基于多参数分析的自主网络故障预测

H. Abed, Ala Al-Fuqaha, A. Aljaafreh
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引用次数: 1

摘要

本文提出了一种基于多尺度网络参数趋势分析提取频繁异常行为的故障预测系统(FPS)。提出的跨参数相关分析算法(CAAP)利用多层次的时间尺度分析来揭示频繁的异常行为。CAAP的理念是,故障通常不会因为单个参数行为的改变而发生;相反,一组相互关联的参数共同改变它们的行为并导致特定的故障。本文提出的算法需要作者在之前的论文中提出的FABM算法的增强版本,并用于单独分析每个参数的行为。此外,新版本称为FABMG算法,具有相同的多项式计算复杂度O(n2)。CAAP利用关联规则挖掘的数据挖掘技术来揭示存在的关联关系。因此,正如在这项工作中发现的那样,这种方法提高了仅依赖于单个参数分析的FPS结果的质量。CAAP的优点之一是它只需要FABMG输出,也就是说,它不需要重新扫描数据库来生成相关结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Failure Prediction based on multi-parameter analysis in support of autonomic networks
In this paper, we present a Failure Prediction System (FPS) using a novel algorithm that extracts frequent anomalous behaviors based on multi-scale trend analysis of multiple network parameters. The proposed Correlation Analysis Across Parameters algorithm (CAAP) utilizes multiple levels of timescale analysis to reveal the frequent anomalous behaviors. The CAAP philosophy is that failures usually do not occur because of change in a single parameter behavior; instead, a set of interrelated parameters change their behaviors jointly and lead to a particular failure. The proposed algorithm requires an enhanced version of FABM algorithm which was presented by the authors in a previous paper and was used to analyze each parameter's behavior individually. Moreover, the new version, called FABMG algorithm, has the same polynomial computational complexity of O(n2). The CAAP utilizes the data mining techniques of association rules mining in order to reveal the existed correlation relationships. Consequently, as found in this work, this approach improves the quality of the FPS results which was relying on individual parameter analysis only. One of the strengths of CAAP is that it requires the FABMG output only, i.e. it does not require rescanning the database in order to produce the correlation results.
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