Paper ID: 2503.11824 • Published Mar 14, 2025
Semi-Supervised Co-Training of Time and Time-Frequency Models: Application to Bearing Fault Diagnosis
Tuomas Jalonen, Mohammad Al-Sa'd, Serkan Kiranyaz, Moncef Gabbouj
TL;DR
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Neural networks require massive amounts of annotated data to train
intelligent solutions. Acquiring many labeled data in industrial applications
is often difficult; therefore, semi-supervised approaches are preferred. We
propose a new semi-supervised co-training method, which combines time and
time-frequency (TF) machine learning models to improve performance and
reliability. The developed framework collaboratively co-trains fast time-domain
models by utilizing high-performing TF techniques without increasing the
inference complexity. Besides, it operates in cloud-edge networks and offers
holistic support for many applications covering edge-real-time monitoring and
cloud-based updates and corrections. Experimental results on bearing fault
diagnosis verify the superiority of our technique compared to a competing
self-training method. The results from two case studies show that our method
outperforms self-training for different noise levels and amounts of available
data with accuracy gains reaching from 10.6% to 33.9%. They demonstrate that
fusing time-domain and TF-based models offers opportunities for developing
high-performance industrial solutions.
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