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Sparse auto-encoder with regularization method for health indicator construction and remaining useful life prediction of rolling bearing

机译:稀疏的自动编码器,具有正规化方法,用于健康指示灯施工,剩余的滚动轴承使用寿命预测

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摘要

Remaining useful life (RUL) prediction, allowing for mechanical predictive maintenance, reduces unplanned and expensive maintenance greatly. One of the great challenges of data-driven RUL prediction is to extract the features that describe the actual degradation process. This paper presents a health indicator (HI) construction method based on a sparse auto-encoder with regularization (SAEwR) model for rolling bearings. This paper includes two modules, HI construction and RUL prediction. In the stage of the HI construction, the original features are compressed and extracted by the SAEwR model. The extracted features are sorted according to the trendability, and the features with large trendability are selected to construct the HI by using minimum quantization error. In the module of RUL prediction, the maximum likelihood estimation method is used to estimate the parameters of the prediction model, and a particle filter-based RUL prediction with degradation model is proposed. The proposed method is benchmarked with variational auto-encoder, auto-encoder methods and principal component analysis. The data from PRONOSTIA and ABLT-1A platform support the value of our approach.
机译:剩余的使用寿命(RUL)预测,允许机械预测性维护,大大降低了意外和昂贵的维护。数据驱动RUL预测的巨大挑战之一是提取描述实际劣化过程的功能。本文介绍了基于稀疏自动编码器的健康指示器(HI)施工方法,具有用于滚动轴承的正则化(SAEWR)模型。本文包括两个模块,施工和rul预测。在HI施工的阶段,原始特征被Saewr模型压缩和提取。提取的特征根据趋势性分类,选择具有很大趋势率的特征来通过使用最小量化误差来构造HI。在RUL预测模块中,使用最大似然估计方法来估计预测模型的参数,并且提出了一种基于粒子滤波器的ruL预测与劣化模型。该方法采用变形式自动编码器,自动编码器方法和主成分分析基准测试。来自前任和ABLT-1A平台的数据支持我们的方法的价值。

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