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一种数据驱动的带不完美维护行为的系统退化复发事件模型

A data-driven recurrent event model for system degradation with imperfect maintenance actions

IISE Transactions · 2021
被引 11
ABS 3

中文导读

提出一个多变量不完美维护模型,建模跨子系统的维护影响,同时考虑单元持续运行,并通过两阶段估计方法实现大规模工业应用的可扩展性。

Abstract

Although a large number of degradation models for industrial systems have been proposed by researchers over the past few decades, the modeling of impacts of maintenance actions has been mostly limited to single-component systems. Among multi-component models, past work either ignores the general impact of maintenance, or is limited to studying failure interactions. In this article, we propose a multivariate imperfect maintenance model that models impacts of maintenance actions across sub-systems while considering continual operation of the unit. Another feature of the proposed model is that the maintenance actions can have any degree of impact on the sub-systems. In other words, we propose a multivariate recurrent event model with stochastic dependence, and for this model we present a two-stage approach which makes estimation scalable, thus practical for large-scale industrial applications. We also derive expressions for the Fisher information so as to conduct asymptotic statistical tests for the maintenance impact parameters. We demonstrate the scalability through numerical studies, and derive insights by applying the model on real-world maintenance records obtained from oil rigs. In the online supplemental material, we provide the following: (i) sketch of proof for likelihood, (ii) convergence analysis, (iii) contamination analysis, and (iv) a set of R codes to implement the current method.

系统退化不完美维护多变量复发事件模型工业系统可靠性