Author
Listed:
- Jianyu Long
- Yibin Chen
- Zhe Yang
- Yunwei Huang
- Chuan Li
Abstract
Fault diagnosis is an indispensable basis for the collaborative maintenance in prognostic and health management. Most of existing data-driven fault diagnosis approaches are designed in the framework of supervised learning, which requires a large number of labelled samples. In this paper, a novel self-training semi-supervised deep learning (SSDL) approach is proposed to train a fault diagnosis model together with few labelled and abundant unlabelled samples. The addressed SSDL approach is realised by initialising a stacked sparse auto-encoder classifier using the labelled samples, and subsequently updating the classifier via sampling a few candidates with most reliable pseudo labels from the unlabelled samples step by step. Unlike the commonly used static sampling strategy in existing self-training semi-supervised frameworks, a gradually exploiting mechanism is proposed in SSDL to increase the number of selected pseudo-labelled candidates gradually. In addition, instead of using the prediction accuracy as the confidence estimation for pseudo-labels, a distance-based sampling criterion is designed to assign the label for each unlabelled sample by its nearest labelled sample based on their Euclidean distances in the deep feature space. The experimental results show that the proposed SSDL approach can achieve good prediction accuracy compared to other self-training semi-supervised learning algorithms.
Suggested Citation
Jianyu Long & Yibin Chen & Zhe Yang & Yunwei Huang & Chuan Li, 2023.
"A novel self-training semi-supervised deep learning approach for machinery fault diagnosis,"
International Journal of Production Research, Taylor & Francis Journals, vol. 61(23), pages 8238-8251, December.
Handle:
RePEc:taf:tprsxx:v:61:y:2023:i:23:p:8238-8251
DOI: 10.1080/00207543.2022.2032860
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