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Interactive spatiotemporal LSTM approach for enhanced industrial fault diagnosis

Tan Zhang (Guizhou Equipment Manufacturing Vocational College, Guiyang, China)
Zhanying Huang (Guizhou Communication Vocational College, Guiyang, China)
Ming Lu (Guizhou Communication Vocational College, Guiyang, China)
Jiawei Gu (Nanjing University, Nanjing, China)
Yanxue Wang (Beijing University of Civil Engineering and Architecture, Beijing, China)

Industrial Lubrication and Tribology

ISSN: 0036-8792

Article publication date: 31 January 2024

Issue publication date: 13 February 2024

71

Abstract

Purpose

Rotating machinery is a crucial component of large equipment, and detecting faults in it accurately is critical for reliable operation. Although fault diagnosis methods based on deep learning have been significantly developed, the existing methods model spatial and temporal features separately and then weigh them, resulting in the decoupling of spatiotemporal features.

Design/methodology/approach

The authors propose a spatiotemporal long short-term memory (ST-LSTM) method for fault diagnosis of rotating machinery. The authors collected vibration signals from real rolling bearing and gearing test rigs for verification.

Findings

Through these two experiments, the authors demonstrate that machine learning methods still have advantages on small-scale data sets, but our proposed method exhibits a significant advantage due to the simultaneous modeling of the time domain and space domain. These results indicate the potential of the interactive spatiotemporal modeling method for fault diagnosis of rotating machinery.

Originality/value

The authors propose a ST-LSTM method for fault diagnosis of rotating machinery. The authors collected vibration signals from real rolling bearing and gearing test rigs for verification.

Keywords

Acknowledgements

Funding: National Natural Science Foundation of China; 51875032; National Natural Science Foundation of China; 52275079.

Citation

Zhang, T., Huang, Z., Lu, M., Gu, J. and Wang, Y. (2024), "Interactive spatiotemporal LSTM approach for enhanced industrial fault diagnosis", Industrial Lubrication and Tribology, Vol. 76 No. 2, pp. 149-159. https://doi.org/10.1108/ILT-04-2023-0086

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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