Design a Hybrid Model of Mel-Spectrogram and VGG16 Based Convolutional Neural Network for Diagnosing Motor Bearing Faults

Yazarlar

  • Vahit FERYAD Cözüm Makina R&D Center, Turkey Author
  • Ali AKYOL Cözüm Makina R&D Center, Turkey Author

DOI:

https://doi.org/10.5281/zenodo.8071505

Anahtar Kelimeler:

Rolling bearing- Mel-spectrogram- VGG16- Deep Learning- Predictive maintenance

Öz

Owing to rolling bearings' significance as one of the most frequently utilized components of industrial machinery. Therefore, it is crucial to establish a system to check the bearing's condition. In this research, a hybrid method of spectral feature extraction combined with Convolutional Neural Network (CNN) designed to classify faults. Firstly, Mel-spectrogram applied as a method for pre-processing by transforming the raw vibration data. Secondly, a Mel-VGG16 employed as a classifier to detect the bearing faults. The proposed technique tested on the CWRU benchmark dataset to bearings in different rotating speeds. The case study results demonstrated that the proposed model could obtain a higher testing accuracy.

Referanslar

A. Althubaiti, F. Elasha, and J. A. Teixeira, “Fault diagnosis and health management of bearings in rotating equipment based on vibration analysis–a review” Journal of Vibroengineering, 46-74, 2022.

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M. Sohaib, J. M. Kim, “Reliable fault diagnosis of rotary machine bearings using a stacked sparse autoencoder-based deep neural network” Shock and Vibration, 2018.

R.Yan, R. X. Gao, “Multi-scale enveloping spectrogram for vibration analysis in bearing defect diagnosis” Tribology International, 293-302, 2009.

H. Liu, D. Yao, J. Yang, and X. Li, “Lightweight convolutional neural network and its application in rolling bearing fault diagnosis under variable working conditions” Sensors, 19(22), 4827, 2019.

G. Hong, D. Suh, “Supervised-Learning-Based Intelligent Fault Diagnosis for Mechanical Equipment” IEEE Access, 116147-116162, 2021.

“Bearing Data Center | Case School of Engineering | Case Western Reserve University.” [Online]. Available: https://engineering.case.edu/bearingdatacenter. [Accessed: 04-Apr-2022].

G. Hong, D. Suh, “Supervised-Learning-Based Intelligent Fault Diagnosis for Mechanical Equipment” IEEE Access, 116147-116162, 2021.

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Yayınlanmış

04-06-2024

Nasıl Atıf Yapılır

FERYAD, V., & AKYOL, A. (2024). Design a Hybrid Model of Mel-Spectrogram and VGG16 Based Convolutional Neural Network for Diagnosing Motor Bearing Faults. AINTELIA Science Notes Journal, 1(2). https://doi.org/10.5281/zenodo.8071505