Mechanical and electrical faults detection in induction motor across multiple sensors with CNN-LSTM deep learning model

被引:2
|
作者
Ertargin, Merve [1 ]
Yildirim, Ozal [2 ]
Orhan, Ahmet [3 ]
机构
[1] Univ Munzur, Dept Elect & Elect Engn, Tunceli, Turkiye
[2] Firat Univ, Dept Artificial Intelligence & Data Engn, Elazig, Turkiye
[3] Firat Univ, Dept Elect & Elect Engn, Elazig, Turkiye
关键词
Induction motor faults; Mechanical and electrical faults classification; Deep learning; CNN-LSTM model; DIAGNOSIS; FUSION;
D O I
10.1007/s00202-024-02420-w
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The utilization of monitoring sensors in machinery has led to the mainstream adoption of fault detection and diagnosis in time series data across various industrial applications. Deep learning techniques, specifically in constructing fault diagnosis models by extracting insights from historical equipment fault data, are receiving widespread attention as crucial tools in ensuring the safety and reliability of motor systems. In this study, a CNN-LSTM-based deep learning model is proposed for the detection of electric motor faults. Three distinct sets of accelerometer sensor data are provided as input to the model, enabling a comprehensive evaluation of its performance across various sensor configurations. The model demonstrated a remarkable capacity for generalization, achieving impressive accuracy rates of 99.96% for Accelerometer-1, 98.88% for Accelerometer-2, and 99.37% for Accelerometer-3. This underscores the robustness and adaptability of the proposed CNN-LSTM model in effectively detecting electric motor faults regardless of the specific accelerometer sensor employed.
引用
收藏
页码:6941 / 6951
页数:11
相关论文
共 50 条
  • [41] DEVELOPMENT OF LSTM&CNN BASED HYBRID DEEP LEARNING MODEL TO CLASSIFY MOTOR IMAGERY TASKS
    Uyulan, Caglar
    COMMUNICATIONS IN MATHEMATICAL BIOLOGY AND NEUROSCIENCE, 2021, : 1 - 26
  • [42] A comprehensive investigation of LSTM-CNN deep learning model for fast detection of combustion instability
    Lyu, Zengyi
    Jia, Xiaowei
    Yang, Yao
    Hu, Keqi
    Zhang, Feifei
    Wang, Gaofeng
    FUEL, 2021, 303 (303)
  • [43] Multi-Input CNN-LSTM deep learning model for fear level classification based on EEG and peripheral physiological signals
    Masuda, Nagisa
    Yairi, Ikuko Eguchi
    FRONTIERS IN PSYCHOLOGY, 2023, 14
  • [44] CNN-LSTM deep learning based forecasting model for COVID-19 infection cases in Nigeria, South Africa and Botswana
    Muhammad, L. J.
    Haruna, Ahmed Abba
    Sharif, Usman Sani
    Mohammed, Mohammed Bappah
    HEALTH AND TECHNOLOGY, 2022, 12 (06) : 1259 - 1276
  • [45] A transfer learning-based CNN and LSTM hybrid deep learning model to classify motor imagery EEG signals
    Khademi, Zahra
    Ebrahimi, Farideh
    Kordy, Hussain Montazery
    Computers in Biology and Medicine, 2022, 143
  • [46] An anti-noise fault diagnosis approach for rolling bearings based on multiscale CNN-LSTM and a deep residual learning model
    Chen, Hongming
    Meng, Wei
    Li, Yongjian
    Xiong, Qing
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2023, 34 (04)
  • [47] 2-D regional short-term wind speed forecast based on CNN-LSTM deep learning model
    Chen, Yaoran
    Wang, Yan
    Dong, Zhikun
    Su, Jie
    Han, Zhaolong
    Zhou, Dai
    Zhao, Yongsheng
    Bao, Yan
    ENERGY CONVERSION AND MANAGEMENT, 2021, 244
  • [48] CNN-LSTM deep learning based forecasting model for COVID-19 infection cases in Nigeria, South Africa and Botswana
    L. J. Muhammad
    Ahmed Abba Haruna
    Usman Sani Sharif
    Mohammed Bappah Mohammed
    Health and Technology, 2022, 12 : 1259 - 1276
  • [49] A transfer learning-based CNN and LSTM hybrid deep learning model to classify motor imagery EEG signals
    Khademi, Zahra
    Ebrahimi, Farideh
    Kordy, Hussain Montazery
    COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 143
  • [50] Real-time AIoT anomaly detection for industrial diesel generator based an efficient deep learning CNN-LSTM in industry 4.0
    Nguyen-Da, Thao
    Nguyen-Thanh, Phuong
    Cho, Ming-Yuan
    INTERNET OF THINGS, 2024, 27