集成系统的无监督根本原因分析

Renjian Pan, Zhaobo Zhang, Xin Li, K. Chakrabarty, Xinli Gu
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引用次数: 3

摘要

集成系统的日益复杂和高成本给根本原因分析和诊断带来了巨大压力。从人工智能和机器学习的角度出发,人们提出了大量的智能根本原因分析方法。然而,它们中的大多数都需要从维修历史中获得带有根本原因标签的历史测试数据,而这些数据通常既困难又昂贵。在本文中,我们提出了一种不需要维修历史的两阶段无监督根本原因分析方法。第一阶段,利用系统测试信息训练决策树模型,对数据进行粗略聚类。在第二阶段,应用频繁模式挖掘在每个决策树节点中提取频繁模式,以精确地对数据进行聚类,使每个聚类仅代表少量的根本原因。此外,采用l -方法和交叉验证来自动确定算法的超参数。两个具有系统测试数据的行业案例研究表明,所提出的方法显着优于最先进的无监督根本原因分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Root-Cause Analysis for Integrated Systems
The increasing complexity and high cost of integrated systems has placed immense pressure on root-cause analysis and diagnosis. In light of artificial intelligent and machine learning, a large amount of intelligent root-cause analysis methods have been proposed. However, most of them need historical test data with root-cause labels from repair history, which are often difficult and expensive to obtain. In this paper, we propose a two-stage unsupervised root-cause analysis method in which no repair history is needed. In the first stage, a decision-tree model is trained with system test information to roughly cluster the data. In the second stage, frequent-pattern mining is applied to extract frequent patterns in each decision-tree node to precisely cluster the data so that each cluster represents only a small number of root causes. In additional, L-method and cross validation are applied to automatically determine the hyper-parameters of our algorithm. Two industry case studies with system test data demonstrate that the proposed approach significantly outperforms the state-of-the-art unsupervised root-cause analysis method.
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