A strong anti-noise and easily deployable bearing fault diagnosis model based on time-frequency dual-channel Transformer

被引:5
|
作者
Xu, Zhao [1 ]
Jia, Zhiyang [1 ]
Wei, Yiwei [1 ]
Zhang, Shuyan [1 ]
Jin, Zhong [1 ]
Dong, Wenpei [1 ]
机构
[1] China Univ Petr Beijing Karamay, Dept Comp Sci, 355 Anding Rd, Karamay 834000, Xinjiang Uygur, Peoples R China
关键词
Fault diagnosis; Noisy environment; Anti-noise; Lightweight; Attention mechanism; Deep learning;
D O I
10.1016/j.measurement.2024.115054
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Deep learning is widely used in Bearing Fault Diagnosis (BFD). Nonetheless, practical industrial production often generates a large amount of industrial noise. These noises exhibit randomness and complexity, which puts forward higher requirements for diagnosis algorithms. Certain studies have tackled the issue of anti-interference in high-noise environments ( SNR <= 0 dB) by increasing the complexity of the model. However, due to the excessive number of parameters and computation, such models cannot be deployed on low-end edge devices. Balancing resource consumption and accuracy has become a major challenge in BFD modeling research. To solve the above problems, this paper proposes a new Transformer architecture model called LTFAFormer. The LTFAFormer is capable of achieving high -precision diagnostics on low-end edge devices and shows greater noise resistance. In terms of processing sequence information, Transformer has proven to be superior to other solutions. However, when dealing with longer sensor signal data containing complex noise, the traditional selfattention mechanism not only cannot effectively extract fault features, but also generates more computational complexity than CNN. To address this issue, we propose a novel time-frequency dual-channel parallel attention mechanism. Our approach enhances the feature extraction capability of the model by expanding the attention computation scale and reduces the computational resource consumption of the model by optimizing the model structure. To validate the effectiveness of LTFAFormer, we present two cases to demonstrate that LTFAFormer has higher prediction accuracy while satisfying lightweight. Especially in high-noise environments, LTFAFormer has stronger robustness. In this paper provides a new set of feasible strategies for the practical deployment of BFD models in practical industrial environments.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] An Anti-Noise Convolutional Neural Network for Bearing Fault Diagnosis Based on Multi-Channel Data
    Zhang, Wei-Tao
    Liu, Lu
    Cui, Dan
    Ma, Yu-Ying
    Huang, Ju
    SENSORS, 2023, 23 (15)
  • [2] An interpretable anti-noise network for rolling bearing fault diagnosis based on FSWT
    Sun, Hongchun
    Cao, Xu
    Wang, Changdong
    Gao, Sheng
    MEASUREMENT, 2022, 190
  • [3] Multiscale Time-Frequency Sparse Transformer Based on Partly Interpretable Method for Bearing Fault Diagnosis
    Che, Shouquan
    Lu, Jianfeng
    Bao, Congwang
    Zhang, Caihong
    Liu, Yongzhi
    SHOCK AND VIBRATION, 2023, 2023
  • [4] Research on Bearing Fault Diagnosis Method Based on an Adaptive Anti-Noise Network under Long Time Series
    Wang, Changdong
    Sun, Hongchun
    Zhao, Rong
    Cao, Xu
    SENSORS, 2020, 20 (24) : 1 - 22
  • [5] Improving bearing fault diagnosis method based on the fusion of time-frequency diagram and a novel vision transformer
    Wang, Jingyuan
    Zhao, Yuan
    Wang, Wenyan
    Wu, Ziheng
    JOURNAL OF SUPERCOMPUTING, 2025, 81 (01):
  • [6] MECHANICAL BEARING FAULT DIAGNOSIS BASED ON DUAL-CHANNEL FEATURE FUSION ALGORITHM
    Hui, Wang
    MECHATRONIC SYSTEMS AND CONTROL, 2024, 52 (04): : 272 - 283
  • [7] Motor Bearing Fault Diagnosis Based on Current Signal Using Time-Frequency Channel Attention
    Wang, Zhiqiang
    Guan, Chao
    Shi, Shangru
    Zhang, Guozheng
    Gu, Xin
    WORLD ELECTRIC VEHICLE JOURNAL, 2024, 15 (07):
  • [8] Fault diagnosis of rolling bearings based on dual-channel Transformer and Swin Transformer V2
    Zhang, Xinmeng
    Wen, Chuanbo
    2024 43RD CHINESE CONTROL CONFERENCE, CCC 2024, 2024, : 4828 - 4834
  • [9] Locomotive bearing fault diagnosis based on deep time-frequency features
    Zhang L.
    Zhen C.-Z.
    Xiong G.-L.
    Wang C.-B.
    Xu T.-P.
    Tu W.-B.
    Jiaotong Yunshu Gongcheng Xuebao/Journal of Traffic and Transportation Engineering, 2021, 21 (06): : 247 - 258
  • [10] Bearing Fault Diagnosis Based on Subband Time-Frequency Texture Tensor
    Bo, Lin
    Xu, Guanji
    Liu, Xiaofeng
    Lin, Jing
    IEEE ACCESS, 2019, 7 : 37611 - 37619