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2024 | OriginalPaper | Buchkapitel

Bearing Fault Diagnosis Using Machine Learning Models

verfasst von : Shagun Chandrvanshi, Shivam Sharma, Mohini Preetam Singh, Rahul Singh

Erschienen in: Micro-Electronics and Telecommunication Engineering

Verlag: Springer Nature Singapore

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Abstract

The bearing serves as a crucial element of any machinery with a gearbox. It is essential to diagnose bearing faults effectively to ensure the machinery’s safety and normal operation. Therefore, the identification and assessment of mechanical faults in bearings are extremely significant for ensuring reliable machinery operation. This comparative study shows the performance of fault diagnosis of bearings by utilizing various machine learning methodologies, including SVM, KNN, Linear Regression, Ridge Regression, XGB Regressor, AdaBoost Regressor, and Cat Boosting Regressor. Bearings are like the unsung heroes of the mechanical world, immensely supporting and guiding the smooth motion in everything, from your car’s wheel to the propeller in a ship. However, like other mechanical components, over the course of time, the constant use of bearings can lead to wear and tear, which may ultimately result in a fault. Bearing faults can manifest in several ways, including vibration, noise, heat, and changes in lubrication that reduce the efficiency of a machine. Therefore, it is essential to regularly monitor the bearings and inspect them to detect any issues early on. The aim of this present work is to use the various ML methodology, and their application on the bearing’s data to watch the condition of the machine’s bearing. The present work is carried out in four phases. In the first phase, the data of various loads is collected. In the second phase, the data undergoes an Exploratory Data Analysis (EDA). During the third phase, the data undergoes both training and testing processes to evaluate its effectiveness. In the fourth and final phase, the model that gives the highest accuracy among all is chosen. The present approach is based on the various machine learning algorithms and their application.

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Literatur
1.
Zurück zum Zitat Altaf M, Akram T, Khan MA, Iqbal M, Ch MMI, Hsu CH (2022) A new statistical features based approach for bearing fault diagnosis using vibration signals. Sensors 22(5):2012CrossRef Altaf M, Akram T, Khan MA, Iqbal M, Ch MMI, Hsu CH (2022) A new statistical features based approach for bearing fault diagnosis using vibration signals. Sensors 22(5):2012CrossRef
2.
Zurück zum Zitat Kankar PK, Sharma SC, Harsha SP (2011) Fault diagnosis of ball bearings using machine learning methods. Expert Syst Appl 38(3):1876–1886CrossRef Kankar PK, Sharma SC, Harsha SP (2011) Fault diagnosis of ball bearings using machine learning methods. Expert Syst Appl 38(3):1876–1886CrossRef
3.
Zurück zum Zitat He M, He D (2017) Deep learning based approach for bearing fault diagnosis. IEEE Trans Ind Appl 53(3):3057–3065CrossRef He M, He D (2017) Deep learning based approach for bearing fault diagnosis. IEEE Trans Ind Appl 53(3):3057–3065CrossRef
4.
Zurück zum Zitat Han T, Zhang L, Yin Z, Tan AC (2021) Rolling bearing fault diagnosis with combined convolutional neural networks and support vector machine. Measurement 177:109022CrossRef Han T, Zhang L, Yin Z, Tan AC (2021) Rolling bearing fault diagnosis with combined convolutional neural networks and support vector machine. Measurement 177:109022CrossRef
5.
Zurück zum Zitat Zhang S, Zhang S, Wang B, Habetler TG (2020) Deep learning algorithms for bearing fault diagnostics—a comprehensive review. IEEE Access 8:29857–29881CrossRef Zhang S, Zhang S, Wang B, Habetler TG (2020) Deep learning algorithms for bearing fault diagnostics—a comprehensive review. IEEE Access 8:29857–29881CrossRef
6.
Zurück zum Zitat Cristianini N, Shawe-Taylor NJ (2000) An introduction to support vector machines. Cambridge University Press, Cambridge Cristianini N, Shawe-Taylor NJ (2000) An introduction to support vector machines. Cambridge University Press, Cambridge
7.
Zurück zum Zitat Widodo A, Yang B-S (2007) Review on support vector machine in machine condition monitoring and fault diagnosis. Mech Syst Signal Process 21:2560–2574CrossRef Widodo A, Yang B-S (2007) Review on support vector machine in machine condition monitoring and fault diagnosis. Mech Syst Signal Process 21:2560–2574CrossRef
8.
Zurück zum Zitat Tyagi CS (2008) A comparative study of SVM classifiers and artificial neural networks application for rolling element bearing fault diagnosis using wavelet transform preprocessing. Int J Mech Mechatron Eng 2(7):904–912 Tyagi CS (2008) A comparative study of SVM classifiers and artificial neural networks application for rolling element bearing fault diagnosis using wavelet transform preprocessing. Int J Mech Mechatron Eng 2(7):904–912
9.
Zurück zum Zitat Vakharia V, Gupta VK, Kankar PK (2016) A comparison of feature ranking techniques for fault diagnosis of ball bearing. Soft Comput 20:1601–1619CrossRef Vakharia V, Gupta VK, Kankar PK (2016) A comparison of feature ranking techniques for fault diagnosis of ball bearing. Soft Comput 20:1601–1619CrossRef
10.
Zurück zum Zitat Sharma A, Jigyasu R, Mathew L, Chatterji S (2018) Bearing fault diagnosis using weighted K-nearest neighbor. In: 2018 2nd international conference on trends in electronics and informatics (ICOEI), May, IEEE, pp 1132–1137 Sharma A, Jigyasu R, Mathew L, Chatterji S (2018) Bearing fault diagnosis using weighted K-nearest neighbor. In: 2018 2nd international conference on trends in electronics and informatics (ICOEI), May, IEEE, pp 1132–1137
11.
Zurück zum Zitat Heng RBW, Nor MJM (1998) Statistical analysis of sound and vibration signals for monitoring rolling element bearing condition. Appl Acoust 53(1–3):211–226CrossRef Heng RBW, Nor MJM (1998) Statistical analysis of sound and vibration signals for monitoring rolling element bearing condition. Appl Acoust 53(1–3):211–226CrossRef
12.
Zurück zum Zitat Widodo A, Yang BS (2007) Support vector machine in machine condition monitoring and fault diagnosis. Mech Syst Signal Process 21(6):2560–2574CrossRef Widodo A, Yang BS (2007) Support vector machine in machine condition monitoring and fault diagnosis. Mech Syst Signal Process 21(6):2560–2574CrossRef
13.
Zurück zum Zitat Wang B, Zhang X, Xing S, Sun C, Chen X (2021) Sparse representation theory for support vector machine kernel function selection and its application in high-speed bearing fault diagnosis. ISA Trans 118:207–218CrossRef Wang B, Zhang X, Xing S, Sun C, Chen X (2021) Sparse representation theory for support vector machine kernel function selection and its application in high-speed bearing fault diagnosis. ISA Trans 118:207–218CrossRef
14.
Zurück zum Zitat Patle A, Chouhan DS (2013) SVM kernel functions for classification. In: 2013 international conference on advances in technology and engineering (ICATE), January, IEEE, pp 1–9 Patle A, Chouhan DS (2013) SVM kernel functions for classification. In: 2013 international conference on advances in technology and engineering (ICATE), January, IEEE, pp 1–9
15.
Zurück zum Zitat Feizizadeh B, Roodposhti MS, Blaschke T, Aryal J (2017) Comparing GIS-based support vector machine kernel functions for landslide susceptibility mapping. Arab J Geosci 10:1–13CrossRef Feizizadeh B, Roodposhti MS, Blaschke T, Aryal J (2017) Comparing GIS-based support vector machine kernel functions for landslide susceptibility mapping. Arab J Geosci 10:1–13CrossRef
16.
Zurück zum Zitat Brenning A (2023) Interpreting machine-learning models in transformed feature space with an application to remote-sensing classification. Machine Learn 1–17 Brenning A (2023) Interpreting machine-learning models in transformed feature space with an application to remote-sensing classification. Machine Learn 1–17
17.
Zurück zum Zitat Xu G, Liu M, Jiang Z, Söffker D, Shen W (2019) Bearing fault diagnosis method based on deep convolutional neural network and random forest ensemble learning. Sensors 19(5):1088CrossRef Xu G, Liu M, Jiang Z, Söffker D, Shen W (2019) Bearing fault diagnosis method based on deep convolutional neural network and random forest ensemble learning. Sensors 19(5):1088CrossRef
18.
Zurück zum Zitat Vakharia V, Gupta VK, Kankar PK (2017) Efficient fault diagnosis of ball bearing using ReliefF and random forest classifier. J Braz Soc Mech Sci Eng 39(8):2969–2982CrossRef Vakharia V, Gupta VK, Kankar PK (2017) Efficient fault diagnosis of ball bearing using ReliefF and random forest classifier. J Braz Soc Mech Sci Eng 39(8):2969–2982CrossRef
19.
Zurück zum Zitat Kamat P, Marni P, Cardoz L, Irani A, Gajula A, Saha A, Kumar S, Sugandhi R (2021) Bearing fault detection using comparative analysis of random forest, ANN, and autoencoder methods. In: Communication and intelligent systems: proceedings of ICCIS 2020, Springer, Singapore, pp 157–171 Kamat P, Marni P, Cardoz L, Irani A, Gajula A, Saha A, Kumar S, Sugandhi R (2021) Bearing fault detection using comparative analysis of random forest, ANN, and autoencoder methods. In: Communication and intelligent systems: proceedings of ICCIS 2020, Springer, Singapore, pp 157–171
20.
Zurück zum Zitat Li C, Sanchez RV, Zurita G, Cerrada M, Cabrera D, Vásquez RE (2016) Gearbox fault diagnosis based on deep random forest fusion of acoustic and vibratory signals. Mech Syst Signal Process 76:283–293CrossRef Li C, Sanchez RV, Zurita G, Cerrada M, Cabrera D, Vásquez RE (2016) Gearbox fault diagnosis based on deep random forest fusion of acoustic and vibratory signals. Mech Syst Signal Process 76:283–293CrossRef
21.
Zurück zum Zitat Guo X, Chen L, Shen C (2016) Hierarchical adaptive deep convolution neural network and its application to bearing fault diagnosis. Measurement 93:490–502CrossRef Guo X, Chen L, Shen C (2016) Hierarchical adaptive deep convolution neural network and its application to bearing fault diagnosis. Measurement 93:490–502CrossRef
22.
Zurück zum Zitat Soualhi A, Medjaher K, Zerhouni N (2014) Bearing health monitoring based on Hilbert-Huang transform, support vector machine, and regression. IEEE Trans Instrum Meas 64(1):52–62CrossRef Soualhi A, Medjaher K, Zerhouni N (2014) Bearing health monitoring based on Hilbert-Huang transform, support vector machine, and regression. IEEE Trans Instrum Meas 64(1):52–62CrossRef
23.
Zurück zum Zitat Zhang R, Tao H, Wu L, Guan Y (2017) Transfer learning with neural networks for bearing fault diagnosis in changing working conditions. IEEE Access 5:14347–14357CrossRef Zhang R, Tao H, Wu L, Guan Y (2017) Transfer learning with neural networks for bearing fault diagnosis in changing working conditions. IEEE Access 5:14347–14357CrossRef
24.
Zurück zum Zitat Lei Y, He Z, Zi Y (2009) Application of an intelligent classification method to mechanical fault diagnosis. Expert Syst Appl 36(6):9941–9948CrossRef Lei Y, He Z, Zi Y (2009) Application of an intelligent classification method to mechanical fault diagnosis. Expert Syst Appl 36(6):9941–9948CrossRef
25.
Zurück zum Zitat Lu W, Li Y, Cheng Y, Meng D, Liang B, Zhou P (2018) Early fault detection approach with deep architectures. IEEE Trans Instrum Meas 67(7):1679–1689CrossRef Lu W, Li Y, Cheng Y, Meng D, Liang B, Zhou P (2018) Early fault detection approach with deep architectures. IEEE Trans Instrum Meas 67(7):1679–1689CrossRef
26.
Zurück zum Zitat Hsu CW, Lin CJ (2002) A comparison of methods for multiclass support vector machines. IEEE Trans Neural Networks 13(2):415–425CrossRef Hsu CW, Lin CJ (2002) A comparison of methods for multiclass support vector machines. IEEE Trans Neural Networks 13(2):415–425CrossRef
27.
Zurück zum Zitat Esakimuthu Pandarakone S, Mizuno Y, Nakamura H (2019) A comparative study between machine learning algorithm and artificial intelligence neural network in detecting minor bearing fault of induction motors. Energies 12(11):2105CrossRef Esakimuthu Pandarakone S, Mizuno Y, Nakamura H (2019) A comparative study between machine learning algorithm and artificial intelligence neural network in detecting minor bearing fault of induction motors. Energies 12(11):2105CrossRef
28.
Zurück zum Zitat Abboud D, Elbadaoui M, Smith WA, Randall RB (2019) Advanced bearing diagnostics: a comparative study of two powerful approaches. Mech Syst Signal Process 114:604–627CrossRef Abboud D, Elbadaoui M, Smith WA, Randall RB (2019) Advanced bearing diagnostics: a comparative study of two powerful approaches. Mech Syst Signal Process 114:604–627CrossRef
29.
Zurück zum Zitat Agarwal C (2023) Bearing_Condition_monitoring_data.csv. chirag1236/bearing-condition-monitoring-data.csv Agarwal C (2023) Bearing_Condition_monitoring_data.csv. chirag1236/bearing-condition-monitoring-data.csv
Metadaten
Titel
Bearing Fault Diagnosis Using Machine Learning Models
verfasst von
Shagun Chandrvanshi
Shivam Sharma
Mohini Preetam Singh
Rahul Singh
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-9562-2_18

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