Bearing Fault Classification Using Multi-Class Machine Learning (ML) Techniques

被引:1
作者
Sujatha, C. [1 ]
Mohan, Aravind [2 ]
机构
[1] Indian Inst Technol Madras, Chennai 600036, Tamil Nadu, India
[2] Google, Mountain View, CA 94043 USA
关键词
fault diagnostics; machine learning; rolling bearing defects; ROLLING ELEMENT BEARING; SPECTRAL KURTOSIS; DIAGNOSIS; VIBRATION; DEFECTS;
D O I
10.4108/eetsis.3895
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Bearing elements are widely used in rotating machines and their failure results in a considerable amount of downtime of the machines. The aim of this work is to classify defects in a bearing. Three types of classification have been done: (i) Binary classification: classification as non-defective or defective bearing, (ii) 3-class classification such as non-defective, defective with inner ring defect and defective with roller defect and finally (iii) 7-class classification corresponding to no defect condition, three ring defect conditions pertaining to indentations of three different sizes on the inner ring and three roller defect conditions corresponding to indentations of three different sizes on the roller. The open-access data generated using a rolling bearing test rig from the Politecnico Di Torino, Italy, has been used for this work. The data had been obtained using 2 accelerometers on two bearing housings for multiple load and speed combinations. For classification, in the present work, classical ML algorithms such as logistic regression (LR), K-Nearest Neighbour (K-NN) classification algorithm, random forest (RF), support vector classifier (SVC) and kernel support vector machine (KSVM) have been used. All these techniques gave very promising results, the classification accuracy varying from 0.7969 to 0.9996 for all speed-load conditions. Such classification work across multiple operational conditions, with multiple fault conditions and multiple signatures with faulty components, has not been reported.
引用
收藏
页数:10
相关论文
共 50 条
[41]   Bearing Fault Classification Using Improved Antlion Optimizer and Extreme Learning Machine [J].
Zhao, Zhuanzhe ;
Zhang, Yu ;
Ma, Qiang ;
Rui, Yujian ;
Ye, Guowen ;
Wang, Mengxian ;
Liu, Yongming ;
Zhang, Zhen ;
Wei, Neng ;
Tu, Zhijian .
ADVANCES IN MATERIALS SCIENCE AND ENGINEERING, 2022, 2022
[42]   Machine Learning Based Multi-Class Classification and Grading of Squamous Cell Carcinoma in Optical Microscopy [J].
Melanthota, Sindhoora Kaniyala ;
Spandana, K. U. ;
Raghavendra, U. ;
Rai, Sharada ;
Nayak, Rakshatha ;
Kistenev, Yuri V. ;
Shil, Suranjan ;
Mahato, K. K. ;
Mazumder, Nirmal .
MICROSCOPY RESEARCH AND TECHNIQUE, 2025,
[43]   Machine Learning Algorithms for Raw and Unbalanced Intrusion Detection Data in a Multi-Class Classification Problem [J].
Bacevicius, Mantas ;
Paulauskaite-Taraseviciene, Agne .
APPLIED SCIENCES-BASEL, 2023, 13 (12)
[44]   Overlooked pitfalls in multi-class machine learning classification in radiation oncology and how to avoid them [J].
Chatterjee, Avishek ;
Vallieres, Martin ;
Seuntjens, Jan .
PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2020, 70 :96-100
[45]   Automated Multi-class Brain Tumor Types Detection by Extracting RICA Based Features and Employing Machine Learning Techniques [J].
Anjum, Sadia ;
Hussain, Lal ;
Ali, Mushtaq ;
Abbasi, Adeel Ahmed .
MACHINE LEARNING IN CLINICAL NEUROIMAGING AND RADIOGENOMICS IN NEURO-ONCOLOGY, MLCN 2020, RNO-AI 2020, 2020, 12449 :249-258
[46]   Vibration fault diagnosis for hydroelectric generating units using the multi-class relevance vector machine [J].
Yi, Hui ;
Mei, Lei ;
Li, Lijuan ;
Y., Liu ;
Y., Yuan .
Zhongguo Dianji Gongcheng Xuebao/Proceedings of the Chinese Society of Electrical Engineering, 2014, 34 (17) :2843-2850
[47]   Multi-class pattern classification using neural networks [J].
Ou, Guobin ;
Murphey, Yi Lu .
PATTERN RECOGNITION, 2007, 40 (01) :4-18
[48]   Learning Optimal Fair Scoring Systems for Multi-Class Classification [J].
Rouzot, Julien ;
Ferry, Julien ;
Huguet, Marie-Jose .
2022 IEEE 34TH INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE, ICTAI, 2022, :197-204
[49]   Bearing Fault Classification of Induction Motors Using Discrete Wavelet Transform and Ensemble Machine Learning Algorithms [J].
Toma, Rafia Nishat ;
Kim, Jong-Myon .
APPLIED SCIENCES-BASEL, 2020, 10 (15)
[50]   Bearing Fault Identification Using Machine Learning and Adaptive Cascade Fault Observer [J].
Piltan, Farzin ;
Kim, Jong-Myon .
APPLIED SCIENCES-BASEL, 2020, 10 (17)