使用机器学习区分输入流量传输介质的服务器端

Hosam Alamleh, Kevin Waters, Baker Al Smadi
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引用次数: 0

摘要

在过去的二十年中,通信和信息技术领域取得了快速发展。今天,基础设施包括高速宽带网络,为固定位置的用户提供服务,这被称为固定宽带网络。另一种类型为移动用户提供服务,称为移动宽带网络。固定宽带网络提供固定的速度和可靠的连接。与此同时,移动宽带网络提供了移动性,但可靠性较差。因此,一些关键的操作,如系统更新,需要用户连接到固定宽带网络。不同类型的网络导致不同类型的流量模式。本文利用服务器端的机器学习模型来帮助服务器区分通过固定网络传输的数据和通过移动网络传输的数据。使用监督训练来建立模型。对该系统进行了测试,准确率达到92.24%。这项工作是新颖的,也是同类工作中的第一次,因为它是第一次尝试根据数据包到达的模式来检测用于传输的网络的性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Server-Side Distinction of Incoming Traffic Transmission Medium Using Machine Learning
In the two decades, there have been rapid advancements in the field of communication and information technology. Today, infrastructures include high-speed broadband networks that serve users at a fixed location which is referred to as fixed broadband networks. Another type serves users on the move which is referred to as mobile broadband networks. Fixed broadband networks offer fixed speed and reliable connections. Meanwhile, mobile broadband networks offer mobility, but they are less reliable. Therefore, some of the critical operations such as system update require users to be connected to a fixed broadband network. Different type of networks results in different type of traffic pattern. This paper utilizes a machine learning model at the server-side to help servers differentiate between data transmitted over fixed networks and data transmitted over mobile networks. Supervised training was used to build the model. The proposed system was tested and it showed an accuracy of 92.24 percent. This work is novel and the first of its kind since it is the first to attempt the detection of the nature of the network used for transmission based on the pattern of the arrival of packets.
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