Araştırma Makalesi
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Detection and Classification of Power Quality Disturbances in the Supply to Induction Motor Using Wavelet Transform and Neural Networks

Yıl 2016, Cilt: 4 Sayı: 1, 37 - 45, 30.03.2016

Öz

This paper aims to represent a proposition of an innovative and novel methodology applicable in detecting and classifying the power quality disturbances present in the supply to the induction motor. In all practicality, considering circumstantial real world applications, induction motors are usually operated on load. If the supply voltage is varied in any way, it would adversely affect the normal operation of the motor. In the present work, a healthy induction motor is subjected to power quality disturbances like balanced voltage sag, balanced voltage swell, unbalanced voltage sag and unbalanced voltage swell. For the purpose of detecting these power quality disturbances, discrete wavelet transform is applied to the stator current of the induction motor. The stator current wavelet coefficients are fed as input to the neural network for the classification purpose. Radial basis neural network and feed forward neural network have been independently trained and tested. The observation about the feedforward network having higher performance efficiency as compared to the radial basis network, has been seen.

Kaynakça

  • [1] A. Domijan, G. T. Heydt, A. P. S Meliopoulos, S. S. Venakata and S. west, “Directions of research on power quality”, IEEE Transaction on power delivery, 8(1) (1993), pp. 429- 436. [2] J. Douglas, “Solving power quality problems”, EPRI Journal, 18(8) (1993), pp. 6-15. [3] W. R. A. Ibrahim and M. M. Morcos, “Aritificial intelligence and advanced mathematical tools for power quality applications: A survey”, IEEE Trans. power delivery, 17( 2) (2002), pp. 668- 673. [4] J. Huang, M. Negnevitsky and D.T. Nguyen, “A neural- fuzzy classifier for recognition of power quality disturbances”, IEEE Trans. power delivery, 17(4) (2002), pp. 609- 616. [5] Mamun Bin Ibne Reaz, Florence Choong, Mohd Shahiman Sulaiman, Faisal Mohd. Yasin and Masaru Kamada, “Expert system for power quality disturbance classifier”, IEEE Trans. on power delivery, 22(3)(2007), pp. 1979- 1988. [6] Rajiv Kapoor & Rashmi Gupta, “Statistically matched wavelet-based method for detection of power quality events,” International Journal of Electronics, 98(1) (2011), pp. 109-127. [7] Valdomiro VEGA, cesar DUARTE and Gabriel ORDONEZ, “Automatic power quality disturbances detection and classification based on discrete wavelet transform and support vector machine”, 19th international conference on electricity distribution (CIRED), Vienna, 21-24 May 2007, paper ID 0827. [8] Ali Asheibi, David Stirling, Sarath Perera and Duane Robinson, “Power quality data analysis using unsupervised data mining”, Australasian universities power engineering conference (AUPEC 2004), 26-29 September 2004, Brisbane, Australia. [9] Whei-Min Lin, Chien-Hsien Wu, Chia-Hung Lin, and Fu-Sheng Cheng,” Detection and Classification of Multiple Power-Quality Disturbances with Wavelet Multiclass SVM”, IEEE Transactions on power delivery, 23(4)(2008), pp. 2575- 2582. [10] Murat Uyar, Selcuk Yildiri, Muhsin Tunay Gencoglu, “An expert system based on S-transform and neural network for automatic classification of power quality disturbances”, Expert Systems with Applications, 36 (2009), pp. 5962–5975. [11] Abdel-Galil T.K., Kamel M., Youssef A.M., El-Saadany E.F., and Salama M.M.A.,“Power quality disturbance classification using the inductive inference approach”, IEEE Trans. on Power Delivery, 19 (2004), pp. 1812 – 1818. [12] Harapajan Singh, Manjeevan Seera, and Ahmad Puad Ismail, “Condition monitoring of electrical supply voltage quality to electrical machines using RBF neural network,” 2010 IEEE International conference on power and energy (PECon 2010), Nov 29th – Dec 1st , Kuala Lumpur, Malaysia, pp. 312- 317. [13] Bizjak Boris. and Planinsic Peter., “Classification of power disturbances using fuzzy logic”, Proc. of IEEE Power Electronics and Motion Control Conference, EPE-PEMC 2006, Portoroz, Slovenia. [14] B. Biswal, M. Biswal, S. Mishra and R. Jalaja, “Automatic classification of power quality events using balanced neural tree,” IEEE Trans. on industrial electronics, 61(1) (2014), pp. 521- 530. [15] Bollen M.H.J., Gu I.Y.H., Axelberg P.G.V. and Styvaktakis E., “Classification of underlying causes of power quality disturbances: deterministic versus statistical methods”, EURASIP Journal on Advances in Signal Processing, 2007, pp.1-17. [16] Chah keow, P. Nallagownden, K.S. Rama Rao, “Denoising scheme for enhancing power quality problem classification based on wavelet transform and a rule based method”, International conference on electrical, control and computer engineering, Malaysia, June 21st - 22nd 2011. [17] M. Riera-Guasp, Jose A. Antonino-Daviu, M. Pineda- Sanchez, R. Puche- Panadero and J. Perez- Cruz, “A general approach for the transient detection of slip-dependent fault componenets based on the discrete wavelet transform,” IEEE transactions on Industrial electronics, 55(12) (2008), pp. 4167-4180.
Yıl 2016, Cilt: 4 Sayı: 1, 37 - 45, 30.03.2016

Öz

Kaynakça

  • [1] A. Domijan, G. T. Heydt, A. P. S Meliopoulos, S. S. Venakata and S. west, “Directions of research on power quality”, IEEE Transaction on power delivery, 8(1) (1993), pp. 429- 436. [2] J. Douglas, “Solving power quality problems”, EPRI Journal, 18(8) (1993), pp. 6-15. [3] W. R. A. Ibrahim and M. M. Morcos, “Aritificial intelligence and advanced mathematical tools for power quality applications: A survey”, IEEE Trans. power delivery, 17( 2) (2002), pp. 668- 673. [4] J. Huang, M. Negnevitsky and D.T. Nguyen, “A neural- fuzzy classifier for recognition of power quality disturbances”, IEEE Trans. power delivery, 17(4) (2002), pp. 609- 616. [5] Mamun Bin Ibne Reaz, Florence Choong, Mohd Shahiman Sulaiman, Faisal Mohd. Yasin and Masaru Kamada, “Expert system for power quality disturbance classifier”, IEEE Trans. on power delivery, 22(3)(2007), pp. 1979- 1988. [6] Rajiv Kapoor & Rashmi Gupta, “Statistically matched wavelet-based method for detection of power quality events,” International Journal of Electronics, 98(1) (2011), pp. 109-127. [7] Valdomiro VEGA, cesar DUARTE and Gabriel ORDONEZ, “Automatic power quality disturbances detection and classification based on discrete wavelet transform and support vector machine”, 19th international conference on electricity distribution (CIRED), Vienna, 21-24 May 2007, paper ID 0827. [8] Ali Asheibi, David Stirling, Sarath Perera and Duane Robinson, “Power quality data analysis using unsupervised data mining”, Australasian universities power engineering conference (AUPEC 2004), 26-29 September 2004, Brisbane, Australia. [9] Whei-Min Lin, Chien-Hsien Wu, Chia-Hung Lin, and Fu-Sheng Cheng,” Detection and Classification of Multiple Power-Quality Disturbances with Wavelet Multiclass SVM”, IEEE Transactions on power delivery, 23(4)(2008), pp. 2575- 2582. [10] Murat Uyar, Selcuk Yildiri, Muhsin Tunay Gencoglu, “An expert system based on S-transform and neural network for automatic classification of power quality disturbances”, Expert Systems with Applications, 36 (2009), pp. 5962–5975. [11] Abdel-Galil T.K., Kamel M., Youssef A.M., El-Saadany E.F., and Salama M.M.A.,“Power quality disturbance classification using the inductive inference approach”, IEEE Trans. on Power Delivery, 19 (2004), pp. 1812 – 1818. [12] Harapajan Singh, Manjeevan Seera, and Ahmad Puad Ismail, “Condition monitoring of electrical supply voltage quality to electrical machines using RBF neural network,” 2010 IEEE International conference on power and energy (PECon 2010), Nov 29th – Dec 1st , Kuala Lumpur, Malaysia, pp. 312- 317. [13] Bizjak Boris. and Planinsic Peter., “Classification of power disturbances using fuzzy logic”, Proc. of IEEE Power Electronics and Motion Control Conference, EPE-PEMC 2006, Portoroz, Slovenia. [14] B. Biswal, M. Biswal, S. Mishra and R. Jalaja, “Automatic classification of power quality events using balanced neural tree,” IEEE Trans. on industrial electronics, 61(1) (2014), pp. 521- 530. [15] Bollen M.H.J., Gu I.Y.H., Axelberg P.G.V. and Styvaktakis E., “Classification of underlying causes of power quality disturbances: deterministic versus statistical methods”, EURASIP Journal on Advances in Signal Processing, 2007, pp.1-17. [16] Chah keow, P. Nallagownden, K.S. Rama Rao, “Denoising scheme for enhancing power quality problem classification based on wavelet transform and a rule based method”, International conference on electrical, control and computer engineering, Malaysia, June 21st - 22nd 2011. [17] M. Riera-Guasp, Jose A. Antonino-Daviu, M. Pineda- Sanchez, R. Puche- Panadero and J. Perez- Cruz, “A general approach for the transient detection of slip-dependent fault componenets based on the discrete wavelet transform,” IEEE transactions on Industrial electronics, 55(12) (2008), pp. 4167-4180.
Toplam 1 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Mühendislik
Bölüm Araştırma Makalesi
Yazarlar

Sridhar Sridhar Bu kişi benim

Dr. K. Uma Rao Bu kişi benim

Sukrutha Jade Bu kişi benim

Yayımlanma Tarihi 30 Mart 2016
Yayımlandığı Sayı Yıl 2016 Cilt: 4 Sayı: 1

Kaynak Göster

APA Sridhar, S., Rao, D. K. U., & Jade, S. (2016). Detection and Classification of Power Quality Disturbances in the Supply to Induction Motor Using Wavelet Transform and Neural Networks. Balkan Journal of Electrical and Computer Engineering, 4(1), 37-45.

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