Anomaly characterization for the condition monitoring of rotating shafts exploiting data fusion and explainable convolutional neural networks

被引:0
作者
Parziale, Marc [1 ,2 ]
Yeung, Yip Fun [1 ]
Youcef-Toumi, Kamal [1 ]
Giglio, Marco [2 ]
Cadini, Francesco [2 ]
机构
[1] MIT, Dept Mech Engn, Cambridge, MA USA
[2] Politecn Milan, Dept Mech Engn, Via Masa 1, I-20156 Milan, Italy
来源
STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL | 2025年
关键词
Condition monitoring; anomaly characterization; convolutional neural networks; explainable artificial intelligence; data fusion; SYSTEM;
D O I
10.1177/14759217241301288
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Condition monitoring of rotating shafts is a critical task in the maintenance of mechanical systems. Rotating shafts are essential components in many machines, and their failure can result in serious consequences, including system downtime, production loss, equipment damage, and safety issues. Advanced sensor technologies and deep learning algorithms have facilitated data collection and processing, providing vital insights into system health. However, despite the vast availability of sensors, the data used to train these algorithms often consists of single-nature signals, and systems are typically damaged to simulate different faulty scenarios. Additionally, the perceived opacity of deep learning algorithms, often referred to as black-box models, has raised concerns about their credibility in critical domains. Hence, this paper addresses these challenges by (i) proposing various explainable artificial intelligence (XAI) methods in a rotating shaft case study, (ii) using a novel data-fusion approach to combine multiple signals, and (iii) leveraging data from an innovative experimental set-up mimicking real-world industrial machines. The employed experimental set-up is equipped with a diverse array of sensors capable of capturing signals of varying nature, and it streamlines the automated introduction of four distinct fault types in an innovative manner. Applied to convolutional neural networks, the employed XAI methods enhance transparency in deep learning models, providing practical insights for complex systems. This approach not only addresses the limitations associated with single-nature signals and simulated faults but also contributes to the credibility and interpretability of deep learning models in critical applications.
引用
收藏
页数:21
相关论文
共 64 条
[21]   XAI-Explainable artificial intelligence [J].
Gunning, David ;
Stefik, Mark ;
Choi, Jaesik ;
Miller, Timothy ;
Stumpf, Simone ;
Yang, Guang-Zhong .
SCIENCE ROBOTICS, 2019, 4 (37)
[22]   DARPA's Explainable Artificial Intelligence Program [J].
Gunning, David ;
Aha, David W. .
AI MAGAZINE, 2019, 40 (02) :44-58
[23]   Explaining COVID-19 diagnosis with Taylor decompositions [J].
Hassan, Mohammad Mehedi ;
AlQahtani, Salman A. ;
Alelaiwi, Abdulhameed ;
Papa, Joao P. .
NEURAL COMPUTING & APPLICATIONS, 2023, 35 (30) :22087-22100
[24]   The Real-World-Weight Cross-Entropy Loss Function: Modeling the Costs of Mislabeling [J].
Ho, Yaoshiang ;
Wookey, Samuel .
IEEE ACCESS, 2020, 8 :4806-4813
[25]   Multi-fault classification of rotor systems based on phase feature of axis trajectory in noisy environments [J].
Hua, Chunrong ;
Xiong, Libo ;
Lv, Lumei ;
Dong, Dawei ;
Ouyang, Huajiang .
STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2024, 23 (02) :924-944
[26]   Explainability of a Machine Learning Granting Scoring Model in Peer-to-Peer Lending [J].
Janny Ariza-Garzon, Miller ;
Arroyo, Javier ;
Caparrini, Antonio ;
Segovia-Vargas, Maria-Jesus .
IEEE ACCESS, 2020, 8 :64873-64890
[27]   A convolutional neural network based feature learning and fault diagnosis method for the condition monitoring of gearbox [J].
Jing, Luyang ;
Zhao, Ming ;
Li, Pin ;
Xu, Xiaoqiang .
MEASUREMENT, 2017, 111 :1-10
[28]   Towards Best Practice in Explaining Neural Network Decisions with LRP [J].
Kohlbrenner, Maximilian ;
Bauer, Alexander ;
Nakajima, Shinichi ;
Binder, Alexander ;
Samek, Wojciech ;
Lapuschkin, Sebastian .
2020 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2020,
[29]   Improved deep convolution neural network (CNN) for the identification of defects in the centrifugal pump using acoustic images [J].
Kumar, Anil ;
Gandhi, C. P. ;
Zhou, Yuqing ;
Kumar, Rajesh ;
Xiang, Jiawei .
APPLIED ACOUSTICS, 2020, 167
[30]   An XAI Approach to Deep Learning Models in the Detection of DCIS [J].
La Ferla, Michele .
ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS. AIAI 2023 IFIP WG 12.5 INTERNATIONAL WORKSHOPS, 2023, 677 :409-420