Hostname: page-component-78c5997874-94fs2 Total loading time: 0 Render date: 2024-11-19T05:43:00.921Z Has data issue: false hasContentIssue false

Decent fault classification of VFD fed induction motor using random forest algorithm

Published online by Cambridge University Press:  20 July 2020

Parth Sarathi Panigrahy*
Affiliation:
Department of Electrical and Electronics Engineering, Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India
Deepjyoti Santra
Affiliation:
Department of Electrical Engineering, Global Institute of Management and Technology, Krishnanagar, West Bengal, India
Paramita Chattopadhyay
Affiliation:
Department of Electrical Engineering, Indian Institute of Engineering Science and Technology, Shibpur, West Bengal, India
*
Author for correspondence: Parth Sarathi Panigrahy, E-mail: [email protected]

Abstract

A data-driven approach for multiclass fault diagnosis of drive fed induction motor (IM) using stator current at steady-state condition is a complex pattern classification problem. The applied DWT-IDWT algorithm in this work is reinforced by a novel selection criterion for mother wavelet application and justifies the originality of the work. This investigation has exploited the built-in feature selection process of Random Forest (RF) classifier to resolve the most challenging issues in this area, including bearing and stator fault detection. RF has shown an outstanding performance without application of any feature selection technique because of its distributive feature model. The robustness of the results backed by the experimental verification shows an encouraging future of RF as a classifier in the area of intelligent fault diagnosis of IM.

Type
Research Article
Copyright
Copyright © The Author(s), 2020. Published by Cambridge University Press

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

References

Alag, S, Agogino, A and Morjaria, M (2001) A methodology for intelligent sensor measurement, validation, fusion, and fault detection for equipment monitoring and diagnostics. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 15, 307320.CrossRefGoogle Scholar
Antonino, J, Riera, M, Roger-Folch, J and Molina, MP (2006) Validation of a new method for the diagnosis of rotor bar failures via wavelet transform in industrial induction machines. IEEE Transactions on Industry Applications 42, 990996.CrossRefGoogle Scholar
Arlot, S and Celisse, A (2010) A survey of cross-validation procedures for model selection. Statistics Surveys 4, 4079.CrossRefGoogle Scholar
Cabal-Yepez, E, Garcia-Ramirez, AG, Romero-Troncoso, RJ, Garcia-Perez, A and Osornio-Rios, RA (2013) Reconfigurable monitoring system for time-frequency analysis on industrial equipment through STFT and DWT. IEEE Transactions on Industrial Informatics Information 9, 760771.CrossRefGoogle Scholar
Garcia-Perez, A, Romero-Troncoso, R, Cabal-Yepez, E, Osornio-Rios, R, Rangel-Magdaleno, J and Miranda, H (2011) Startup current analysis of incipient broken rotor bar in induction motors using high-resolution spectral analysis. In 8th IEEE Symposium on Diagnostics for Electrical Machines, Power Electronics & Drives, Bologna, Italy. IEEE, pp. 657–663.CrossRefGoogle Scholar
Garcia-Ramirez, AG, Osornio-Rios, RA, Granados-Lieberman, D, Garcia-Perez, A and Romero-Troncoso, RJ (2012) Smart sensor for online detection of multiple-combined faults in VSD-fed induction motors. Sensors (Basel) 12, 1198912005.CrossRefGoogle Scholar
Hira, Z and Gillies, D (2015) A review of feature selection and feature extraction methods applied on microarray data. Advances in Bioinformatics 2015, 113.CrossRefGoogle ScholarPubMed
Jawadekar, A, Paraskar, S, Jadhav, S and Dhole, G (2014) Artificial neural network-based induction motor fault classifier using continuous wavelet transform. Systems Science & Control Engineering 2, 684690.CrossRefGoogle Scholar
Kantardzic, M (2011) Data Mining: Concepts, Models, Methods, and Algorithms. Hoboken: John Wiley & Sons.CrossRefGoogle Scholar
Khalid, S, Khalil, T and Nasreen, S (2014) A survey of feature selection and feature extraction techniques in machine learning. In 2014 Science and Information Conference, pp. 372–378.CrossRefGoogle Scholar
Knight, A and Bertani, S (2005) Mechanical fault detection in a medium-sized induction motor using stator current monitoring. IEEE Transactions on Energy Conversion 20, 753760.CrossRefGoogle Scholar
Konar, P and Chattopadhyay, P (2011) Bearing fault detection of induction motor using wavelet and Support Vector Machines (SVMs). Applied Soft Computing 11, 42034211.CrossRefGoogle Scholar
Konar, P, Panigrahy, P and Chattopadhyay, P (2015) Tri-axial vibration analysis using data mining for multi class fault diagnosis in induction motor. In Prasath, R, Vuppala, A and Kathirvalavakumar, T (eds), Mining Intelligence and Knowledge Exploration, LNCS Vol. 9468. Cham: Springer, pp. 553562.CrossRefGoogle Scholar
Liu, Q and Wang, H (2001) A case study on multisensor data fusion for imbalance diagnosis of rotating machinery. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 15, 203210.CrossRefGoogle Scholar
Mallat, S (2009) A Wavelet Tour of Signal Processing. Amsterdam: Elsevier/Academic Press.Google Scholar
Mehrjou, M, Mariun, N, Karami, M, Noor, S, Zolfaghari, S, Misron, N, Kadir, M, Radzi, M and Marhaban, M (2015) Wavelet-based analysis of MCSA for fault detection in electrical machine, wavelet transform and some of its real-world applications. In Baleanu, D (ed.), IntechOpen. Available at: https://www.intechopen.com/books/wavelet-transform-and-some-of-its-real-world-applications/wavelet-based-analysis-of-mcsa-for-fault-detection-in-electrical-machine (accessed April 9, 2019).Google Scholar
Mukhopadhyay, A, Maulik, U, Bandyopadhyay, S and Coello, C (2014) A survey of multiobjective evolutionary algorithms for data mining: part I. IEEE Transactions on Evolutionary Computation 18, 419.CrossRefGoogle Scholar
Nandi, S, Toliyat, H and Li, X (2005) Condition monitoring and fault diagnosis of electrical motors—a review. IEEE Transactions on Energy Conversion 20, 719729.CrossRefGoogle Scholar
Ordaz-Moreno, A, Romero-Troncoso, R, Vite-Frias, JA, Rivera-Gillen, JR and Garcia-Perez, A (2008) Automatic online diagnosis algorithm for broken-bar detection on induction motors based on discrete wavelet transform for FPGA implementation. IEEE Transactions on Industrial Electronics 55, 21932202.CrossRefGoogle Scholar
Panigrahy, P and Chattopadhyay, P (2018) Cascaded signal processing approach for motor fault diagnosis. COMPEL – The International Journal for Computation and Mathematics in Electrical and Electronic Engineering 37, 21222137.CrossRefGoogle Scholar
Panigrahy, P, Mitra, S, Konar, P and Chattopadhyay, P (2016) FPGA friendly fault detection technique for drive fed induction motor. In 2nd International Conference on Control, Instrumentation, Energy & Communication (CIEC), Kolkata, India. IEEE, pp. 299–303.CrossRefGoogle Scholar
Rafiee, J, Rafiee, M and Tse, P (2010) Application of mother wavelet functions for automatic gear and bearing fault diagnosis. Expert Systems with Applications 37, 45684579.CrossRefGoogle Scholar
Romero-Troncoso, R, Saucedo-Gallaga, R, Cabal-Yepez, E, Garcia-Perez, A, Osornio-Rios, R, Alvarez-Salas, R, Miranda-Vidales, H and Huber, N (2011) FPGA-based online detection of multiple combined faults in induction motors through information entropy and fuzzy inference. IEEE Transactions on Industrial Electronics 58, 52635270.CrossRefGoogle Scholar
Tyagi, S and Panigrahi, S (2017) An SVM—ANN hybrid classifier for diagnosis of gear fault. Applied Artificial Intelligence 31, 209231.CrossRefGoogle Scholar
Wang, P and Vachtsevanos, G (2001) Fault prognostics using dynamic wavelet neural networks. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 15, 349365.CrossRefGoogle Scholar
Xue, B, Zhang, M, Browne, W and Yao, X (2016) A survey on evolutionary computation approaches to feature selection. IEEE Transactions on Evolutionary Computation 20, 606626.CrossRefGoogle Scholar
Zhang, P, Du, Y, Habetler, T and Lu, B (2011) A survey of condition monitoring and protection methods for medium-voltage induction motors. IEEE Transactions on Industry Applications 47, 3446.CrossRefGoogle Scholar
Zhang, H, Li, Q, Liu, J, Shang, J, Du, X, McNairn, H, Champagne, C, Dong, T and Liu, M (2017) Image classification using RapidEye data: integration of spectral and textual features in a random forest classifier. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 10, 53345349.CrossRefGoogle Scholar