Self-Supervised Health Index Curve Generation for Condition-Based Predictive Maintenance

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

Abstract

Modern machine degradation trend evaluation relies on the unsupervised model-based estimation of a health index (HI) from asset measurement data. This minimizes the need for timely human evaluation and avoids assumptions on the degradation shape. However, the comparability of multiple HI curves over time generated by unsupervised methods suffers from a scaling mismatch (non-coherent HIs) caused by the slightly different asset initial conditions and distinct HI model training. In this paper, we propose a novel self-supervised approach to obtain HI curves without suffering from the scale mismatch. Our approach uses an unsupervised autoencoder based on a convolutional neural network (CNN) to detect initial faults and autonomously label measurement samples. The resulting self-labeled data is used to train a 1D-CNN health predictor, effectively eliminating the scaling mismatch problem. On the basis of a bearing test-to-failure experiment, we show that our self-supervised scheme offers a promising solution for the non-coherent HI problem. In addition, we observed that our method indicates the gradual wear affecting the bearing prior to the independent analysis of a human expert.

Details

Original languageEnglish
Article number4941
JournalElectronics (Switzerland)
Volume12
Issue number24
Publication statusPublished - Dec 2023
Peer-reviewedYes

External IDs

ORCID /0000-0002-8389-8869/work/154738710
ORCID /0000-0001-7436-0103/work/154740844

Keywords

Sustainable Development Goals

Keywords

  • bearing fault diagnosis, neural networks, predictive maintenance