Enhancing Bearing Fault Diagnosis Using Transfer Learning and Random Forest Classification: A Comparative Study on Variable Working Conditions

被引:5
作者
Saha, Durjay [1 ]
Hoque, Md. Emdadul [1 ]
Chowdhury, Muhammad E. H. [2 ]
机构
[1] Rajshahi Univ Engn & Technol, Dept Mech Engn, Rajshahi 6204, Bangladesh
[2] Qatar Univ, Dept Elect Engn, Doha, Qatar
关键词
Bearing fault; bearing fault classification; bearing fault classification under variable working conditions; machine condition monitoring; random forest; transfer learning; VGG16; ROTATING MACHINERY; NEURAL-NETWORK; MODEL;
D O I
10.1109/ACCESS.2023.3347345
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Rotating machines require bearings to operate smoothly. However, wear, misalignment, and poor lubrication can degrade bearings over time. Fault diagnosis models identify and classify bearing faults. A fault diagnosis model trained in a specific working condition may not perform well in different working conditions. Real-world datasets are mixed with various work environment conditions; therefore, validating a model using different working conditions datasets is necessary. In this study, raw vibrational accelerometer data of variable working conditions is preprocessed using the window length and stride method to generate a data format suitable for evaluating the proposed model. This model employs the Transfer learning-based VGG16 model as the feature extractor and random forest as the classifier, and it has proven to be highly effective. This proposed fault diagnosis model adapts to different work environments and enhances fault classification at variable working conditions. The performance of the proposed model is evaluated using various metrics such as confusion matrix heatmap, t-SNE plot, precision-recall curve and learning curve. Results obtained from these metrics indicate that this model performs well compared to others. The overall accuracy of the model is 99.90%, and both the training and testing of this model are fast. It is evident from the learning curve evaluation that this model is free from over- or under-fitting issues. Overall, this model is reliable and suitable for classifying bearing faults at different working conditions and can be useable for real world purposes.
引用
收藏
页码:5986 / 6000
页数:15
相关论文
共 39 条
[31]   Rolling bearing fault diagnosis using adaptive deep belief network with dual-tree complex wavelet packet [J].
Shao, Haidong ;
Jiang, Hongkai ;
Wang, Fuan ;
Wang, Yanan .
ISA TRANSACTIONS, 2017, 69 :187-201
[32]   Rolling element bearing diagnostics using the Case Western Reserve University data: A benchmark study [J].
Smith, Wade A. ;
Randall, Robert B. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2015, 64-65 :100-131
[33]  
Tammina S, 2019, International Journal of Scientific and Research Publications, V9, pp9420, DOI [10.29322/ijsrp.9.10.2019.p9420, 10.29322/ijsrp.9.10.2019.p9420, DOI 10.29322/IJSRP.9.10.2019.P9420]
[34]   An adaptive deep convolutional neural network for rolling bearing fault diagnosis [J].
Wang Fuan ;
Jiang Hongkai ;
Shao Haidong ;
Duan Wenjing ;
Wu Shuaipeng .
MEASUREMENT SCIENCE AND TECHNOLOGY, 2017, 28 (09)
[35]   DAMER: a novel diagnosis aggregation method with evidential reasoning rule for bearing fault diagnosis [J].
Wang, Gang ;
Zhang, Feng ;
Cheng, Bayi ;
Fang, Fang .
JOURNAL OF INTELLIGENT MANUFACTURING, 2021, 32 (01) :1-20
[36]   A Novel Feature Enhancement Method Based on Improved Constraint Model of Online Dictionary Learning [J].
Wang, Huaqing ;
Wang, Pengxin ;
Song, Liuyang ;
Ren, Bangyue ;
Cui, Lingli .
IEEE ACCESS, 2019, 7 :17599-17607
[37]   Fault Diagnosis of Roller Bearings Based on a Wavelet Neural Network and Manifold Learning [J].
Wu, Lifeng ;
Yao, Beibei ;
Peng, Zhen ;
Guan, Yong .
APPLIED SCIENCES-BASEL, 2017, 7 (02)
[38]   Fault Diagnosis from Raw Sensor Data Using Deep Neural Networks Considering Temporal Coherence [J].
Zhang, Ran ;
Peng, Zhen ;
Wu, Lifeng ;
Yao, Beibei ;
Guan, Yong .
SENSORS, 2017, 17 (03)
[39]   Deep Learning Algorithms for Bearing Fault Diagnosticsx&x2014;A Comprehensive Review [J].
Zhang, Shen ;
Zhang, Shibo ;
Wang, Bingnan ;
Habetler, Thomas G. .
IEEE ACCESS, 2020, 8 :29857-29881