Abstract
AbstractDeep learning (DL) is progressively popular as a viable alternative to traditional signal processing (SP) based methods for fault diagnosis. However, the lack of explainability makes DL-based fault diagnosis methods difficult to be trusted and understood by industrial users. In addition, the extraction of weak fault features from signals with heavy noise is imperative in industrial applications. To address these limitations, inspired by the Filterbank-Feature-Decision methodology, we propose a new Signal Processing Informed Neural Network (SPINN) framework by embedding SP knowledge into the DL model. As one of the practical implementations for SPINN, a denoising fault-aware wavelet network (DFAWNet) is developed, which consists of fused wavelet convolution (FWConv), dynamic hard thresholding (DHT), index-based soft filtering (ISF), and a classifier. Taking advantage of wavelet transform, FWConv extracts multiscale features while learning wavelet scales and selecting important wavelet bases automatically; DHT dynamically eliminates noise-related components via point-wise hard thresholding; inspired by index-based filtering, ISF optimizes and selects optimal filters for diagnostic feature extraction. It's worth noting that SPINN may be readily applied to different deep learning networks by simply adding filterbank and feature modules in front. Experiments results demonstrate a significant diagnostic performance improvement over other explainable or denoising deep learning networks. The corresponding code is available at https://github.com/albertszg/DFAWnet.
Funder
the Natural Science Foundation of China
the China Postdoctoral Science Foundation
Publisher
Springer Science and Business Media LLC
Subject
Industrial and Manufacturing Engineering,Mechanical Engineering
Reference39 articles.
1. Z Zhao, S Wu, B Qiao, et al. Enhanced sparse period-group lasso for bearing fault diagnosis. IEEE Transactions on Industrial Electronics, 2018, 66(3): 2143-2153.
2. L Liao, W Jin, R Pavel. Enhanced restricted Boltzmann machine with prognosability regularization for prognostics and health assessment. IEEE Transactions on Industrial Electronics, 2016, 63(11): 7076-7083.
3. X Chen, M Ma, Z Zhao, et al. Physics-informed deep neural network for bearing prognosis with multi-sensory signals. Journal of Dynamics, Monitoring and Diagnostics, 2022, 1(4): 200-207.
4. W Zhao, C Zhang, S Wang, et al. Rolling bearing remaining useful life prediction based on wiener process. Journal of Dynamics, Monitoring and Diagnostics, 2022, 1(4): 229-236.
5. H Chen, R Liu, Z Xie, et al. Majorities help minorities: Hierarchical structure guided transfer learning for few-shot fault recognition. Pattern Recognition, 2022, 123: 108383.
Cited by
25 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献