Hard Sample Mining Enabled Supervised Contrastive Feature Learning for Wind Turbine Pitch System Fault Diagnosis
Zixuan Wang, Bo Qin, Mengxuan Li, Chenlu Zhan, Mark D. Butala, Peng, Peng, Hongwei Wang

TL;DR
This paper introduces a novel hard sample mining-enabled supervised contrastive learning method to improve fault diagnosis accuracy in wind turbine pitch systems, addressing challenges posed by complex multi-class conditions.
Contribution
It proposes a new framework combining hard sample mining with supervised contrastive learning for more effective fault classification in wind turbines.
Findings
Superior fault diagnosis performance on real datasets
Effective in complex multi-class fault scenarios
Enhances reliability of wind turbine pitch systems
Abstract
The efficient utilization of wind power by wind turbines relies on the ability of their pitch systems to adjust blade pitch angles in response to varying wind speeds. However, the presence of multiple health conditions in the pitch system due to the long-term wear and tear poses challenges in accurately classifying them, thus increasing the maintenance cost of wind turbines or even damaging them. This paper proposes a novel method based on hard sample mining-enabled supervised contrastive learning (HSMSCL) to address this problem. The proposed method employs cosine similarity to identify hard samples and subsequently, leverages supervised contrastive learning to learn more discriminative representations by constructing hard sample pairs. Furthermore, the hard sample mining framework in the proposed method also constructs hard samples with learned representations to make the training…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Mechanical stress and fatigue analysis · Gear and Bearing Dynamics Analysis
MethodsContrastive Learning
