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A Data Fusion Approach of Multiple Maintenance Data Sources for Real-World Reliability Modelling

机译:多重维护数据源的数据融合方法,用于真实世界可靠性建模

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A central tenet in the theory of reliability modelling is the quantification of the probability of asset failure. In general, reliability depends on asset age and the maintenance policy applied. Usually, failure and maintenance times are the primary inputs to reliability models. However, for many organisations, different aspects of these data are often recorded in different databases (e.g. work order notifications, event logs, condition monitoring data, and process control data). These recorded data cannot be interpreted individually, since they typically do not have all the information necessary to ascertain failure and preventive maintenance times. This paper presents a methodology for the extraction of failure and preventive maintenance times using commonly-available, real-world data sources. A text-mining approach is employed to extract keywords indicative of the source of the maintenance event. Using these keywords, a Naive Bayes classifier is then applied to attribute each machine stoppage to one of two classes: failure or preventive. The accuracy of the algorithm is assessed and the classified failure time data are then presented. The applicability of the methodology is demonstrated on a maintenance data set from an Australian electricity company.
机译:可靠性建模理论中的中央宗旨是量化资产衰竭的可能性。一般而言,可靠性取决于资产年龄和应用维护政策。通常,故障和维护时间是可靠性模型的主要输入。然而,对于许多组织,这些数据的不同方面通常在不同的数据库中记录(例如,工作订单通知,事件日志,条件监视数据和过程控制数据)。这些记录的数据不能单独解释,因为它们通常没有确定失败和预防性维护时间所需的所有信息。本文介绍了使用普通可用的现实数据来源提取故障和预防性维护时间的方法。用于提取指示维护事件来源的关键字的文本挖掘方法。使用这些关键字,然后将天真的贝叶斯分类器应用于将每个计算机停止属于两个类:失败或预防性。评估算法的准确性,然后呈现分类的故障时间数据。方法的适用性在澳大利亚电力公司的维护数据上证明了该方法。

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