. The network architecture is implemented using two hosts communicating to a server integrated with a machine learning (ML) model (python based) to classify real network packets. The ML model is achieved using the Decision Tree algorithm based on python programming. The proposed implementation ensures the ML algorithm efficiently classifies and segments various packets in the network in a database structure. This testbed can be effectively implemented in a real network scenario, and packet data can be captured and analysed into a database structure which can be used for further analysis such as congestion window or throughput for improving network performance and resource utilisation.
基于机器学习算法的SD-WAN数据包分析
近年来,遗留网络已经发展到结合可编程特性的使用,目的是提高性能和资源利用率。为了实现这一目标,需要对数据包进行监控和分类。在本研究中,使用GNS3在模拟软件定义广域网中捕获数据包或流时使用了最佳监控工具。网络架构使用两台主机与一台集成了机器学习(ML)模型(基于python)的服务器通信来实现,以对真实的网络数据包进行分类。机器学习模型采用基于python编程的决策树算法实现。提出的实现保证了机器学习算法在数据库结构中有效地对网络中的各种数据包进行分类和分段。该测试平台可以有效地实现在真实的网络场景中,并可以捕获数据包数据并将其分析成数据库结构,用于进一步分析拥塞窗口或吞吐量,以提高网络性能和资源利用率。
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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