Machine-Learning-Based Diagnosis of an Inverter-Fed Induction Motor
Keywords:
CC, EEMD, IGBT, Inverter, Machine Learning, Open-circuit fault, RMS, Spectral envelopeAbstract
The principal objective of this paper is to detect and automatically monitor switch open-circuit faults in a two-level three-phase voltage source inverter fed induction motor from the processing of its current signals. The proposed diagnostic method uses both signal processing techniques and machine learning techniques in order to detect and localize the switch under an open-circuit fault. First, the Hilbert-Huang transform using the empirical ensemble mode decomposition is employed for each phase current signal, which leads to extracting the intrinsic mode functions. In order to optimally choose the function indicating the open-circuit fault harmonic, two factors, namely, the root mean square and the correlation coefficient are calculated out for each function. In this regard, two criteria are proposed that lead to choose the optimal function giving better information about the defected phase. The spectral envelope of the optimal function permits extra0cting the fault harmonic of the switch. Second, different machine learning techniques are applied to locate and classify the switch open-circuit faults with the hyper-parameters optimization for a better design of the different models. Finally, a comparative study of the different machine learning techniques is carried out for determining the best classifier for the open-circuit faults. The experimental results effectively demonstrate a very high classification rate of 98.98%.
Downloads
References
N. Rajeswaran, M. Swarupa, T. RAO, and al, ʻʻHybrid artificial intelligence based fault diagnosis of svpwm voltage source inverters for induction motor,ʼʼ Materials Today: Proceedings., vol.5, no.1, pp. 565-571, 2018.
Xu, Huaqing, Yanqing Peng, and Lumei Su. "Research on Open Circuit Fault Diagnosis of Inverter Circuit Switching tube Based on Machine Learning Algorithm." IOP Conference Series: Materials Science and Engineering. Vol. 452. No. 4. IOP Publishing, 2018.
C. Bilal Djamal Eddine, B. Azeddine, and T. Mostefa, "Diagnosis of an Inverter IGBT Open-circuit Fault by Hilbert-Huang Transform Application." Traitement Du Signal, vol.36, no.2, pp.127-132, 2019.
F. Calabrese, A. Regattieri, M. Bortolini, M. Gamberi, and F. Pilati, " Predictive Maintenance: A Novel Framework for a Data-Driven, Semi-Supervised, and Partially Online Prognostic Health Management Application in Industries." Applied Sciences, vol. 11, no.8,pp.3380, 2021.
U. Izagirre, I. Andonegui, A. Egea, and U. Zurutuza, "A Methodology and Experimental Implementation for Industrial Robot Health Assessment via Torque Signature Analysis." Applied Sciences, vol.10,no.21,pp.7883, 2020.
C, Vincent, and M Benbouzid. "Induction machine diagnosis using stator current advanced signal processing." International Journal on Energy Conversion,vol.3, no.3, pp.76-87, 2015.
S. Sara, and al. "On the Use of High-resolution Time-frequency Distribution Based on a Polynomial Compact Support Kernel for Fault Detection in a Two-level Inverter." Periodica Polytechnica Electrical Engineering and Computer Science, vol.64, no.4, pp.352-365, 2020.
H. Guoqing, and al. "Time-frequency analysis of nonstationary process based on multivariate empirical mode decomposition." Journal of Engineering Mechanics, vol.142, no.1, pp. 04015065, 2016.
S, M. Mousavi, A, L. Charles. "Automatic noise-removal/signal-removal based on general cross-validation thresholding in synchrosqueezed domain and its application on earthquake data." Geophysics, vol.82, no.4, pp.211-227, 2017.
Y. Yang, Z. Peng, W. Zhang, & G. Meng. "Parameterised time-frequency analysis methods and their engineering applications: A review of recent advances." Mechanical Systems and Signal Processing, vol.119, pp. 182-221, 2019.
L. N. Gueye, J. M. Flaus, and O. Adrot. "Review of machine learning approaches in fault diagnosis applied to iot systems." International Conference on Control, Automation and Diagnosis (ICCAD). IEEE, 2019.
S. Akash, S. Chowdhuri, and S. S. Williamson. "Machine Learning-Based Data-Driven Fault Detection/Diagnosis of Lithium-Ion Battery: A Critical Review." Electronics, vol.10, no.11, pp.1309, 2021.
S. Hassan, and A. Karamodin. "A novel anomaly detection method based on adaptive Mahalanobis-squared distance and one-class kNN rule for structural health monitoring under environmental effects." Mechanical Systems and Signal Processing, vol.140, pp.106495, 2020.
K. S. Mambwe and Y. Sun. "A deep learning method with wrapper based feature extraction for wireless intrusion detection system." Computers & Security, vol.92, pp.101752, 2020.
K. Georgios, E. P. Koumoulos, and C. A. Charitidis. "Classification of mechanism of reinforcement in the fiber-matrix interface: Application of Machine Learning on nanoindentation data." Materials & Design, vol.192, pp.108705, 2020.
Y. Freund, and L. Mason. "The alternating decision tree learning algorithm." In icml, vol.99, pp.124-133, 1999.
Y. Zhendong, and al. "A novel arc fault detection method integrated random forest, improved multi-scale permutation entropy and wavelet packet transform." Electronics, vol.8, no.4, pp.396, 2019.
F.Y. Osisanwo, J. E. T. Akinsola, O. Awodele, J. O. Hinmikaiye, O. Olakanmi and J. Akinjobi. "Supervised machine learning algorithms: classification and comparison. " International Journal of Computer Trends and Technology (IJCTT), vol.48, no.3, pp.128-138. 2017.
H. Jabber, and R. Z. Khan. "Methods to avoid over-fitting and under-fitting in supervised machine learning (comparative study)." Computer Science, Communication and Instrumentation Devices, pp.163-172.
C. Bilal Djamal Eddine and al. "A comparative study between methods of detection and localisation of open-circuit faults in a three phase voltage inverter fed induction motor." International Journal of Modelling, Identification and Control, vol.29, no.4, pp.327-340, 2018.
Z. Zeliang, and al. "A hybrid diagnosis method for inverter open-circuit faults in PMSM drives." CES Transactions on Electrical Machines and Systems, vol.4, no.3, pp.180-189, 2020.
C. Yongqi, and al. "Open-circuit fault diagnosis of traction inverter based on compressed sensing theory." Chinese Journal of Electrical Engineering, vol.6, no.1, pp.52-60, 2020.
R. Jyothi, and al. "Machine learning based multi class fault diagnosis tool for voltage source inverter driven induction motor." Int J Pow Elec & Dri Syst, vol.12.no.2, pp. 1205-1215, 2021.
H. Ran, R. Wang, and G. Zeng. "Fault Diagnosis Method of Power Electronic Converter Based on Broad Learning." Complexity, vol. 2020, 2020.
R. Abdelkader, and K. Abdelhafid. "Rolling bearing fault diagnosis based on improved complete ensemble empirical mode of decomposition with adaptive noise combined with minimum entropy deconvolution." Journal of Vibroengineering, vol.20, no.1, pp.240-257, 2018.
A. Rabah, et al. "Rolling bearing fault diagnosis based on an improved denoising method using the complete ensemble empirical mode decomposition and the optimized thresholding operation." IEEE Sensors Journal, vol.18, no.17, pp.7166-7172, 2018.
M. Fazel, G. A. Nazri, and M. Saif. "A fast fault detection and identification approach in power distribution systems." 2019 International Conference on Power Generation Systems and Renewable Energy Technologies (PGSRET). IEEE, 2019.
I. Miftah, and al. "Detection of the stator winding inter-turn faults in asynchronous and synchronous machines through the correlation between harmonics of the voltage of two magnetic flux sensors." IEEE Transactions on Industry Applications, vol.55, no.3, pp.2682-2689, 2019.
C. Bilal Djamal Eddine, A. Bendiabdellah, and M. Tabbakh. "An Automatic Diagnosis of an Inverter IGBT Open-Circuit Fault Based on HHT-ANN." Electric Power Components and Systems, vol.48, no.6-7, pp.589-602, 2020.
X. Yuqin, and al. "A method for diagnosing mechanical faults of on-load tap changer based on ensemble empirical mode decomposition, volterra model and decision acyclic graph support vector machine." IEEE Access, vol.7, pp.84803-84816, 2019.
H. Fouzi, and al. "An unsupervised monitoring procedure for detecting anomalies in photovoltaic systems using a one-class Support Vector Machine." Solar Energy, vol.179, pp.48-58, 2019.
A. M. Zawad, and al. "Machine learning-based fault diagnosis for single-and multi-faults in induction motors using measured stator currents and vibration signals." IEEE Transactions on Industry Applications, vol.55, no.3, pp.2378-2391, 2019.
A. M. Zawad, and al. "Machine learning based fault diagnosis for single-and multi-faults for induction motors fed by variable frequency drives." 2019 IEEE Industry Applications Society Annual Meeting. IEEE, 2019.
H. Wei, and al. "A Naive-Bayes-based fault diagnosis approach for analog circuit by using image-oriented feature extraction and selection technique." IEEE Access, vol.8, pp.5065-5079, 2019.
J. M. Hatta, et al. "K-nearest neighbor and naïve Bayes based diagnostic analytic of harmonic source identification." Bulletin of Electrical Engineering and Informatics, vol.9, no.6, pp.2650-2657, 2020.
S. Maciej, and al. "Effectiveness of selected neural network structures based on axial flux analysis in stator and rotor winding incipient fault detection of inverter-fed induction motors." Energies, vol.12, no.12, pp.2392, 2019.
H. D. Tang, and H. J. Kang. "A motor current signal-based bearing fault diagnosis using deep learning and information fusion." IEEE Transactions on Instrumentation and Measurement, vol.69, no.6, pp.3325-3333, 2019.
L. Chuang, and al. "Knowledge-based and data-driven approach based fault diagnosis for power-electronics energy conversion system." 2019 IEEE International Conference on Communications, Control, and Computing Technologies for Smart Grids (SmartGridComm). IEEE, 2019.
Ü. Ramazan. "An Assessment of Imbalanced Control Chart Pattern Recognition by Artificial Neural Networks." Artificial Intelligence and Machine Learning Applications in Civil, Mechanical, and Industrial Engineering. IGI Global, pp.240-258, 2020.
M. Feurer, and F.Hutter. " Hyperparameter optimization. " In Automated machine learning, Springer, pp.3-33, 2019.
M. Chouai, M. Merah, J. L. Sancho-Gomez, and M. Mimi. " Comparative study of supervised machine learning color-based segmentation for object detection in X-Ray baggage images for intelligent transportation systems. " In Emerging Trends in ICT for Sustainable Development, Springer, pp. 89-98, 2021.
H. Zhang. " The optimality of Naïve Bayes. " Seventeenth International Florida Artificial Intelligence Research Society Conference (FLAIRS), 2004.