Optimal burn-in policies for multiple dependent degradation processes
Yue Shi,
Yisha Xiang,
Ying Liao,
Zhicheng Zhu and
Yili Hong
IISE Transactions, 2020, vol. 53, issue 11, 1281-1293
Abstract:
Many complex engineering devices experience multiple dependent degradation processes. For each degradation process, there may exist substantial unit-to-unit heterogeneity. In this article, we describe the dependence structure among multiple dependent degradation processes using copulas and model unit-level heterogeneity as random effects. A two-stage estimation method is developed for statistical inference of multiple dependent degradation processes with random effects. To reduce the heterogeneity, we propose two degradation-based burn-in models, one with a single screening point and the other with multiple screening points. At each screening point, a unit is scrapped if one or more degradation levels pass their respective burn-in thresholds. Efficient algorithms are devised to find optimal burn-in decisions. We illustrate the proposed models using experimental data from light-emitting diode lamps. Impacts of parameter uncertainties on optimal burn-in decisions are investigated. Our results show that ignoring multiple dependent degradation processes can cause inferior system performance, such as increased total costs. Moreover, a higher level of dependence among multiple degradation processes often leads to longer burn-in time and higher burn-in thresholds for the two burn-in models. For the multiple-screening-point model, a higher level of dependence can also result in fewer screening points. Our results also show that burn-in with multiple screening points can lead to potential cost savings.
Date: 2020
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Persistent link: https://EconPapers.repec.org/RePEc:taf:uiiexx:v:53:y:2020:i:11:p:1281-1293
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DOI: 10.1080/24725854.2020.1841344
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