制定一种方法,将比例危险建模纳入基于风险的检查方法

IF 1.8 Q3 ENGINEERING, INDUSTRIAL
Nzita Alain Lelo, P. Stephan Heyns, Johann Wannenburg
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引用次数: 1

摘要

行业决策者通常依靠基于风险的方法来执行检查和维护计划。根据欧洲工业基于风险的检查和维护程序项目,风险有两个主要组成部分:故障概率(PoF)和故障后果(CoF)。作为这些风险驱动因素之一,对PoF的更准确的估计将有助于更准确的风险评估。目前估计PoF的方法要么是基于时间的,要么是基于专家判断的。本文提出了一种方法,将比例风险模型(PHM)——一种估计状态监测部件失效风险的统计方法——纳入基于风险的检测方法中,从而增强PoF估计以优化检测策略。为了实现本文的总体目标,本文讨论了一个应用PHM确定实时状态数据组件的PoF的案例研究。由于在研究的这个阶段缺乏公开的风险评估数据,这里考虑的案例研究使用从简单但容易获得的智能维护系统轴承数据中获得的故障数据来说明方法。将PHM纳入RBI方法的好处是PHM使用实时状态数据,允许对检查和维护计划进行动态决策。PHM的另一个优点是,传统技术可能无法给出剩余使用寿命的准确估计来计划检查,而PHM方法能够考虑组件的条件和年龄。研究限制/影响本文提出了一种方法的发展,将PHM纳入RBI方法,使用轴承数据来说明该方法。本文没有讨论CoF估计问题。原创性/价值本文介绍了与使用PHM作为优化PoF估计的方法相关的好处,与基于时间的方法相比,PHM可以驱动最佳风险评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an approach to incorporate proportional hazard modelling into a risk-based inspection methodology
PurposeIndustry decision makers often rely on a risk-based approach to perform inspection and maintenance planning. According to the Risk-Based Inspection and Maintenance Procedure project for the European industry, risk has two main components: probability of failure (PoF) and consequence of failure (CoF). As one of these risk drivers, a more accurate estimation of the PoF will contribute to a more accurate risk assessment. Current methods to estimate the PoF are either time-based or founded on expert judgement. This paper suggests an approach that incorporates the proportional hazards model (PHM), which is a statistical procedure to estimate the risk of failure for a component subject to condition monitoring, into the risk-based inspection (RBI) methodology, so that the PoF estimation is enhanced to optimize inspection policies.Design/methodology/approachTo achieve the overall goal of this paper, a case study applying the PHM to determine the PoF for the real-time condition data component is discussed. Due to a lack of published data for risk assessment at this stage of the research, the case study considered here uses failure data obtained from the simple but readily available Intelligent Maintenance Systems bearing data, to illustrate the methodology.FindingsThe benefit of incorporating PHM into the RBI approach is that PHM uses real-time condition data, allowing dynamic decision-making on inspection and maintenance planning. An additional advantage of the PHM is that where traditional techniques might not give an accurate estimation of the remaining useful life to plan inspection, the PHM method has the ability to consider the condition as well as the age of the component.Research limitations/implicationsThis paper is proposing the development of an approach to incorporate the PHM into an RBI methodology using bearing data to illustrate the methodology. The CoF estimation is not addressed in this paper.Originality/valueThis paper presents the benefits related to the use of PHM as an approach to optimize the PoF estimation, which drives to the optimal risk assessment, in comparison to the time-based approach.
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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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