1. Bearing Fault Event-Triggered Diagnosis Using a Variational Mode Decomposition-Based Machine Learning Approach
- Author
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Yassine Amirat, Houssem Habbouche, Mohamed Benbouzid, Tarak Benkedjouh, YNCREA OUEST (YO), Energie et Systèmes Electromécaniques (LABISEN-ESE), Laboratoire ISEN (L@BISEN), Institut supérieur de l'électronique et du numérique (ISEN)-YNCREA OUEST (YO)-Institut supérieur de l'électronique et du numérique (ISEN)-YNCREA OUEST (YO), Laboratoire de Mécanique des Structures. (LMS), École Militaire Polytechnique [Alger] (EMP), Institut de Recherche Dupuy de Lôme (IRDL), and Université de Bretagne Sud (UBS)-Université de Brest (UBO)-École Nationale Supérieure de Techniques Avancées Bretagne (ENSTA Bretagne)-Centre National de la Recherche Scientifique (CNRS)
- Subjects
Computer science ,variational mode decomposition ,Energy Engineering and Power Technology ,Context (language use) ,02 engineering and technology ,Fault (power engineering) ,Machine learning ,computer.software_genre ,Convolutional neural network ,Fault detection and isolation ,Convolution ,law.invention ,convolution neural network ,Robustness (computer science) ,law ,0202 electrical engineering, electronic engineering, information engineering ,Electrical and Electronic Engineering ,Bearing (mechanical) ,business.industry ,[SPI.NRJ]Engineering Sciences [physics]/Electric power ,fault detection and diagnosis ,021001 nanoscience & nanotechnology ,machine learning ,bearing fault ,Rolling-element bearing ,020201 artificial intelligence & image processing ,Artificial intelligence ,0210 nano-technology ,business ,computer - Abstract
International audience; The monitoring of rolling element bearing is indexed as a critical task for condition-based maintenance in various industrial applications. It allows avoiding unscheduled maintenance operations while decreasing their cost. For this purpose, various methodologies were developed to ensure accurate and efficient monitoring. In this context, this paper proposes an approach for bearing faults early diagnosis based on the variational mode decomposition (VMD), used as a notch filter for dominant mode cancellation, and a machine learning approach, namely the one-dimensional convolution neural network (1D-CNN), for detection and diagnosis purposes. Specifically, the proposed approach first performs features extraction using VMD for fault detection, and then triggers to multi-scale features extraction using CNN convolution and pooling layers for classification and diagnosis. The proposed bearing faults detection and diagnosis approach is evaluated, in terms of robustness and performances, using the well-known Case Western Reserve University experimental dataset. In addition, performances are evaluated versus well- established demodulation techniques, in terms of faults detection, and machine learning strategies, in terms of faults diagnosis. The achieved results show that the proposed VMD notch filter-based 1D-CNN approach is clearly promising for bearing degradations monitoring.
- Published
- 2022