Remaining useful life prediction based on the mixed effects model with mixture prior distribution
针对工程系统退化数据不平衡问题,提出一种基于混合先验分布的混合效应模型,用于在线预测在役设备的剩余使用寿命,并通过汽车铅酸蓄电池案例验证了有效性。
Modern engineering systems are gradually becoming more reliable and premature failure has become quite rare. As a result, degradation signal data used for prognosis are often imbalanced as most units are reliable and only few tend to fail at early stages of their life cycle. Such imbalanced data may hinder accurate Remaining Useful Life (RUL) prediction especially in terms of detecting premature failures as early as possible. This aspect is detrimental for developing cost-effective condition-based maintenance strategies. In this article, we propose a degradation signal–based RUL prediction method to address the imbalance issue in the data. The proposed method introduces a mixture prior distribution to capture the characteristics of different groups within the same population and provides an efficient and effective online prediction method for the in-service unit under monitoring. The advantageous features of the proposed method are demonstrated through a numerical study as well as a case study with real-world data in the application to the RUL prediction of automotive lead–acid batteries.