Faults' Diagnosis of Time-Varying Rotational Speed Machinery Based on Vibration and Acoustic Signals Features Extraction, and Machine Learning Methods

被引:2
|
作者
Bettahar, Toufik [1 ]
Chemseddine, Rahmoune [1 ]
Benazzouz, Djamel [1 ]
机构
[1] Mhamed Bougara Univ Boumerdes, Solid Mech & Syst Lab LMSS, Boumerdes 35000, Algeria
关键词
Electromechanical systems; Faults diagnosis; Vibration and acoustic signals; Feature extraction; Machine learning; Classification; Stability;
D O I
10.1007/s42417-022-00705-7
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Purpose Many industrial fields count, these days, on data collection as a backup source for machinery condition monitoring to increase their equipment safety, reduce maintenance costs, avoid eventual damages and minimize operational downtime. In electromechanical systems, generated signals such as vibrations, acoustics, electrical current, and thermal images are considered a sensitive and a loaded source of information about the equipment's health condition. Despite its acquisition, these data had shown a direct dependence to their nature and need further steps to be adequately analyzed and ready to be used as a decision making reliable support. Hence, signal processing methods are usually used to identify the current state of the system. However, these techniques had shown some limitations, especially for varying rotating speed, noisy environment where filtering is required or when defects are in their early stages. These constrains led to the research community to consider further developed methods to deal with such issues. Methods Feature extraction based on the maximal overlap discrete wavelet packet transform MODWPT is known for its ability to decompose the raw signal into several intrinsic ones on which features will be extracted. That is why it is employed as a first expertise step on both vibration and acoustic signals. Machine learning techniques (KNN, DT, ET, RF, and SVM) are then implemented to diagnose and differentiate between different types of faults in time-varying rotational speed machines and to compare the outcomes of vibration and acoustic signals in this matter. Results The obtained results demonstrated the superiority of vibration signal's outcome over acoustic signal. Machine learning classifiers had yielded higher stability (STD = 0) and accuracy (100%) for ET and RF when fed with vibration signal's features. However, an STD of 0.005976 and an accuracy of 99.9433% were the best obtained results from SVM when fed with acoustic signal's features. Conclusion Machine learning methods had proven their efficiency in time-varying machines fault diagnosis when taking vibration and acoustic signals extracted features as inputs. However, the use of vibration signal's features demonstrated a higher robustness and a remarkable superiority.
引用
收藏
页码:2333 / 2347
页数:15
相关论文
共 50 条
  • [41] Fault diagnosis of discrete linear time-varying system based on iterative learning
    Cao, Wei
    Cong, Wang
    Li, Jin
    Guo, Yuan
    Kongzhi yu Juece/Control and Decision, 2013, 28 (01): : 137 - 140
  • [42] Adversarial-Causal Representation Learning Networks for Machine fault diagnosis under unseen conditions based on vibration and acoustic signals
    Wu, Fei
    Xiang, Zhuohang
    Xiao, Dengyu
    Hao, Yaodong
    Qin, Yi
    Pu, Huayan
    Luo, Jun
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2025, 139
  • [43] Machine learning based iterative learning control for non-repetitive time-varying systems
    Chen, Yiyang
    Jiang, Wei
    Charalambous, Themistoklis
    INTERNATIONAL JOURNAL OF ROBUST AND NONLINEAR CONTROL, 2023, 33 (07) : 4098 - 4116
  • [44] A methodological approach for detecting multiple faults in wind turbine blades based on vibration signals and machine learning
    Ogaili, Ahmed Ali Farhan
    Jaber, Alaa Abdulhady
    Hamzah, Mohsin Noori
    CURVED AND LAYERED STRUCTURES, 2023, 10 (01):
  • [45] Reinforcement Learning-Based Adaptive Transmission in Time-Varying Underwater Acoustic Channels
    Wang, Chaofeng
    Wang, Zhaohui
    Sun, Wensheng
    Fuhrmann, Daniel R.
    IEEE ACCESS, 2018, 6 : 2541 - 2558
  • [46] A Comparison of Machine Learning Methods for the Diagnosis of Motor Faults Using Automated Spectral Feature Extraction Technique
    Muhammad Irfan
    Abdullah Saeed Alwadie
    Faisal AlThobiani
    Khurram Shehzad Quraishi
    Mohammed Jalalah
    Ali Abbass
    Saifur Rahman
    Mohammad Kamal Asif Khan
    Samar Alqhtani
    Journal of Nondestructive Evaluation, 2022, 41
  • [47] A Comparison of Machine Learning Methods for the Diagnosis of Motor Faults Using Automated Spectral Feature Extraction Technique
    Irfan, Muhammad
    Alwadie, Abdullah Saeed
    AlThobiani, Faisal
    Quraishi, Khurram Shehzad
    Jalalah, Mohammed
    Abbass, Ali
    Rahman, Saifur
    Khan, Mohammad Kamal Asif
    Alqhtani, Samar
    JOURNAL OF NONDESTRUCTIVE EVALUATION, 2022, 41 (02)
  • [48] Vibration analysis of a deep groove ball bearing with localized and distributed faults subject to waviness based on an improved model under time-varying speed condition
    Cheng, Xiaohan
    Wang, Aiming
    Yang, Hui
    Zhang, Tao
    Cao, Congjie
    Wu, Guangqiang
    JOURNAL OF VIBRATION AND CONTROL, 2023, 29 (13-14) : 3259 - 3274
  • [49] Reconstruction of geodetic time series with missing data and time-varying seasonal signals using Gaussian process for machine learning
    Keke Xu
    Shaobin Hu
    Shuanggen Jin
    Jun Li
    Wei Zheng
    Jian Wang
    Yongzhen Zhu
    Kezhao Li
    Ankang Ren
    Yifu Liu
    GPS Solutions, 2024, 28
  • [50] Reconstruction of geodetic time series with missing data and time-varying seasonal signals using Gaussian process for machine learning
    Xu, Keke
    Hu, Shaobin
    Jin, Shuanggen
    Li, Jun
    Zheng, Wei
    Wang, Jian
    Zhu, Yongzhen
    Li, Kezhao
    Ren, Ankang
    Liu, Yifu
    GPS SOLUTIONS, 2024, 28 (02)