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Published in: Journal of Intelligent Manufacturing 6/2014

01-12-2014

Fault diagnosis in power transformers using multi-class logical analysis of data

Authors: Mohamad-Ali Mortada, Soumaya Yacout, Aouni Lakis

Published in: Journal of Intelligent Manufacturing | Issue 6/2014

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Abstract

This paper presents the implementation of a novel multi-class diagnostic technique for the detection and identification of faults based on an approach called logical analysis of data (LAD). LAD is a data mining, artificial intelligence approach that is based on pattern recognition. In the context of condition based maintenance (CBM), historical data containing condition indices and the state of the machine are the inputs to LAD. After training and testing phases, LAD generates patterns that characterize the faulty states according to the type of fault, and differentiate between these states and the normal state. These patterns are found by solving a mixed 0–1 integer linear programming problem. They are then used to detect and to identify a future unknown state of equipment. The diagnostic technique has already been tested on several known machine learning datasets. The results proved that the performance of this technique is comparable to other conventional approaches, such as neural network and support vector machine, with the added advantage of the clear interpretability of the generated patterns, which are rules characterizing the faults’ types. To demonstrate its merit in fault diagnosis, the technique is used in the detection and identification of faults in power transformers using dissolved gas analysis data. The paper reaches the conclusion that the multi-class LAD based fault detection and identification is a promising diagnostic approach in CBM.

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Literature
go back to reference Abbasion, S., Rafsanjani, A., Farshidianfar, A., & Irani, N. (2007). Rolling element bearings multi-fault classification based on the wavelet denoising and support vector machine. Mechanical Systems and Signal Processing, 21, 2933–2945.CrossRef Abbasion, S., Rafsanjani, A., Farshidianfar, A., & Irani, N. (2007). Rolling element bearings multi-fault classification based on the wavelet denoising and support vector machine. Mechanical Systems and Signal Processing, 21, 2933–2945.CrossRef
go back to reference Abramson, S., Alexe, G., Hammer, P., & Kohn, J. (2005). A computational approach to predicting cell growth on polymeric biomaterials. Journal of Biomedical Materials Research Part A, 73, 116–124.CrossRef Abramson, S., Alexe, G., Hammer, P., & Kohn, J. (2005). A computational approach to predicting cell growth on polymeric biomaterials. Journal of Biomedical Materials Research Part A, 73, 116–124.CrossRef
go back to reference Alexe, G., Alexe, S., Bonates, T., & Kogan, A. (2007). Logical analysis of data-the vision of Peter L. Hammer. Annals of Mathematics and Artificial Intelligence, 49, 265–312.CrossRef Alexe, G., Alexe, S., Bonates, T., & Kogan, A. (2007). Logical analysis of data-the vision of Peter L. Hammer. Annals of Mathematics and Artificial Intelligence, 49, 265–312.CrossRef
go back to reference Alexe, G., Alexe, S., Axelrod, D., Bonates, T., Lozina, I., Reiss, M., et al. (2006). Breast cancer prognosis by combinatorial analysis of gene expression data. Breast Cancer Research, 8, R41.CrossRef Alexe, G., Alexe, S., Axelrod, D., Bonates, T., Lozina, I., Reiss, M., et al. (2006). Breast cancer prognosis by combinatorial analysis of gene expression data. Breast Cancer Research, 8, R41.CrossRef
go back to reference Alexe, G., Alexe, S., Axelrod, D., Hammer, P., & Weissmann, D. (2005). Logical analysis of diffuse large B-cell lymphomas. Artificial Intelligence in Medicine, 34, 235–267.CrossRef Alexe, G., Alexe, S., Axelrod, D., Hammer, P., & Weissmann, D. (2005). Logical analysis of diffuse large B-cell lymphomas. Artificial Intelligence in Medicine, 34, 235–267.CrossRef
go back to reference Alexe, G., Alexe, S., Liotta, L., Petricoin, E., Reiss, M., & Hammer, P. (2004). Ovarian cancer detection by logical analysis of proteomic data. Proteomics, 4, 766–783.CrossRef Alexe, G., Alexe, S., Liotta, L., Petricoin, E., Reiss, M., & Hammer, P. (2004). Ovarian cancer detection by logical analysis of proteomic data. Proteomics, 4, 766–783.CrossRef
go back to reference Almuallim, H., & Dietterich, T. (1994). Learning boolean concepts in the presence of many irrelevant features. Artificial Intelligence, 69, 279–305.CrossRef Almuallim, H., & Dietterich, T. (1994). Learning boolean concepts in the presence of many irrelevant features. Artificial Intelligence, 69, 279–305.CrossRef
go back to reference Bennane, A., & Yacout, S. (2012). LAD-CBM; new data processing tool for diagnosis and prognosis in condition-based maintenance. Journal of Intelligent Manufacturing, 23, 265–275.CrossRef Bennane, A., & Yacout, S. (2012). LAD-CBM; new data processing tool for diagnosis and prognosis in condition-based maintenance. Journal of Intelligent Manufacturing, 23, 265–275.CrossRef
go back to reference Berkelaar, M., Eikland, K., & Notebaert, P. (2004), Lp solve, open source (mixed-integer) linear programming system. In (GNU LGPL (Lesser General Public Licence) Version 5.5. Berkelaar, M., Eikland, K., & Notebaert, P. (2004), Lp solve, open source (mixed-integer) linear programming system. In (GNU LGPL (Lesser General Public Licence) Version 5.5.
go back to reference Boros, E., Crama, Y., Hammer, P., Ibaraki, T., Kogan, A., & Makino, K. (2009). Logical analysis of data: Classification with justification. Rutcor Research Report, RRR 5-2009. Boros, E., Crama, Y., Hammer, P., Ibaraki, T., Kogan, A., & Makino, K. (2009). Logical analysis of data: Classification with justification. Rutcor Research Report, RRR 5-2009.
go back to reference Boros, E., Hammer, P., Ibaraki, T., Kogan, A., Mayoraz, E., & Muchnik, I. (2000). An implementation of logical analysis of data. IEEE Transactions on Knowledge and Data Engineering, 12, 292–306.CrossRef Boros, E., Hammer, P., Ibaraki, T., Kogan, A., Mayoraz, E., & Muchnik, I. (2000). An implementation of logical analysis of data. IEEE Transactions on Knowledge and Data Engineering, 12, 292–306.CrossRef
go back to reference Christian, K., Mureithi, N., Lakis, A., & Thomas, M. (2007). On the use of time synchronous averaging, independent component analysis and support vector machines for bearing fault diagnosis. In First international conference on industrial risk engineering, Montreal Christian, K., Mureithi, N., Lakis, A., & Thomas, M. (2007). On the use of time synchronous averaging, independent component analysis and support vector machines for bearing fault diagnosis. In First international conference on industrial risk engineering, Montreal
go back to reference Duval, M., & DePablo, A. (2001). Interpretation of gas-in-oil analysis using new IEC publication 60599 and IEC TC 10 databases. IEEE Electrical Insulation Magazine, 17, 31–41.CrossRef Duval, M., & DePablo, A. (2001). Interpretation of gas-in-oil analysis using new IEC publication 60599 and IEC TC 10 databases. IEEE Electrical Insulation Magazine, 17, 31–41.CrossRef
go back to reference Hand, D. J. (1999). Statistics and data mining: Intersecting disciplines. SICKDD Explorations, 1(1), 16–19.CrossRef Hand, D. J. (1999). Statistics and data mining: Intersecting disciplines. SICKDD Explorations, 1(1), 16–19.CrossRef
go back to reference Hammer, P., Kogan, A., Simeone, B., & Szedmák, S. (2004). Pareto-optimal patterns in logical analysis of data. Discrete Applied Mathematics, 144, 79–102.CrossRef Hammer, P., Kogan, A., Simeone, B., & Szedmák, S. (2004). Pareto-optimal patterns in logical analysis of data. Discrete Applied Mathematics, 144, 79–102.CrossRef
go back to reference Heathcote, M. (2007). The J & P transformer book: A practical technology of the power transformer. Amsterdam: Elsevier. Heathcote, M. (2007). The J & P transformer book: A practical technology of the power transformer. Amsterdam: Elsevier.
go back to reference Hu, W., Starr, A., Zhou, Z., & Leung, A. (2001). An intelligent integrated system scheme for machine tool diagnostics. The International Journal of Advanced Manufacturing Technology, 18, 836–841.CrossRef Hu, W., Starr, A., Zhou, Z., & Leung, A. (2001). An intelligent integrated system scheme for machine tool diagnostics. The International Journal of Advanced Manufacturing Technology, 18, 836–841.CrossRef
go back to reference Jamaludin, N., Mba, D., & Bannister, R. (2001). Condition monitoring of slow-speed rolling element bearings using stress waves. Proceedings of the Institution of Mechanical Engineers, Part E: Journal of Process Mechanical Engineering, 215, 245–271.CrossRef Jamaludin, N., Mba, D., & Bannister, R. (2001). Condition monitoring of slow-speed rolling element bearings using stress waves. Proceedings of the Institution of Mechanical Engineers, Part E: Journal of Process Mechanical Engineering, 215, 245–271.CrossRef
go back to reference Jardine, A., Lin, D., & Banjevic, D. (2006). A review on machinery diagnostics and prognostics implementing condition-based maintenance. Mechanical Systems and Signal Processing, 20, 1483–1510.CrossRef Jardine, A., Lin, D., & Banjevic, D. (2006). A review on machinery diagnostics and prognostics implementing condition-based maintenance. Mechanical Systems and Signal Processing, 20, 1483–1510.CrossRef
go back to reference Li, Z., Wu, Z., He, Y., & Fulei, C. (2005). Hidden Markov model-based fault diagnostics method in speed-up and speed-down process for rotating machinery. Mechanical Systems and Signal Processing, 19, 329–339.CrossRef Li, Z., Wu, Z., He, Y., & Fulei, C. (2005). Hidden Markov model-based fault diagnostics method in speed-up and speed-down process for rotating machinery. Mechanical Systems and Signal Processing, 19, 329–339.CrossRef
go back to reference Lim, T., Loh, W., & Shih, Y. (2000). A comparison of prediction accuracy, complexity, and training time of thirty-three old and new classification algorithms. Machine Learning, 40, 203–228.CrossRef Lim, T., Loh, W., & Shih, Y. (2000). A comparison of prediction accuracy, complexity, and training time of thirty-three old and new classification algorithms. Machine Learning, 40, 203–228.CrossRef
go back to reference Lv, G., Cheng, H., Zhai, H., & Dong, L. (2005). Fault diagnosis of power transformer based on multi-layer SVM classifier. Electric Power Systems Research, 75, 9–15.CrossRef Lv, G., Cheng, H., Zhai, H., & Dong, L. (2005). Fault diagnosis of power transformer based on multi-layer SVM classifier. Electric Power Systems Research, 75, 9–15.CrossRef
go back to reference Ma, J., & Li, J. (1995). Detection of localised defects in rolling element bearings via composite hypothesis test. Mechanical Systems and Signal Processing, 9, 63–75. Ma, J., & Li, J. (1995). Detection of localised defects in rolling element bearings via composite hypothesis test. Mechanical Systems and Signal Processing, 9, 63–75.
go back to reference Mayoraz, E., & Moreira, M. (1996). On the decomposition of polychotomies into dichotomies. Internal report, University of Rutgers, RUTCOR Mayoraz, E., & Moreira, M. (1996). On the decomposition of polychotomies into dichotomies. Internal report, University of Rutgers, RUTCOR
go back to reference Moreira, L. (2000). The use of Boolean concepts in general classification contexts. Lausanne: École Polytechnique Fédérale De Lausanne. Moreira, L. (2000). The use of Boolean concepts in general classification contexts. Lausanne: École Polytechnique Fédérale De Lausanne.
go back to reference Mortada, M., Carroll, T., & Yacout, S. (2012). Rogue components: Their effect and control using logical analysis of data. Journal of Intelligent Manufacturing, 23(2), 289–302.CrossRef Mortada, M., Carroll, T., & Yacout, S. (2012). Rogue components: Their effect and control using logical analysis of data. Journal of Intelligent Manufacturing, 23(2), 289–302.CrossRef
go back to reference Mortada, M. (2010). Applicability and interpretability of logical analysis of data in condition based maintenance. Doctoral Thesis. École Polytechnique de Montréal. Mortada, M. (2010). Applicability and interpretability of logical analysis of data in condition based maintenance. Doctoral Thesis. École Polytechnique de Montréal.
go back to reference Ocak, H., Loparo, K. (2001). A new bearing fault detection and diagnosis scheme based on hidden Markov modeling of vibration signals. In IEEE international conference on acoustic speech signal processing citeseer, pp. 3141–3144. Ocak, H., Loparo, K. (2001). A new bearing fault detection and diagnosis scheme based on hidden Markov modeling of vibration signals. In IEEE international conference on acoustic speech signal processing citeseer, pp. 3141–3144.
go back to reference Quinlan, J. (1993). C4. 5: Programs for machine learning. San Mateo: Morgan Kaufmann. Quinlan, J. (1993). C4. 5: Programs for machine learning. San Mateo: Morgan Kaufmann.
go back to reference Ryoo, H., & Jang, I. (2009). MILP approach to pattern generation in logical analysis of data. Discrete Applied Mathematics, 157, 749–761.CrossRef Ryoo, H., & Jang, I. (2009). MILP approach to pattern generation in logical analysis of data. Discrete Applied Mathematics, 157, 749–761.CrossRef
go back to reference Saitta, S., Raphael, B., & Smith, I. (2005). Data mining techniques for improving the reliability of system identification. Advanced Engineering Informatics, 19, 289–298.CrossRef Saitta, S., Raphael, B., & Smith, I. (2005). Data mining techniques for improving the reliability of system identification. Advanced Engineering Informatics, 19, 289–298.CrossRef
go back to reference Salamanca, D., & Yacout, S. (2007). Condition based maintenance with logical analysis of data. In 7e Congrès International de genie industriel, Quebec. Salamanca, D., & Yacout, S. (2007). Condition based maintenance with logical analysis of data. In 7e Congrès International de genie industriel, Quebec.
go back to reference Saxena, A., & Saad, A. (2004). Fault diagnosis in rotating mechanical systems using self-organizing maps. Artificial Neural Networks in Engineering (ANNIE04). Saxena, A., & Saad, A. (2004). Fault diagnosis in rotating mechanical systems using self-organizing maps. Artificial Neural Networks in Engineering (ANNIE04).
go back to reference Spoerre, J. (1997). Application of the cascade correlation algorithm (CCA) to bearing fault classification problems. Computers in Industry, 32, 295–304.CrossRef Spoerre, J. (1997). Application of the cascade correlation algorithm (CCA) to bearing fault classification problems. Computers in Industry, 32, 295–304.CrossRef
go back to reference Staszewski, W., Worden, K., & Tomlinson, G. (1997). Time-frequency analysis in gearbox fault detection using the Wigner-Ville distribution and pattern recognition. Mechanical Systems and Signal Processing, 11, 673–692.CrossRef Staszewski, W., Worden, K., & Tomlinson, G. (1997). Time-frequency analysis in gearbox fault detection using the Wigner-Ville distribution and pattern recognition. Mechanical Systems and Signal Processing, 11, 673–692.CrossRef
go back to reference Subrahmanyam, M., & Sujatha, C. (1997). Using neural networks for the diagnosis of localized defects in ball bearings. Tribology International, 30, 739–752.CrossRef Subrahmanyam, M., & Sujatha, C. (1997). Using neural networks for the diagnosis of localized defects in ball bearings. Tribology International, 30, 739–752.CrossRef
go back to reference Widodo, A., Yang, B., & Han, T. (2007). Combination of independent component analysis and support vector machines for intelligent faults diagnosis of induction motors. Expert Systems with Applications, 32, 299–312.CrossRef Widodo, A., Yang, B., & Han, T. (2007). Combination of independent component analysis and support vector machines for intelligent faults diagnosis of induction motors. Expert Systems with Applications, 32, 299–312.CrossRef
go back to reference Wu, S., & Chow, T. (2004). Induction machine fault detection using SOM-based RBF neural networks. IEEE Transactions on Industrial Electronics, 51, 183–194.CrossRef Wu, S., & Chow, T. (2004). Induction machine fault detection using SOM-based RBF neural networks. IEEE Transactions on Industrial Electronics, 51, 183–194.CrossRef
go back to reference Xu, Y., & Ge, M. (2004). Hidden Markov model-based process monitoring system. Journal of Intelligent Manufacturing, 15, 337–350.CrossRef Xu, Y., & Ge, M. (2004). Hidden Markov model-based process monitoring system. Journal of Intelligent Manufacturing, 15, 337–350.CrossRef
go back to reference Yacout, S. (2010). Fault detection and diagnosis for condition based maintenance using logical analysis of data. In The 40th international conference on computers and industrial engineering. Yacout, S. (2010). Fault detection and diagnosis for condition based maintenance using logical analysis of data. In The 40th international conference on computers and industrial engineering.
go back to reference Yam, R., Tse, P., Li, L., & Tu, P. (2001). Intelligent predictive decision support system for condition-based maintenance. The International Journal of Advanced Manufacturing Technology, 17, 383–391.CrossRef Yam, R., Tse, P., Li, L., & Tu, P. (2001). Intelligent predictive decision support system for condition-based maintenance. The International Journal of Advanced Manufacturing Technology, 17, 383–391.CrossRef
Metadata
Title
Fault diagnosis in power transformers using multi-class logical analysis of data
Authors
Mohamad-Ali Mortada
Soumaya Yacout
Aouni Lakis
Publication date
01-12-2014
Publisher
Springer US
Published in
Journal of Intelligent Manufacturing / Issue 6/2014
Print ISSN: 0956-5515
Electronic ISSN: 1572-8145
DOI
https://doi.org/10.1007/s10845-013-0750-1

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