Bearing Fault Diagnosis With Envelope Analysis and Machine Learning Approaches Using CWRU Dataset

被引:28
|
作者
Alonso-Gonzalez, Miguel [1 ]
Diaz, Vicente Garcia [1 ]
Perez, Benjamin Lopez [1 ]
G-Bustelo, B. Cristina Pelayo [1 ]
Anzola, John Petearson [2 ]
机构
[1] Univ Oviedo, Dept Comp Sci, Oviedo 33007, Spain
[2] Fdn Univ Los Libertadores, Fac Ingn & Ciencias Basicas Ciencias, Dept Elect & Mechatron, Bogota 111221, Colombia
关键词
Bearing fault; deep learning; industry; 40; machine learning; predictive maintenance; NEURAL-NETWORK; SPECTRAL KURTOSIS; TRANSFORM;
D O I
10.1109/ACCESS.2023.3283466
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Predictive maintenance in machines aims to anticipate failures. In rotating machines, the component that suffers the most wear and tear is the bearings. Currently, based on the Industry 4.0 paradigm, advances have been made in obtaining data, specifically, vibration signals that can be used to predict deterioration using various techniques. In this study, we have applied vibration analysis to obtain features that can be used in an optimal Machine Learning model using a public dataset from CWRU, widely used in research, which contains data on bearing failures. The main objective of this research is to detect bearing failures using a minimum set of observations and selecting the minimum number of features. To achieve this, frequency domain vibration analysis, combined with envelope analysis, is utilized as an effective method for detecting bearing failures. The results were further improved by incorporating an optimal bandwidth determined using the kurtogram. When the results of the envelope analysis are applied to various machine learning models, using the calculated amplitudes as predictors, the Kernel Naive Bayes model achieved an accuracy of 94.4%. Meanwhile, the Decision Tree (Fine Tree) and KNN (Fine KNN) models demonstrate exceptional accuracy, achieving a perfect accuracy rate of 100%.
引用
收藏
页码:57796 / 57805
页数:10
相关论文
共 50 条
  • [1] Lite and Efficient Deep Learning Model for Bearing Fault Diagnosis Using the CWRU Dataset
    Yoo, Yubin
    Jo, Hangyeol
    Ban, Sang-Woo
    SENSORS, 2023, 23 (06)
  • [2] Towards better benchmarking using the CWRU bearing fault dataset
    Hendriks, Jacob
    Dumond, Patrick
    Knox, D. A.
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2022, 169
  • [3] Bearing Fault Diagnosis using Enhanced Envelope Analysis
    Prawin, J.
    e-Journal of Nondestructive Testing, 2022, 27 (11):
  • [4] Bearing Fault Diagnosis Using Machine Learning and Deep Learning Techniques
    Dhanush, N. Sai
    Ambika, P. S.
    FOURTH CONGRESS ON INTELLIGENT SYSTEMS, VOL 1, CIS 2023, 2024, 868 : 309 - 321
  • [5] Bearing Fault Detection and Diagnosis Using Case Western Reserve University Dataset With Deep Learning Approaches: A Review
    Neupane, Dhiraj
    Seok, Jongwon
    IEEE ACCESS, 2020, 8 : 93155 - 93178
  • [6] INTELLIGENT BEARING FAULT DIAGNOSIS METHOD BASED ON HNR ENVELOPE AND CLASSIFICATION USING SUPERVISED MACHINE LEARNING ALGORITHMS
    Ouachtouk, Ilias
    El Hani, Soumia
    Dahi, Khalid
    ADVANCES IN ELECTRICAL AND ELECTRONIC ENGINEERING, 2021, 19 (04) : 282 - 294
  • [7] Fault Diagnosis in Electric Drives using Machine Learning Approaches
    Silva, Andre A.
    Bazzi, Ali M.
    Gupta, Shalabh
    2013 IEEE INTERNATIONAL ELECTRIC MACHINES & DRIVES CONFERENCE (IEMDC), 2013, : 722 - 726
  • [8] Application of order envelope analysis to bearing fault diagnosis
    Li, Hui
    Zheng, Haiqi
    Tang, Liwei
    Jixie Qiandu/Journal of Mechanical Strength, 2007, 29 (03): : 351 - 355
  • [9] Motor bearing fault diagnosis using pattern recognition machine learning technique
    Zimnickas, Tomas
    Vanagas, Jonas
    Kalvaitis, Arturas
    Dambrauskas, Karolis
    ADVANCES IN INFORMATION, ELECTRONIC AND ELECTRICAL ENGINEERING (AIEEE' 2019), 2019,
  • [10] Ball Bearing Fault Diagnosis Using Supervised and Unsupervised Machine Learning Methods
    Vakharia, V.
    Gupta, V. K.
    Kankar, P. K.
    INTERNATIONAL JOURNAL OF ACOUSTICS AND VIBRATION, 2015, 20 (04): : 244 - 250