Few-shot bearing fault diagnosis using GAVMD–PWVD time–frequency image based on meta-transfer learning

被引:0
|
作者
Pengying Wei
Mingliang Liu
Xiaohang Wang
机构
[1] Heilongjiang University,Department of Automation
[2] Key Laboratory of Information Fusion Estimation and Detection,undefined
关键词
Rolling bearing; Fault diagnosis; Time–frequency image; Few-shot learning; Meta-learning; Transfer learning; Relation network;
D O I
暂无
中图分类号
学科分类号
摘要
Rolling bearings are crucial components in rotating machinery and often operate under high speeds and heavy loads for extended periods of time. If a bearing fails, it can disrupt the normal functioning of the machinery and lead to economic losses and even casualties. As a result, diagnosing faults in rolling bearings is critical and urgent. Currently, traditional fault diagnosis methods and deep learning-based methods are used for rolling bearing fault diagnosis. However, traditional methods require knowledge of signal processing techniques and selecting fault features through artificial algorithms. On the other hand, deep learning-based methods require a large number of labeled samples, but fault samples are often limited in practice. Additionally, there can be a problem of insufficient generalization ability when bearing working conditions change, which limits the application of deep learning in bearing fault diagnosis. To address this issue, a novel method is proposed in this paper that involves few-shot transfer learning and meta-learning. The method consists of four stages: using genetic algorithm to determine penalty factor and modal numbers adaptively in variational modal decomposition (GAVMD), combining correlation coefficient to eliminate useless modes, obtaining the instantaneous frequency characteristics of useful modes through Pseudo Wigner–Ville Distribution (PWVD), and using GAVMD with PWVD to obtain time–frequency images of the vibration signals of the rotating bearing. Finally, an improved relational network with deep coding ability and attention mechanism (AM) is constructed based on meta-transfer-learning and original relational network (MTLRN-AM). The experiments in this paper are based on the benchmark dataset of bearing fault diagnosis, and the results show that the proposed method has better multi-task learning ability in meta-learning and better classification performance in few-shot scenarios for bearing fault diagnosis. The average recognition rate reached 96.53% and 98% in 10-way 1-shot and 10-way 5-shot, respectively.
引用
收藏
相关论文
共 50 条
  • [31] Meta-Learning With Adaptive Learning Rates for Few-Shot Fault Diagnosis
    Chang, Liang
    Lin, Yan-Hui
    IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2022, 27 (06) : 5948 - 5958
  • [32] Fault diagnosis method for sucker rod well with few shots based on meta-transfer learning
    Zhang, Kai
    Wang, Qiang
    Wang, Lingbo
    Zhang, Huaqing
    Zhang, Liming
    Yao, Jun
    Yang, Yongfei
    JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2022, 212
  • [33] Few-shot transfer learning method based on meta-learning and graph convolution network for machinery fault diagnosis
    Wang, Huaqing
    Tong, Xingwei
    Wang, Pengxin
    Xu, Zhitao
    Song, Liuyang
    PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART C-JOURNAL OF MECHANICAL ENGINEERING SCIENCE, 2023,
  • [34] Few-shot switch machine fault diagnosis based on Bayesian meta-learning
    Zhao P.
    Wang X.
    Fu M.
    Journal of Railway Science and Engineering, 2023, 20 (10) : 4008 - 4020
  • [35] Novel meta-learning for few-shot bearing fault diagnosis under varying working conditions
    Wang, Chuanhao
    Peng, Jigang
    Sun, Yongjian
    ENGINEERING RESEARCH EXPRESS, 2024, 6 (03):
  • [36] A meta-learning method for few-shot bearing fault diagnosis under variable working conditions
    Zeng, Liang
    Jian, Junjie
    Chang, Xinyu
    Wang, Shanshan
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (05)
  • [37] Few-shot fault diagnosis of rolling bearing under variable working conditions based on ensemble meta-learning
    Che, Changchang
    Wang, Huawei
    Xiong, Minglan
    Ni, Xiaomei
    DIGITAL SIGNAL PROCESSING, 2022, 131
  • [38] EVALUATION OF A META-TRANSFER APPROACH FOR FEW-SHOT REMOTE SENSING SCENE CLASSIFICATION
    Cheng, Keli
    Scott, Grant J.
    IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2023, : 5002 - 5005
  • [39] Meta-Learning With Intraclass and Interclass Optimization for Few-Shot Fault Diagnosis
    Li, Kang
    Ye, Hao
    Gao, Xiaoyong
    Zhang, Laibin
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2025, 21 (01) : 713 - 722
  • [40] Federated Meta-Learning for Few-Shot Fault Diagnosis with Representation Encoding
    Cui J.
    Li J.
    Mei Z.
    Wei K.
    Wei S.
    Ding M.
    Chen W.
    Guo S.
    IEEE Transactions on Instrumentation and Measurement, 2023, 72 : 1 - 12