4.7 Article

Fully interpretable neural network for locating resonance frequency bands for machine condition monitoring

期刊

出版社

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.ymssp.2021.108673

关键词

Sparsity measure; Fully interpretable neural network; Machine condition monitoring; Cyclo-stationarity

资金

  1. National Natural Science Foundation of China [51975355, 51875375]
  2. National Major Science and Technology Projects of China [J2019-IV-0018]
  3. Open Fund Program of the State Key Wang Systems Signal Processing Laboratory of Traction Power, Southwest Jiaotong University [TPL2105]

向作者/读者索取更多资源

This paper presents a fully interpretable neural network for machine condition monitoring, which combines signal processing and physical feature extraction to automatically localize informative frequency bands.
In recent years, various neural networks have been developed to process vibration signals for machine condition monitoring. Nevertheless, the physical interpretation of neural networks is still on-going and not fully explored. This paper aims to design a fully interpretable neural network for machine condition monitoring from the aspects of signal processing and physical feature extraction. The main idea of the fully interpretable neural network is to extend the un-interpretable structure of extreme learning machine (ELM) to an interpretable structure for machine condition monitoring. From the aspect of signal processing, wavelet transform, square envelope and Fourier transform are incorporated into the input layer of the original ELM to extract repetitive transients, localize informative frequency bands for an enhancement of a signalto-noise ratio, and realize square envelope spectra for exhibiting cyclo-stationarity of repetitive transients. Hence, the first to four layers of the proposed network are physically interpretable. From the aspect of physical feature extraction, popular sparsity measures are innovatively incorporated into all random nodes in the single-hidden layer of the original ELM to interpret the use of all hidden nodes in the fifth layer of the proposed network to characterize cyclo-stationarity of repetitive transients. The significance of this paper is to show that signal processing algorithms and physical feature extraction can be reformulated as the architecture of an interpretable neural network to automatically localize informative frequency bands for machine condition monitoring. This paper attempts to inspire researchers in the field of signal processing and machine learning to think about the design of more advanced interpretable neural networks for machine condition monitoring.

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