A Multi-Level Selective Maintenance Strategy Combined to Data Mining Approach for Multi-Component System Subject to Propagated Failures

被引:0
作者
Mohamed Ali Kammoun
Zied Hajej
Nidhal Rezg
机构
[1] Université de Lorraine,
[2] LGIPM,undefined
[3] École polytechnique du Groupe Honoris United Universities,undefined
来源
Journal of Systems Science and Systems Engineering | 2022年 / 31卷
关键词
Selective maintenance; stochastic dependence; age acceleration factor; data mining; flexible manufacturing system;
D O I
暂无
中图分类号
学科分类号
摘要
In several industrial fields like air transport, energy industry and military domain, maintenance actions are carried out during downtimes in order to maintain the reliability and availability of production system. In such a circumstance, selective maintenance strategy is considered the reliable solution for selecting the faulty components to achieve the next mission without stopping. In this paper, a novel multi-level decision making approach based on data mining techniques is investigated to determine an optimal selective maintenance scheduling. At the first-level, the age acceleration factor and its impact on the component nominal age are used to establish the local failures. This first decision making employed K-means clustering algorithm that exploited the historical maintenance actions. Based on the first-level intervention plan, the remaining-levels identify the stochastic dependence among components by relying upon Apriori association rules algorithm, which allows to discover of the failure occurrence order. In addition, at each decision making level, an optimization model combined to a set of exclusion rules are called to supply the optimal selective maintenance plan within a reasonable time, minimizing the total maintenance cost under a required reliability threshold. To illustrate the robustness of the proposed strategy, numerical examples and a FMS real study case have been solved.
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页码:313 / 337
页数:24
相关论文
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