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Degradation Modeling and RUL Prediction Using Wiener Process Subject to Multiple Change Points and Unit Heterogeneity

Reliability Engineering and System Safety(2018)SCI 1区

Univ Texas El Paso | Peking Univ | Univ S Florida

Cited 112|Views34
Abstract
Degradation modeling is critical for health condition monitoring and remaining useful life prediction (RUL). The prognostic accuracy highly depends on the capability of modeling the evolution of degradation signals. In many practical applications, however, the degradation signals show multiple phases, where the conventional degradation models are often inadequate. To better characterize the degradation signals of multiple-phase characteristics, we propose a multiple change-point Wiener process as a degradation model. To take into account the between-unit heterogeneity, a fully Bayesian approach is developed where all model parameters are assumed random. At the offline stage, an empirical two-stage process is proposed for model estimation, and a cross-validation approach is adopted for model selection. At the online stage, an exact recursive model updating algorithm is developed for online individual model estimation, and an effective Monte Carlo simulation approach is proposed for RUL prediction. The effectiveness of the proposed method is demonstrated through thorough simulation studies and real case study.
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Wiener process,Multiple change-point model,Degradation modeling,Remaining useful life prediction
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Chat Paper

要点】:本文提出了一种基于多变化点Wiener过程的退化建模和剩余寿命(RUL)预测方法,同时考虑了单元间的异质性,采用完全贝叶斯方法进行建模。

方法】:研究采用多变化点Wiener过程构建预后框架,并使用完全贝叶斯方法处理单元间的异质性。

实验】:通过仿真和实际案例研究验证了模型的有效性,其中使用了精确递归算法实现在线个体模型更新,但未提及具体的数据集名称。