i-RCAM: Intelligent expert system for root cause analysis in maintenance decision making

P. Chemweno, L. Pintelon, Lara's Jongers, P. Muchiri
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引用次数: 14

Abstract

The increasing adoption of maintenance information management systems for maintenance decision support by industry has facilitated the collection of large volumes of maintenance data. Apart from enhancing maintenance decision support in aspects such as task planning or resource allocation, the data could assist decision makers identify the focal root causes of recurrent equipment failures. In this way, more effective strategies may be formulated and targeted at these focal causes. Despite the increased adoption of maintenance information systems and, as such, availability of maintenance data few techniques so far developed leverage on the maintenance data for decision support in root cause analysis. A particular focus in this regard relates to application of techniques for data mining such as association rule mining. In particular, association rule mining is attractive in the sense of analyzing failure associations embedded in the maintenance data. Thus, this study proposes a methodology for enhancing decision support for root cause analysis in maintenance decision making. The methodology leverages on two association rule mining algorithms - Apriori and Predictive Apriori. Moreover, the methodology incorporates a data standardization step, whereof standard terms and vocabulary are adopted from the ISO 14224 and used for standardizing the equipment failure descriptions. Thereafter, the standardized descriptions are applied as input to an association rule mining framework from which important failure associations are extracted and validated by experts for relevancy. After which, the extracted failure associations are used to generate causal maps, and from the maps, the focal root causes of the equipment failure are identified. The added value of the proposed methodology is demonstrated in the application case of thermal power plant maintenance data.
i-RCAM:用于维修决策根本原因分析的智能专家系统
越来越多地采用维修信息管理系统来支持维修决策,促进了大量维修数据的收集。除了在任务规划或资源分配等方面加强维护决策支持外,这些数据还可以帮助决策者确定设备经常性故障的主要根本原因。这样,就可以制定更有效的战略,针对这些重点原因。尽管越来越多地采用了维护信息系统,而且维护数据的可用性也越来越高,但迄今为止,很少有技术能够利用维护数据来支持根本原因分析中的决策。这方面的一个特别重点涉及数据挖掘技术的应用,例如关联规则挖掘。特别是,关联规则挖掘在分析嵌入在维护数据中的故障关联方面很有吸引力。因此,本研究提出一种在维修决策中加强根本原因分析决策支持的方法。该方法利用了两种关联规则挖掘算法——Apriori和Predictive Apriori。此外,该方法纳入了数据标准化步骤,其中标准术语和词汇采用了ISO 14224,并用于设备故障描述的标准化。然后,将标准化描述作为关联规则挖掘框架的输入,从中提取重要的故障关联,并由专家验证其相关性。之后,提取的故障关联用于生成因果图,并从图中确定设备故障的主要根本原因。以火电厂维修数据为例,验证了该方法的附加价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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