Self-Supervised Multiple Faults Detection Method Based on Time-Frequency Feature Fusion With Unlabeled Wind Turbine Samples

被引:0
作者
Xu, Qing [1 ]
Ma, Dazhong [1 ,2 ]
Liu, Yaobo [1 ]
Wang, Qingchen [1 ]
机构
[1] Northeastern Univ, Coll Informat Sci & Engn, Liaoning110004, Shenyang, Peoples R China
[2] Northeastern Univ, Foshan Grad Sch Innovat, Foshan 528311, Guangdong, Peoples R China
基金
中国国家自然科学基金;
关键词
Feature extraction; Fault detection; Vibrations; Time-frequency analysis; Blades; Wind turbines; Generators; Hybrid data augmentation; multiple faults; power consistency; self-supervised learning; time-frequency feature fusion; NETWORK;
D O I
10.1109/TIM.2024.3463007
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Fault detection is an essential aspect of power generation in wind turbines (WTs). However, existing fault detection methods are developed specifically for identifying a single type of fault and rely on a sufficient amount of labeled data. These approaches tend to be less accurate when used to detect many types of faults with limited data. To solve those problems, this article proposes a self-supervised fault detection method based on a time-frequency feature fusion module (TF-FFM). First, a periodicity-based hybrid data augmentation is presented in order to expand the number and diversity of fault samples. Second, TF-FFM can fully extract the features of fault in both time and frequency domains. Third, a fault detection method based on self-supervised learning is proposed during the training process to reduce the cost of data collection and labeling. Meanwhile, the loss function is optimized based on the energy conservation theorem in the time-frequency domain. This optimization leads to an advanced accuracy of the fault detection method for WTs by establishing a power consistency relationship. Finally, this article evaluates the effectiveness of the proposed method through a comparative analysis with various fault diagnosis techniques, feature visualization, and ablation experiments. The accuracy of the proposed method achieves 95% in the context of multiple fault detection, which is 3% higher than the results of existing methods.
引用
收藏
页数:10
相关论文
共 50 条
  • [1] A Generative Self-Supervised Framework for Cognitive Radio Leveraging Time-Frequency Features and Attention-Based Fusion
    Chen, Shuai
    Feng, Zhixi
    Yang, Shuyuan
    Ma, Yue
    Liu, Jun
    Qi, Zhuoyue
    IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2025, 24 (03) : 1866 - 1880
  • [2] An Emotion Recognition Method Based On Feature Fusion and Self-Supervised Learning
    Cao, Xuanmeng
    Sun, Ming
    2023 2ND ASIA CONFERENCE ON ALGORITHMS, COMPUTING AND MACHINE LEARNING, CACML 2023, 2023, : 216 - 221
  • [3] Toward Self-Supervised Feature Learning for Online Diagnosis of Multiple Faults in Electric Powertrains
    Senanayaka, Jagath Sri Lal
    Van Khang, Huynh
    Robbersmyr, Kjell G.
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2021, 17 (06) : 3772 - 3781
  • [4] Parkinson's Disease Detection Method Based on Masked Self-supervised Speech Feature Extraction
    Ji W.
    Yang M.
    Li Y.
    Zheng H.
    Dianzi Yu Xinxi Xuebao/Journal of Electronics and Information Technology, 2023, 45 (10): : 3502 - 3510
  • [5] A time-frequency ridge extraction diagnostic method for composite faults of bearing gears in wind turbine gearboxes
    Zhang, Zhiyu
    Zhang, Xiangfeng
    Hong, Jiang
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (02)
  • [6] A self-supervised learning method for fault detection of wind turbines
    Zhi, Shaodan
    Shen, Haikuo
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (11)
  • [7] TS-TFSIAM: Time-series self-supervised learning with time-frequency SiameseNet
    Liu, Songbai
    Li, Hongru
    Huang, Youhe
    Wen, Shuang
    KNOWLEDGE-BASED SYSTEMS, 2024, 288
  • [8] A Comparative Study of Time-Frequency Representations for Fault Detection in Wind Turbine
    Bouchikhi, El. H.
    Choqueuse, V.
    Benbouzid, M. E. H.
    Charpentier, J. F.
    Barakat, G.
    IECON 2011: 37TH ANNUAL CONFERENCE ON IEEE INDUSTRIAL ELECTRONICS SOCIETY, 2011,
  • [9] A prior knowledge-enhanced self-supervised learning framework using time-frequency invariance for machinery intelligent fault diagnosis with small samples
    Tang, Jian
    Xiao, Jiawei
    Chen, Wentao
    Li, Xuegang
    Wei, Chao
    Ding, Xiaoxi
    Huang, Wenbin
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 133
  • [10] Self-Supervised Human Activity Recognition With Localized Time-Frequency Contrastive Representation Learning
    Taghanaki, Setareh Rahimi
    Rainbow, Michael
    Etemad, Ali
    IEEE TRANSACTIONS ON HUMAN-MACHINE SYSTEMS, 2023, 53 (06) : 1027 - 1037