| Literature DB >> 33402262 |
Dingliang Chen1, Yi Qin2, Yi Wang1, Jianghong Zhou1.
Abstract
As one of the most important components of machinery, once the bearing has a failure, serious catastrophe may happen. Hence, for avoiding the catastrophe, it is valuable to predict the remaining useful life (RUL) of bearing. Health indicators (HIs) construction plays a greatly important role in the data-driven RUL prediction. Unfortunately, most of the existing HIs construction methods need prior knowledge and few of them construct HIs from raw vibration signals. For dealing with the above issues, a novel quadratic function-based deep convolutional auto-encoder is developed in this work. The raw bearing vibration signals are first preprocessed by low-pass filtering. Then the cleaned vibration signals are input into the quadratic function-based DCAE neural networks for constructing HIs of bearings. Compared with AE, DNN, KPCA, ISOMAP, PCA and VAE, it is revealed that the proposed methodology can construct a better HI from the raw bearing vibration signal in terms of comprehensive performance. Several comparative experiments have been implemented, and the results indicate that the HI constructed by quadratic function-based DCAE neural network has stronger predictive power than the traditional data-driven HIs.Entities:
Keywords: Auto-encoder (AE); Data-driven; Health indicator (HI); RUL prediction; Vibration signal
Year: 2020 PMID: 33402262 DOI: 10.1016/j.isatra.2020.12.052
Source DB: PubMed Journal: ISA Trans ISSN: 0019-0578 Impact factor: 5.468