Enhancing Reliability Through Interpretability: A Comprehensive Survey of Interpretable Intelligent Fault Diagnosis in Rotating Machinery | IEEE Journals & Magazine | IEEE Xplore

Enhancing Reliability Through Interpretability: A Comprehensive Survey of Interpretable Intelligent Fault Diagnosis in Rotating Machinery


A Comprehensive Framework for Bearing Fault Diagnosis with a Focus on Interpretability

Abstract:

This paper presents a comprehensive survey on interpretable intelligent fault diagnosis for rotating machinery, addressing the challenge of the “black box” nature of mach...Show More

Abstract:

This paper presents a comprehensive survey on interpretable intelligent fault diagnosis for rotating machinery, addressing the challenge of the “black box” nature of machine learning techniques that hampers reliability in automated diagnostic processes. It underscores the growing importance of interpretability in intelligent fault diagnosis (IFD), marking a shift from traditional signal processing methods to machine learning-based approaches that necessitate transparency for trustworthiness. Our review systematically collates and examines the spectrum of interpretability in IFD, distinguishing between post-hoc and ante-hoc strategies. We detail mainstream post-hoc methods, their applications, and critique their limitations, particularly the absence of physical significance. The survey then explores ante-hoc methods that incorporate physical knowledge upfront, enhancing interpretability. By categorizing and evaluating three distinct knowledge embedding approaches, we shed light on their unique applications. Conclusively, we highlight emerging research directions and challenges in the field, aiming to equip readers with a nuanced understanding of current methodologies and inspire future studies in making IFD more reliable and interpretable.
A Comprehensive Framework for Bearing Fault Diagnosis with a Focus on Interpretability
Published in: IEEE Access ( Volume: 12)
Page(s): 103348 - 103379
Date of Publication: 17 July 2024
Electronic ISSN: 2169-3536

Funding Agency:

Citations are not available for this document.

Cites in Papers - |

Cites in Papers - IEEE (2)

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1.
Jiaxin Ren, Chenye Hu, Zuogang Shang, Yasong Li, Zhibin Zhao, Ruqiang Yan, "Learning Interpretable and Transferable Representations via Wavelet-Constrained Transformer for Industrial Acoustic Diagnosis", IEEE Transactions on Instrumentation and Measurement, vol.74, pp.1-12, 2025.
2.
Gang Chen, Penghong Lu, Yukun Tang, "Interpretable Fault Diagnosis of Rolling Element Bearings with Temporal Logic Neural Network", 2024 18th International Conference on Control, Automation, Robotics and Vision (ICARCV), pp.290-296, 2024.

Cites in Papers - Other Publishers (5)

1.
Keying Liu, Yifan Li, Zhaoyang Cui, Guangdong Qi, Biao Wang, "Adaptive frequency attention-based interpretable Transformer network for few-shot fault diagnosis of rolling bearings", Reliability Engineering & System Safety, pp.111271, 2025.
2.
Xin Wang, Hang Wang, MinJun Peng, "Interpretability study of a typical fault diagnosis model for nuclear power plant primary circuit based on a graph neural network", Reliability Engineering & System Safety, pp.111151, 2025.
3.
Mathew Habyarimana, Abayomi A. Adebiyi, "A Review of Artificial Intelligence Applications in Predicting Faults in Electrical Machines", Energies, vol.18, no.7, pp.1616, 2025.
4.
Yueyi Yang, Jiabo Zhai, Haiquan Wang, Xiaobin Xu, Yabo Hu, Jinxia Wen, "An Improved Fault Diagnosis Method for Rolling Bearing Based on Relief-F and Optimized Random Forests Algorithm", Machines, vol.13, no.3, pp.183, 2025.
5.
Ruqiang Yan, Zheng Zhou, Zuogang Shang, Zhiying Wang, Chenye Hu, Yasong Li, Yuangui Yang, Xuefeng Chen, Robert X. Gao, "Knowledge Driven Machine Learning Towards Interpretable Intelligent Prognostics and Health Management: Review and Case Study", Chinese Journal of Mechanical Engineering, vol.38, no.1, 2025.

References

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