A novel minority sample fault diagnosis method based on multisource data enhancement

Yiming Guo, Shida Song, Jing Huang

International Journal of Mechanical System Dynamics ›› 2024, Vol. 4 ›› Issue (1) : 88-98.

PDF
International Journal of Mechanical System Dynamics ›› 2024, Vol. 4 ›› Issue (1) : 88-98. DOI: 10.1002/msd2.12100
RESEARCH ARTICLE

A novel minority sample fault diagnosis method based on multisource data enhancement

Author information +
History +

Abstract

Effective fault diagnosis has a crucial impact on the safety and cost of complex manufacturing systems. However, the complex structure of the collected multisource data and scarcity of fault samples make it difficult to accurately identify multiple fault conditions. To address this challenge, this paper proposes a novel deep-learning model for multisource data augmentation and small sample fault diagnosis. The raw multisource data are first converted into two-dimensional images using the Gramian Angular Field, and a generator is built to transform random noise into images through transposed convolution operations. Then, two discriminators are constructed to evaluate the authenticity of input images and the fault diagnosis ability. The Vision Transformer network is built to diagnose faults and obtain the classification error for the discriminator. Furthermore, a global optimization strategy is designed to upgrade parameters in the model. The discriminators and generator compete with each other until Nash equilibrium is achieved. A real-world multistep forging machine is adopted to compare and validate the performance of different methods. The experimental results indicate that the proposed method has multisource data augmentation and minority sample fault diagnosis capabilities. Compared with other state-of-the-art models, the proposed approach has better fault diagnosis accuracy in various scenarios.

Keywords

multisource data augmentation / minority sample fault diagnosis / complex manufacturing system / global optimization / Vision Transformer

Cite this article

Download citation ▾
Yiming Guo, Shida Song, Jing Huang. A novel minority sample fault diagnosis method based on multisource data enhancement. International Journal of Mechanical System Dynamics, 2024, 4(1): 88‒98 https://doi.org/10.1002/msd2.12100

References

[1]
Shi J, Xu B, Wang X, Zhang J. A local spectrum enhancement-based method and its application in incipient fault diagnosis of rotating machinery. Int J Mech Syst Dyn. 2023;3:162-172.
CrossRef Google scholar
[2]
Han T, Tian J, Chung CY, Wei YM. Challenges and opportunities for battery health estimation: bridging laboratory research and real-world applications. J Energy Chem. 2024;89:434-436.
CrossRef Google scholar
[3]
Gu L, Wang G, Zhou Y, Peng R. Reliability optimization of multi-state systems with two performance sharing groups. Reliab Eng Syst Saf. 2024;241:109580.
CrossRef Google scholar
[4]
Zhou F, Yang S, Fujita H, Chen D, Wen C. Deep learning fault diagnosis method based on global optimization GAN for unbalanced data. Knowl-Based Syst. 2020;187:104837.
CrossRef Google scholar
[5]
Guo Y, Zhou Y, Zhang Z. Fault diagnosis of multi-channel data by the CNN with the multilinear principal component analysis. Measurement. 2021;171:108513.
CrossRef Google scholar
[6]
Han T, Xie W, Pei Z. Semi-supervised adversarial discriminative learning approach for intelligent fault diagnosis of wind turbine. Inf Sci (Ny). 2023;648:119496.
CrossRef Google scholar
[7]
Chen X, Yang R, Xue Y, Huang M, Ferrero R, Wang Z. Deep transfer learning for bearing fault diagnosis: a systematic review since 2016. IEEE Trans Instrum Meas. 2023;72:1-21.
CrossRef Google scholar
[8]
Wen H, Guo W, Li X. A novel deep clustering network using multirepresentation autoencoder and adversarial learning for large crossdomain fault diagnosis of rolling bearings. Expert Syst Appl. 2023;225:120066.
CrossRef Google scholar
[9]
Wang Y, Liu R, Lin D, et al. Coarse-to-fine: progressive knowledge transfer-based multitask convolutional neural network for intelligent large-scale fault diagnosis. IEEE Trans Neural Networks Learn Syst. 2023;34(2):761-774.
CrossRef Google scholar
[10]
Yang J, Bao W, Liu Y, Li X. Class metric regularized deep belief network with sparse representation for fault diagnosis. Int J Intell Syst. 2022;37(9):5996-6022.
CrossRef Google scholar
[11]
Shi J, Peng D, Peng Z, Zhang Z, Goebel K, Wu D. Planetary gearbox fault diagnosis using bidirectional-convolutional LSTM networks. Mech Syst Signal Process. 2022;162:107996.
CrossRef Google scholar
[12]
Yang B, Lei Y, Li X, Li N. Targeted transfer learning through distribution barycenter medium for intelligent fault diagnosis of machines with data decentralization. Expert Syst Appl. 2024;244:122997.
CrossRef Google scholar
[13]
Zhao K, Liu ZB, Zhao B, Shao HD. Class-Aware Adversarial Multiwavelet Convolutional Neural Network for Cross-Domain Fault Diagnosis. IEEE Trans Ind Inf. 2024;20(3):4492-4503.
CrossRef Google scholar
[14]
Gu L, Zheng R, Zhou Y, Zhang Z, Zhao K. Remaining useful life prediction using composite health index and hybrid LSTM-SVR model. Qual Reliability Eng Int. 2022;38:3559-3578.
CrossRef Google scholar
[15]
Shi J. In-process quality improvement: concepts, methodologies, and applications. IISE Trans. 2023;55(1):2-21.
CrossRef Google scholar
[16]
Yan H, Paynabar K, Shi J. Real-time monitoring of high-dimensional functional data streams via spatio-temporal smooth sparse decomposition. Technometrics. 2018;60(2):181-197.
CrossRef Google scholar
[17]
Paynabar K, Jin J, Pacella M. Monitoring and diagnosis of multichannel nonlinear profile variations using uncorrelated multilinear principal component analysis. IIE Trans. 2013;45(11):1235-1247.
CrossRef Google scholar
[18]
Zhang Y, Chen HC, Du Y, et al. Power transformer fault diagnosis considering data imbalance and data set fusion. High Voltage. 2021;6:543-554.
CrossRef Google scholar
[19]
Peng P, Zhang W, Zhang Y, Xu Y, Wang H, Zhang H. Cost sensitive active learning using bidirectional gated recurrent neural networks for imbalanced fault diagnosis. Neurocomputing. 2020;407:232-245.
CrossRef Google scholar
[20]
Haibo He, Garcia EA. Learning from imbalanced data. IEEE Trans Knowl Data Eng. 2009;21(9):1263-1284.
CrossRef Google scholar
[21]
Wu Z, Zhang H, Guo J, Ji Y, Pecht M. Imbalanced bearing fault diagnosis under variant working conditions using cost-sensitive deep domain adaptation network. Expert Syst Appl. 2022;193:116459.
CrossRef Google scholar
[22]
Ren Z, Zhu Y, Kang W, et al. Adaptive cost-sensitive learning: improving the convergence of intelligent diagnosis models under imbalanced data. Knowl-Based Syst. 2022;241:108296.
CrossRef Google scholar
[23]
Ng WWY, Hu J, Yeung DS, Yin S, Roli F. Diversified sensitivity-based undersampling for imbalance classification problems. IEEE Trans Cybern. 2015;45(11):2402-2412.
CrossRef Google scholar
[24]
Ren J, Wang Y, Cheung Y, Gao XZ, Guo X. Grouping-based oversampling in kernel space for imbalanced data classification. Pattern Recogn. 2023;133:108992.
CrossRef Google scholar
[25]
Rezvani S, Wang X. A broad review on class imbalance learning techniques. Appl Soft Comput. 2023;143:110415.
CrossRef Google scholar
[26]
Chawla NV, Bowyer KW, Hall LO, Kegelmeyer WP. SMOTE: synthetic minority over-sampling technique. J Artif Intell Res. 2002;16:321-357.
CrossRef Google scholar
[27]
He HB, Bai Y, Garcia EA, Li ST. ADASYN: adaptive synthetic sampling approach for imbalanced learning. In: IEEE International Joint Conference on Neural Networks, June 1–8, Hong Kong, China. IEEE;2008:1322-1328.
[28]
Xu Y, Zhao Y, Ke W, et al. A multi-fault diagnosis method based on improved SMOTE for class-imbalanced data. Can J Chem Eng. 2023;101(4):1986-2001.
CrossRef Google scholar
[29]
Li Z, He Y, Xing Z, Duan J. Transformer fault diagnosis based on improved deep coupled dense convolutional neural network. Electr Power Syst Res. 2022;209:107969.
CrossRef Google scholar
[30]
Goodfellow I, Pouget-Abadie J, Mirza M, et al. Generative adversarial nets. Adv Neural Inf Process Syst. 2014;27:2672-2680.
[31]
Liu Y, Jiang H, Wang Y, Wu Z, Liu S. A conditional variational autoencoding generative adversarial networks with selfmodulation for rolling bearing fault diagnosis. Measurement. 2022;192:110888.
CrossRef Google scholar
[32]
Guo Z, Pu Z, Du W, Wang H, Li C. Improved adversarial learning for fault feature generation of wind turbine gearbox. Renewable Energy. 2022;185:255-266.
CrossRef Google scholar
[33]
Jing Q, Yan J, Wang Y, Ye X, Wang J, Geng Y. A novel method for small and unbalanced sample pattern recognition of gas insulated switchgear partial discharge using an auxiliary classifier generative adversarial network. High Voltage. 2023;8(2):368-379.
CrossRef Google scholar
[34]
Zhang T, Chen J, Li F, Pan T, He S. A small sample focused intelligent fault diagnosis scheme of machines via multimodules learning with gradient penalized generative adversarial networks. IEEE Trans Ind Electron. 2021;68(10):10130-10141.
CrossRef Google scholar
[35]
Liu X, Liu S, Xiang J, Sun R. A transfer learning strategy based on numerical simulation driving 1D Cycle-GAN for bearing fault diagnosis. Inf Sci (Ny). 2023;642:119175.
CrossRef Google scholar
[36]
Liang P, Yu Z, Wang B, Xu X, Tian J. Fault transfer diagnosis of rolling bearings across multiple working conditions via subdomain adaptation and improved Vision Transformer network. Adv Eng Inf. 2023;57:102075.
CrossRef Google scholar
[37]
Vaswani A, Shazeer N, Parmar N. Attention is all you need. Adv Neural Inf Process Syst. 2017;30:5998-6008.
[38]
He X, Wang Z, Li Y, et al. Joint decision-making of parallel machine scheduling restricted in job-machine release time and preventive maintenance with remaining useful life constraints. Reliability Eng Syst Saf. 2022;222:108429.
CrossRef Google scholar
[39]
Dosovitskiy A, Beyer L, Kolesnikov A, et al. An image is worth 16×16 words: transformers for image recognition at scale. arXiv preprint arXiv:2010.11929;2020.
[40]
Han K, Wang Y, Chen H, et al. A survey on Vision Transformer. IEEE Trans Pattern Anal Mach Intell. 2023;45(1):87-110.
CrossRef Google scholar
[41]
Wang ZG, Oates T. Imaging time-series to improve classification and imputation. In: 24th International Joint Conference on Artificial Intelligence. Buenos Aires, Argentina, July 25–31. IJCAI;2015.
[42]
Cheng Y, Lu M, Gai X, Guan R, Zhou S, Xue J. Research on multisignal milling tool wear prediction method based on GAF-ResNext. Robot Comput Integr Manuf. 2024;85:102634.
CrossRef Google scholar
[43]
Zeiler MD, Krishnan D, Taylor GW, Fergus G. Deconvolutional networks. In: IEEE Computer Society Conference on Computer Vision and Pattern Recognition, San Francisco, CA, USA, June 13–18. IEEE;2010:2528-2535.
[44]
Lei Y, Zhang Z, Jin J. Automatic tonnage monitoring for missing part detection in multi-operation forging processes. J Manuf Sci Eng. 2010;132(5):051010.
CrossRef Google scholar
[45]
Farahat AIZ, El-Morsy AW, El-Bitar TA. Severe plastic deformation of large-scale Nb-microalloyed steel billet by multi-directional forging process. Steel Res Int. 2014;85(85):844-850.
CrossRef Google scholar
[46]
Hawryluk M, Dudkiewicz Ł, Ziemba J, Polak S, Kaczyński P, Szymańska T. Problems of the process of manufacturing precision forgings in multiple systems on a hot hydraulic hammer. J Manuf Process. 2023;96:54-67.
CrossRef Google scholar
[47]
Guo Y, Hu T, Zhou Y, Zhou Y, Zhao K, Zhang Z. Multi-channel data fusion and intelligent fault diagnosis based on deep learning. Meas Sci Technol. 2023;34(1):015115.
CrossRef Google scholar

RIGHTS & PERMISSIONS

2024 2024 The Authors. International Journal of Mechanical System Dynamics published by John Wiley & Sons Australia, Ltd on behalf of Nanjing University of Science and Technology.
PDF

Accesses

Citations

Detail

Sections
Recommended

/