The Compare of Transformer Fault Diagnosis Based on Feature Selection and Parameter Optimization and Fuzzy Reasoning Spiking Neural P Systems

  • Mehdi Shokri Asrami
  • Ebrahim Akbari
Keywords: Fault Diagnosis, Transformer, Parameter Optimization, Feature Selection

Abstract

Nowadays, Due to existing complexity and changing organizations using accurate and modern tools is compulsory needed on performing the maintenance strategies. Human's improvements during last decades about gathering and storage the results and data cause the organizations have a huge dimension of data related to maintenance. Detection techniques based on dissolved gas analysis (DGA) have been developed to early fault detection in power transformers. Transformer, as one of the most important parts in power supply system, can put the reliability of power supply and the safe operation of electrical system in an entire electricity network into a great danger. Making decision on the strategy requires knowledge that matches reality maintenance organization. On the other hand, it requires a good knowledge and proper analysis of data used. So using data and information and applying them during the strategic follow-up implementation mainstream for Histological maintenance and repair are of great importance. The purpose of current paper is based on a review of 35 refereed article and dissertation that focused on transformer fault diagnosis based on feature selection.

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Author Biographies

Mehdi Shokri Asrami

Department of Information Technology , Faculty of Computer Science and Multimedia in
Lincoln University College, Malaysia, Branch Iran

Ebrahim Akbari

Department of Computer Engineering, Sari Branch, Islamic Azad University, Sari, Iran

References

Afiqah, R.N., Musirin, I., Johari, D., Othman, M.M., Rahman, T.K.A. and Othman, Z. (2008). Fuzzy Logic Application in DGA Methods to Classify Fault Type in Power Transformer.Selected Topics in Power Systems and Remote Sensing, Malaysia.
Alamuru Vani, and Pessapaty Sree Rama Chandra Murthy.(2014).A Hybrid Neuro Genetic Approach for Analyzing Dissolved Gases in Power Transformers. International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering, Vol. 3, Issue 11.
Allahbakhshi. M. and A. Akbari.(2011).Novel Fusion Approaches for the Dissolved Gas Analysis of Insulating Oil.IJST, Transactions of Electrical Engineering, Vol. 35, No. E1, pp 13-24.
Bevilacqua, M., Braglia, M.(2000). The analytic hierarchy process applied to maintenance strategy selection. Reliability Engineering and System Safety 70, 71–83.
Chen Weigen, Pan Chong, Yun Yuxin.(2008). Fault diagnosis method of power transformers based on wavelet networks and dissolved gas analysis. Journal of Proceedings of the CSEE,28(7), 121-126.
Guardado, J. L. Nared, P. Moreno, and C. R. Fuerte.(2001).A Comparative Study of Neural Network Efficiency in Power Transformers Diagnosis Using Dissolved Gas Analysis.IEEE Transactions on Power Delivery, Vol. 16, No. 4.
Han Han, Wang Hou-jun, Dong xiucheng.(2011). Transformer Fault Dignosis Based on Feature Selection and Parameter Optimization. Energy Procedia 12 , 662 – 668.
Hand. D.J.(1998) . Review of Data mining. The American statistician, 52, 112-118.
Huang YC.(2003). Evolving neural nets for fault diagnosis of power transformers. IEEE Transactions on Power Delivery, 18:843–848.
Huo-Ching Sun, Yann-Chang Huang, Chao-Ming Huang.(2012). Fault Diagnosis of Power Transformers Using Computational Intelligence. Energy Procedia 14 (2012) 1226 – 1231
Kima. K.O., and M.J. Zuo.(2007). Two fault classification methods for large systems when available data are limited.Reliability Engineering & System Safety, Vol.92, pp.585-592.
Kantardzic, M. (2011). Data mining: concepts, models, methods, and algorithms. John Wiley & Sons.
Liao, R.J., Zheng, H.B., Grzybowski, S., Yang, L.J, Tang, C. and Zhang, Y.Y. (2011). Fuzzy Information Granulated Particle Swarm Optimization Support Vector Machine Regression for the Trend Forecasting of Dissolved Gases in Oil-Filled Transformers. IET Electric Power Applications , 5, 230-237. http://dx.doi.org/10.1049/iet epa.2010.0103.
Lin, C.H., Chen, J.L. and Huang, P.Z. (2011). Dissolved Gases Forecast to Enhance Oil-Immersed Transformer Fault Diagnosis with Grey Prediction-Clustering Analysis. Expert Systems , 28, 123-137. http://dx.doi.org/10.1111/j.1468-0394.2010.00542.x
Lin .C. F, J. M. Ling, and C. L. Huang.(1993).IEEE Transactions on Power Delivery 8. 231-238.
Liwei Zhang and Jinsha Yuan.(2015). Fault Diagnosis of Power Transformers using Kernel based Extreme Learning Machine with Particle Swarm Optimization. Appl. Math. Inf. Sci. 9, No. 2, 1003-1010.
Qing Yang, Chang Liu, Dongxu Zhang, DongshengWu.(2012). A New Ensemble Fault Diagnosis Method Based on K-means Algorithm. International Journal of Intelligent Engineering and Systems, Vol.5, No.2.
Rogers R.(1978). IEEE and IEC codes to imterpret incipient faults in transformer,using gas in oil analysis[J]. IEEE Trans on Elect rical Insulation.13(5):3492354.
Sˆırbu, A., Kerr, G., Crane, M. and Ruskin, H. J. (2012). RNA-Seq vs dual-and single-channel microarray data: sensitivity analysis for differential expression and clustering. PloS one. 7(12), 50–56.
Topchy, A., Jain, A. K. and Punch, W. (2005). Clustering ensembles: Models of consensus and weak partitions. IEEE Transactions on Pattern Analysis and Machine Intelligence. 27(12), 1866–1881.
Vapnik.(2004).Statistical Learning Theory[M].Publishing house of electronics industry. 293-3231.
Published
2018-03-31
How to Cite
Asrami, M. S., & Akbari, E. (2018). The Compare of Transformer Fault Diagnosis Based on Feature Selection and Parameter Optimization and Fuzzy Reasoning Spiking Neural P Systems. IJRDO -Journal of Computer Science Engineering, 4(3), 01-17. https://doi.org/10.53555/cse.v4i3.1911