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Joint Modeling of Degradation and Lifetime Data for RUL Prediction of Deteriorating Products

机译:瓦尔预测劣化产品的劣化和寿命数据的联合建模

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Degradation is one of the major root causes of system failure. In some applications, the degradation levels are different upon failure, in which the fixed failure threshold assumption commonly adopted in the degradation literature may not hold. This article tackles the difficulty by jointly analyzing the system degradation and the lifetime data, which enables the corresponding remaining useful life (RUL) prediction. We treat the degradation level as a multiplicative time-varying covariate of the system hazard rate, where a random-effects Wiener process is adopted to model the degradation process. The model parameters are estimated under a Bayesian framework, and we also develop a particle filter method to update the estimates when new data are available. This makes the proposed model be able to realize online RUL prediction based on the in-situ system health state signals. Through case studies on lead-acid batteries and digital communication systems, the proposed model is shown to outperform existing methods in terms of the RUL prediction accuracy.
机译:退化是系统故障的主要根本原因之一。在一些应用中,失败时,降级水平不同,其中在降级文献中通常采用的固定故障阈值假设可能不会保持。本文通过共同分析系统劣化和寿命数据来解决困难,这使得能够相应的剩余使用寿命(RUL)预测。我们将劣化水平视为系统危险率的乘法时变协承,其中采用随机效应维纳过程来模拟劣化过程。模型参数估计在贝叶斯框架下,我们还开发了一种粒子滤波器方法,以更新估计的新数据。这使得提出的模型能够基于原位系统运行状态信号实现在线RUL预测。通过对铅酸电池和数字通信系统的案例研究,所提出的模型显示在RUL预测精度方面优于现有方法。

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