基于网络拓扑和告警的网络根源故障定位

Jingyu Li, Yunyi Jiang, Ziye Zhang
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引用次数: 0

摘要

大型互联网服务平台每天涉及数百个系统间呼叫,产生大量报警数据。如何利用网络拓扑信息和告警数据对告警进行及时有效的分析,最终给出有效的告警和怀疑的根本原因,是网络运维面临的主要挑战。本文研究了一种解决方案。首先,对长报警系统集群的输出序列进行预处理。然后通过支持向量机判断是否存在根本故障。下一阶段,利用准备好的贝叶斯网络计算故障类型的最高概率,结合过滤规则得到最终结论。该方法重量轻、效率高,已通过实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network root fault location based on network topology and alarm
Large Internet service platforms involving hundreds of inter-system calls generate a large amount of alarm data every day. How to use the network topology information and alarm data to analyze the alarm in a timely and effective manner, and finally give the effective alarm and the suspected root cause, is the main challenge facing the network operation and maintenance. This paper studies a kind of solution. First, we preprocess the output sequence of a long alarm system cluster. And then judge whether there is a root fault by Support Vector Machine. At the next stage, employee a well-prepared Bayesian network to compute the highest probability of fault types, combined with filtering rules to get the final conclusion. The method is lightweight and efficient, which has been verified by experiments.
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