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Reliability Analysis for Preventive Maintenance based on Classical and Bayesian Semi-parametric Degradation Approaches using Locomotive Wheel-sets as a Case Study

机译:基于经典和贝叶斯半参数退化方法的机车轮对预防性维修可靠性分析

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摘要

This paper undertakes a general reliability study using both classical and Bayesian semi-parametric degradation approaches. The goal is to illustrate how degradation data can be modelled and analysed to flexibly determine reliability to support preventive maintenance strategy making, based on a general data-driven framework. With the proposed classical approach, both Accelerated Life Tests (ALT) and Design of Experiments (DOE) technology are used to determine how each critical factor affects the prediction of performance. With the Bayesian semi-parametric approach, a piecewise constant hazard regression model is used to establish the lifetime using degradation data. Gamma frailties are included to explore the influence of unobserved covariates within the same group. Ideally, results from the classical and Bayesian approaches will complement each other. To demonstrate these approaches, this paper considers a case study of locomotive wheel-set reliability. The degradation data are prepared by considering an Exponential and a Power degradation path separately. The results show that both classical and Bayesian semi-parametric approaches are useful tools to analyse degradation data and can, therefore, support a company in decision making for preventive maintenance. The approach can be applied to other technical problems (e.g. other industries, other components).
机译:本文使用经典和贝叶斯半参数退化方法进行了一般可靠性研究。目的是说明如何基于通用的数据驱动框架对降级数据进行建模和分析,以灵活地确定可靠性以支持预防性维护策略制定。通过提出的经典方法,加速寿命测试(ALT)和实验设计(DOE)技术均用于确定每个关键因素如何影响性能的预测。通过贝叶斯半参数方法,使用分段恒定危害回归模型来建立使用退化数据的寿命。包括伽玛弱点以探讨同一组中未观察到的协变量的影响。理想情况下,经典方法和贝叶斯方法的结果将相互补充。为了说明这些方法,本文考虑了机车轮对可靠性的案例研究。通过分别考虑指数和功率退化路径来准备退化数据。结果表明,经典和贝叶斯半参数方法都是分析降级数据的有用工具,因此可以为公司的预防性维护决策提供支持。该方法可以应用于其他技术问题(例如其他行业,其他组件)。

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