A systematic reliability-centred maintenance framework with fuzzy computational integration – a case study of manufacturing process machinery

IF 1.8 Q3 ENGINEERING, INDUSTRIAL
Adel Ali Ahmed Qaid, Rosmaini Ahmad, S. A. Mustafa, Badiea Abdullah Mohammed
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引用次数: 0

Abstract

PurposeThis study presents a systematic framework for maintenance strategy development of manufacturing process machinery. The framework is developed based on the reliability-centred maintenance (RCM) approach to minimise the high downtime of a production line, thus increasing its reliability and availability. A case study of a production line from the ghee and soap manufacturing industry in Taiz, Yemen, is presented for framework validation purposes. The framework provides a systematic process to identify the critical system(s) and guide further investigation for functional significant items (FSIs) based on quantitative and qualitative analyses before recommending appropriate maintenance strategies and specific tasks.Design/methodology/approachThe proposed framework integrates conventional RCM procedure with the fuzzy computational process to improve FSIs criticality estimation, which is the main part of failure mode effect criticality analysis (FMECA) applications. The framework consists of four main implementation stages: identification of the critical system(s), technical analysis, Fuzzy-FMECA application for FSIs criticality estimation and maintenance strategy selection. Each stage has its objective(s) and related scientific techniques that are applied to systematically guide the framework implementation.FindingsThe proposed framework validation is summarised as follows. The first stage results demonstrate that the seaming system (top and bottom systems) caused 50% of the total production line downtime, indicating it is a critical system that requires further analysis. The outcomes of the second stage provide significant technical information on the subject (seaming system), helping team members to identify and understand the structure and functional complexities of the seaming system. This stage also provides a better understanding of how the seaming system functions and how it can fail. In stage 3, the application of FMECA with the fuzzy computation integration process presents a systematic way to analyse the failure mode, effect and cause of items (components of the seaming system). This stage also includes items’ criticality estimation and ranking assessment. Finally, stage four guides team members in recommending the appropriate countermeasures (maintenance strategies and task selection) based on their priority level.Originality/valueThis paper proposes an original maintenance strategies development framework based on the RCM approach for production system equipment. Specifically, it considers a fuzzy computational process based on the Gaussian function in the third stage of the proposed framework. Adopting the fuzzy computational process improves the risk priority number (RPN) estimation, resulting in better criticality ranking determination. Another significant contribution is introducing an extended item criticality ranking assessment process to provide maximum levels of criticality item ranking. Finally, the proposed RCM framework also provides detailed guidance on maintenance strategy selection based on criticality levels, unique functionality and failure characteristics of each FSI.
以可靠性为中心的系统维护框架与模糊计算集成--制造工艺机械案例研究
目的 本研究提出了一个用于制定制造流程机械维护策略的系统框架。该框架基于以可靠性为中心的维护(RCM)方法,旨在最大限度地减少生产线的高停机时间,从而提高其可靠性和可用性。为验证该框架,介绍了也门塔伊兹酥油和肥皂制造业生产线的案例研究。该框架提供了一个系统化流程,用于识别关键系统,并根据定量和定性分析指导对重要功能项目(FSI)的进一步调查,然后再推荐适当的维护策略和具体任务。设计/方法/途径所提出的框架将传统的 RCM 程序与模糊计算流程相结合,以改进 FSI 临界估计,这是故障模式影响临界分析(FMECA)应用的主要部分。该框架包括四个主要实施阶段:确定关键系统、技术分析、模糊 FMECA 应用于 FSI 临界度估计和维护策略选择。每个阶段都有其目标和相关的科学技术,用于系统地指导框架的实施。第一阶段的结果表明,缝合系统(顶部和底部系统)造成的停机时间占生产线总停机时间的 50%,表明这是一个需要进一步分析的关键系统。第二阶段的结果提供了有关主题(接缝系统)的重要技术信息,帮助团队成员识别和理解接缝系统的结构和功能复杂性。在这一阶段,小组成员还能更好地理解接缝系统的功能及其可能出现的故障。在第 3 阶段,应用 FMECA 和模糊计算集成流程,以系统化的方式分析项目(密封系统的组件)的失效模式、影响和原因。这一阶段还包括项目关键性估计和排序评估。最后,第四阶段指导团队成员根据优先级推荐适当的对策(维护策略和任务选择)。具体而言,它在拟议框架的第三阶段考虑了基于高斯函数的模糊计算过程。采用模糊计算过程改进了风险优先级数(RPN)估算,从而更好地确定了关键性排序。另一个重要贡献是引入了扩展的项目关键度排序评估流程,以提供最大级别的关键度项目排序。最后,建议的 RCM 框架还根据每个 FSI 的临界等级、独特功能和故障特征,为维护策略选择提供了详细指导。
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来源期刊
Journal of Quality in Maintenance Engineering
Journal of Quality in Maintenance Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
4.00
自引率
13.30%
发文量
24
期刊介绍: This exciting journal looks at maintenance engineering from a positive standpoint, and clarifies its recently elevatedstatus as a highly technical, scientific, and complex field. Typical areas examined include: ■Budget and control ■Equipment management ■Maintenance information systems ■Process capability and maintenance ■Process monitoring techniques ■Reliability-based maintenance ■Replacement and life cycle costs ■TQM and maintenance
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