Towards Forecasting Low Network Traffic for Software Patch Downloads: An ARMA Model Forecast Using CRONOS

I. Tan, Poo Kuan Hoong, C. Y. Keong
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引用次数: 8

Abstract

The usage of the Internet has become ubiquitous, even for desktop applications to assume that the computer system it is running on is connected to the Internet. Desktop applications rely on the Internet connectivity for software license authentication and also for maintenance through downloading of software patches. However, the latter can pose an annoyance to the user when he or she is relying on the Internet for real-time gaming or during heavy downloading of multimedia files. In this paper, we study the effectiveness of using the ARMA model to provide short range forecasting of Internet network TCP traffic for a single broadband line. The outcome of the research is positive and indicates that a step size of 30 seconds and irrespective of the window size gives the most accurate forecast. Through amplification of the results, this method shows strong indication that it can be implemented by software application developers to determine the most appropriate non-disruptive period to download their software patches. For small sized software patches, the software application can activate the download and a period of 120 seconds would be sufficient.
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预测软件补丁下载的低网络流量:使用CRONOS的ARMA模型预测
互联网的使用已经变得无处不在,甚至对于桌面应用程序来说,假设它所运行的计算机系统已连接到互联网。桌面应用程序依靠互联网连接进行软件许可证认证,并通过下载软件补丁进行维护。然而,当用户依赖互联网进行实时游戏或大量下载多媒体文件时,后者可能会给用户带来烦恼。在本文中,我们研究了使用ARMA模型对单个宽带网络TCP流量进行短期预测的有效性。研究结果是积极的,表明步长为30秒,无论窗口大小如何,都能给出最准确的预测。通过放大结果,该方法显示出强烈的迹象,表明软件应用程序开发人员可以实施该方法,以确定下载其软件补丁的最合适的非中断期。对于较小的软件补丁,软件应用程序可以激活下载,120秒的时间就足够了。
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