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Publishing Language: Chinese

Fault diagnosis of piston pump based on global attention residual shrinkage network

Xiaoqi WANG1Ke WU1Guanhui ZHAO2,3Jun WU1( )
School of Naval Architecture and Ocean Engineering, Huazhong University of Science and Technology, Wuhan 430074, China
China Ship Development and Design Center, Wuhan 430064, China
College of Computer Science and Technology, Zhejiang University, Hangzhou 310027, China
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Abstract

Objective

Aiming at the problem of insufficient feature extraction in traditional neural networks under strong noise interference, a new global attention residual shrinkage network is proposed for accurate diagnosis of piston pump faults in complex environments.

Methods

First, data segmentation is performed on the original signals. Then, a new global feature extractor with an attention mechanism is established to extract fault-related features from the signals, while a threshold softening mechanism is introduced to minimize noise interference. Back propagation optimization is then performed on the network model to reduce loss and improve the model's diagnostic performance. Finally, the feature extraction results are input into the fault classifier for fault identification. The effectiveness of the proposed method is verified by using a piston pump fault simulation test bed.

Results

The results show that, compared with other models, the established global attention residual shrinkage network model has higher diagnostic accuracy and stronger anti-interference ability.

Conclusion

The proposed method demonstrates accurate fault diagnosis in complex and harsh environments.

CLC number: U664.5+8 Document code: A

References

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Chinese Journal of Ship Research
Pages 39-46

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Cite this article:
WANG X, WU K, ZHAO G, et al. Fault diagnosis of piston pump based on global attention residual shrinkage network. Chinese Journal of Ship Research, 2025, 20(2): 39-46. https://doi.org/10.19693/j.issn.1673-3185.03739

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Received: 18 January 2024
Revised: 18 March 2024
Published: 12 June 2024
© 2025 Chinese Journal of Ship Research.