基于机器学习算法的网络运行状态评估监测系统

Xing Huang, Jinkai Li, Yang Liang
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引用次数: 0

摘要

经过几十年的稳步发展,互联网产业已成为全球经济社会发展的重要动力,网络规模不断扩大。网络运行状态评估与监控系统对于保证网络的正常运行,及时诊断网络故障,满足不同用户的业务需求具有至关重要的作用。本文的目的是研究基于机器学习算法的网络运行状态评估与监控系统,主要阐述了本课题的研究背景和重要性,以及国内外的发展现状,主要研究了IP网络环境下网络运行监控系统的软件架构和监控架构的设计与实现;对后台服务器负载均衡技术进行了深入的理论研究,提出了一种基于机器学习算法的负载均衡机制。数据库业务模拟结果表明,基于遗传算法的负载均衡器的数据库查询时间约为3.3秒,而基于机器学习算法的负载均衡器只需要2.2秒,减少了近0.9秒。可以看出,机器学习算法在数据库查询业务上也有很大的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network Operation Status Evaluation Monitoring System Based on Machine Learning Algorithm
After decades of steady development, the Internet industry has become an important driving force for global economic and social development, and the scale of the network is growing. The evaluation and monitoring system of network operation status plays a vital role in ensuring the normal operation of the network, diagnosing network faults in time, and meeting the service needs of different users. The purpose of this paper is to study the network operation status evaluation and monitoring system based on machine learning algorithm, mainly to expound the background and importance of this topic, as well as the development status at home and abroad, mainly to study the software architecture of the network operation monitoring system in the IP network environment And monitoring architecture design and implementation, further theoretical research on background server load balancing technology, and a load balancing mechanism based on machine learning algorithm is proposed. The database business simulation results show that the database query time of the load balancer based on the genetic algorithm is about 3.3 seconds, while the load balancer based on the machine learning algorithm only needs 2.2 seconds, a reduction of nearly 0.9 seconds. It can be seen that machine learning algorithms also have great advantages in database query business.
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