Bivariate and two-phase degradation modeling and reliability analysis with random effects

The paper aims at predicting the remaining useful life of highly reliable and long-life products with multiple and multi-stage characteristics in the degradation process. Considering the unit-to-unit variability among the product units, a new bivariate and two-phase Wiener process model with random...

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Bibliographic Details
Published inThermal science Vol. 28; no. 3 Part A; pp. 2295 - 2304
Main Authors Sun, Li-Jun, Li, Hai-Bin, Yuan, Xi-Qin, Yan, Zai-Zai
Format Journal Article
LanguageEnglish
Published 2024
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Summary:The paper aims at predicting the remaining useful life of highly reliable and long-life products with multiple and multi-stage characteristics in the degradation process. Considering the unit-to-unit variability among the product units, a new bivariate and two-phase Wiener process model with random effects is established. Schwarz Information Criterion is used to identify the change points of the degradation model, and the analytical expressions of life and remaining useful life are given by the concept of first hitting time. Furthermore, the appropriate Copula function is selected to describe the correlation between the two quality characteristics based on Akaike Information Criterion. A bivariate degradation model is established and the unknown parameters of the model are estimated by Markov Chain Monte Carlo method. Finally, the applicability and effectiveness of the proposed method are verified by the comparative analysis of turbine engine.
ISSN:0354-9836
2334-7163
DOI:10.2298/TSCI2403295S