Unsupervised machinery prognostics approach based on wavelet packet decomposition and variational autoencoder

Author:

de Godói Leonardo Franco1ORCID,Nóbrega Eurípedes Guilherme de Oliveira1

Affiliation:

1. State University of Campinas: Universidade Estadual de Campinas

Abstract

Abstract The prognosis of rotating machinery has been very prominent in recent years thanks to the advances in digital signal processing and intelligent systems. Unsupervised machine learning methods have been adopted along with signal processing techniques in both time and frequency domain to build indicators that describe the degradation of mechanical systems. This paper proposes a novel method for generating a degradation indicator for estimating the remaining useful life of rotating machinery critical components, based on a beta variational autoencoder neural network that processes statistical distributions in a feature hyperspace whose coordinates mix time-domain analysis and wavelet packet decomposition of vibration signals. Indicators are calculated using bearing vibration signals from a publicly available dataset, aiming to enhance the visibility of monotonic trends, and are used to assess different hyperparameter configurations of the proposed methodology. Based on the comparison with recently published results on the same dataset, the proposed method produced robust indicators capable of detecting early changes in degradation models, generating more accurate RUL estimates.

Publisher

Research Square Platform LLC

Reference35 articles.

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