Author
Listed:
- Lianghong Wang
(Yunnan Dianneng Smart Energy Co., Ltd., Kunming 650228, China)
- Zhongzhuang Bai
(Yunnan Dianneng Smart Energy Co., Ltd., Kunming 650228, China)
- Hongxiang Li
(Yunnan Dianneng Smart Energy Co., Ltd., Kunming 650228, China)
- Panpan Yang
(Yunnan Dianneng Smart Energy Co., Ltd., Kunming 650228, China)
- Jie Tao
(School of Computer Science and Engineering, Hunan University of Science and Technology, Xiangtan 411201, China)
- Xuemei Zou
(School of Computer Science and Engineering, Hunan University of Science and Technology, Xiangtan 411201, China)
- Jinliang Zhao
(Shanghai Electric Power Electronics Co., Ltd., Shanghai 201906, China)
- Chunwei Wang
(Shanghai Electric Power Electronics Co., Ltd., Shanghai 201906, China)
Abstract
Meta-learning has demonstrated significant advantages in small-sample tasks and has attracted considerable attention in wind turbine fault diagnosis. However, due to extreme operating conditions and equipment aging, the monitoring data of wind turbines often contain false alarms or missed detections. This results in inaccurate fault sample labeling. In meta-learning, these erroneous labels not only fail to help models quickly adapt to new meta-test tasks, but they also interfere with learning for new tasks, which leads to “negative transfer” phenomena. To address this, this paper proposes a novel method called Online Soft-Labeled Meta-learning with Gaussian Prototype Networks (SL-GPN). During training, the method dynamically aggregates feature similarities across multiple tasks or samples to form online soft labels. They guide model training process and effectively solve small-sample bearing fault diagnosis challenges. Experimental tests on small-sample data under various operating conditions and error labels were carried out. The results show that the proposed method improves diagnostic accuracy in small-sample environments, reduces false alarm rates, and demonstrates excellent generalization performance.
Suggested Citation
Lianghong Wang & Zhongzhuang Bai & Hongxiang Li & Panpan Yang & Jie Tao & Xuemei Zou & Jinliang Zhao & Chunwei Wang, 2025.
"Fault Diagnosis of Wind Turbine Pitch Bearings Based on Online Soft-Label Meta-Learning and Gaussian Prototype Network,"
Energies, MDPI, vol. 18(16), pages 1-22, August.
Handle:
RePEc:gam:jeners:v:18:y:2025:i:16:p:4437-:d:1728713
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