Gear Fault Detection using Machine Learning Techniques- A Simulation-driven Approach

被引:4
|
作者
Handikherkar, V. C. [1 ]
Phalle, V. M. [1 ]
机构
[1] Veermata Jijabai Technol Inst VJTI, Dept Mech Engn, Mumbai, Maharashtra, India
来源
INTERNATIONAL JOURNAL OF ENGINEERING | 2021年 / 34卷 / 01期
关键词
Machine Learning; Simulated Data; Vibration Analysis; Gear Fault Diagnosis; Condition Monitoring; ARTIFICIAL NEURAL-NETWORKS; SPUR GEAR; FEATURE-EXTRACTION; GENETIC ALGORITHM; DIAGNOSIS; DYNAMICS; SYSTEM;
D O I
10.5829/ije.2021.34.01a.24
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine Learning (ML) based condition monitoring and fault detection of industrial equipment is the current scenario for maintenance in the era of Industry-4.0. The application of ML techniques for automatic fault detection minimizes the unexpected breakdown of the system. However, these techniques heavily rely on the historical data of equipment for its training which limits its widespread application in industry. As the historical data is not available for each industrial machine and generating the data experimentally for each fault condition is not viable. Therefore, this challenge is addressed for gear application with tooth defect. In this paper, ML algorithms are trained using simulated vibration data of the gearbox and tested with the experimental data. Simulated data is generated for the gearbox with different operating and fault conditions. A gearbox dynamic model is utilized to generate simulated vibration data for normal and faulty gear condition. A pink noise is added to simulated data to improve the exactness to the actual field data. Further, these simulated-data are processed using Empirical Mode Decomposition and Discrete Wavelet Transform, and features are extracted. These features are then fed to the training of different well-established ML techniques such as Support Vector Machine, Random Forest and Multi-Layer Perceptron. To validate this approach, trained ML algorithms are tested using experimental data. The results show more than 87% accuracy with all three algorithms. The performance of the trained model is evaluated using precision, recall and ROC curve. These metric show the affirmative results for the applicability of this approach in gear fault detection.
引用
收藏
页码:212 / 223
页数:12
相关论文
共 50 条
  • [1] Gear fault detection using machine learning techniques- a simulation-driven approach
    Handikherkar V.C.
    Phalle V.M.
    International Journal of Engineering, Transactions A: Basics, 2021, 34 (01): : 212 - 223
  • [2] Simulation-driven machine learning: Bearing fault classification
    Sobie, Cameron
    Freitas, Carina
    Nicolai, Mike
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2018, 99 : 403 - 419
  • [3] Simulation-driven fault detection for the gear transmission system in major equipment
    Zhang, Yan
    Wang, Xifeng
    Wu, Zhe
    Gong, Yu
    Li, Jinfeng
    Dong, Wenhui
    MEASUREMENT & CONTROL, 2024, 57 (09): : 1268 - 1285
  • [4] Simulation-driven machine learning for robotics and automation
    El-Shamouty, Mohamed
    Kleeberger, Kilian
    Laemmle, Arik
    Huber, Marco
    TM-TECHNISCHES MESSEN, 2019, 86 (11) : 673 - 684
  • [5] Machine-Learning in Simulation-Driven Optimization
    Tenne, Yoel
    2016 INTERNATIONAL CONFERENCE ON COMPUTATIONAL MODELING, SIMULATION AND APPLIED MATHEMATICS (CMSAM 2016), 2016, : 32 - 36
  • [6] Cloud Network Anomaly Detection Using Machine and Deep Learning Techniques- Recent Research Advancements
    Abdallah, Amira Mahamat
    Alkaabi, Aysha
    Alameri, Ghaya
    Rafique, Saida Hafsa
    Musa, Nura Shifa
    Murugan, Thangavel
    IEEE ACCESS, 2024, 12 : 56749 - 56773
  • [7] Dynamics simulation-driven fault diagnosis of rolling bearings using security transfer support matrix machine
    Li, Xin
    Li, Shuhua
    Wei, Dong
    Si, Lei
    Yu, Kun
    Yan, Ke
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2024, 243
  • [8] Detection of High Impedance Fault using Machine Learning Techniques
    Shihabudheen, K., V
    Kunju, Bijuna
    Ahammed, Imthias
    Guruvarurappan, Akshay
    Jose, Jibin
    Keerthana, D.
    Revathi, P. B.
    PROCEEDINGS OF THE 2019 IEEE REGION 10 CONFERENCE (TENCON 2019): TECHNOLOGY, KNOWLEDGE, AND SOCIETY, 2019, : 2117 - 2122
  • [9] Fault Detection in LDPE Process using Machine Learning Techniques
    Lee, Changsong
    Lee, Kyu-Hwang
    Lee, Hokyung
    KOREAN CHEMICAL ENGINEERING RESEARCH, 2020, 58 (02): : 224 - 229
  • [10] DETECTION OF TYPICAL MANUFACTURING ERRORS IN EXTERNAL GEAR MACHINES USING NUMERICAL SIMULATION AND DATA DRIVEN MACHINE LEARNING
    Borriello, Pasquale
    Pawar, Ajinkya
    Frosina, Emma
    Tessicini, Fabrizio
    Vacca, Andrea
    Senatore, Adolfo
    PROCEEDINGS OF ASME/BATH 2023 SYMPOSIUM ON FLUID POWER AND MOTION CONTROL, FPMC2023, 2023,