Vol. 5 No. 1 (2006): Revista UIS Ingenierías
Articles

Detection and identification of events of the quality of electricity using the wavelet discrete transformed and neuronal networks

Valdomiro Vega García
Universidad Industrial de Santander
Bio
César Antonio Duarte Gualdrón
Universidad Industrial de Santander
Bio
Gabriel Ordoñez Plata
Universidad Industrial de Santander
Bio

Published 2006-05-23

Keywords

  • Harmonics,,
  • power quality,
  • sags,
  • swells,
  • flicker,
  • neural networks,
  • Wavelet Transform,
  • transients,
  • database
  • ...More
    Less

How to Cite

Vega García, V., Duarte Gualdrón, C. A., & Ordoñez Plata, G. (2006). Detection and identification of events of the quality of electricity using the wavelet discrete transformed and neuronal networks. Revista UIS Ingenierías, 5(1), 109–118. Retrieved from https://revistas.uis.edu.co/index.php/revistauisingenierias/article/view/1772

Abstract

This paper deals with the application of Discrete Wavelet Transform (DWT) and Neural Networks in the detection and identification of power quality events. Some patterns based on DWT are used in order to identify low frequency events like flicker and harmonics, and high frequency events like impulsive transient and sags. The Wavelet Function Daubichies4 is used as a base function because of its frequency response and time information localization properties. A scheme based on neural networks (perceptron multilayer) taking event patterns as inputs is used as event classifier. The results are satisfactory (80 and 90 percent of success for the most events) considering that some events present resemblances in their patterns. This strategy was integrated on a MatLab ® Graphical User Interface and tested by using synthetic signals which were simulated and collected in a disturbance database.

Downloads

Download data is not yet available.

References

Resende J.W "Identification of power quality disturbances using the MATLAB wavelet transform
tooIbox". Universidad Federal de Uberlandia (MG)-Brazil. pp.8200!.

Gaouda, A, ; Chikhani, A. "Power quality detection and classification using wavelet-multiresolution signal
decomposi-tion !! Power Systems, IEEE Transactions on Published: Oct: 1999 Volume: 144 , Page(s): 1469-1476.

Cheng Hong, Loh Poh Chiang, S. E1angovan National University of Singapore nWavelet packets analysis and
artificialintelligence based adaptive fault diagnosis" 2002 Pp. 6.

K. Debnath ,M. Negnevitsky, K. Ho, C. Jun School of Engineering University of Tasmania "Recognition of Power Quality Disturbances" 2001

García Q. Edwin "Armónicos: Aplicación de la Transforma-da Wavelet para el análisis de transitorios electromagnéticos" Tesis Pregrado urs . Pp109.2000

Chui, Charles K., IIWavelets: a mathematical tool for signal analysis", SIAM, Philadelphia. Pp. 210. 1997

Alan V. Oppenheim & Ajan S. WilIsky, "Señales y Sistemas", Editorial Prentice Hall, Segunda Edición. pp.956. 1998

Daubechies, Ingrid. ftTen Lectures on Wavelets U, Philadel-phia: SIAM. (1992). pp. 357.

Norma Técnica Colombiana 5000: "Calidad de la potencia eléctrica (CPE). Definiciones y términos
fundamentales",Insti-tuto Colombiano de Normas Técnicas (ICONTEe),2002.

IEEE Standards coordinating connnittee 22 on power quality, USA. "IEEE Std 1159-1995: IEEE Recornmended
practice for monitoring electric power quality l1, IEEE Standards boards,1995.

Flores Rafael A., Member, IEEE" State of the Art in the Classification of Power Quality Events" 10th International Conference in Harmonics and Quality of Power, Brazil, Oct 2002 pp. 4.

Heydt, G.T. ; Galli, A.W. " Transient Power Quality Problem Analized using Wavelet, "IEEE Transactions on
PowerDelivery, Vol. 12, No. 2,April 1997. Page(s): 908 -915.

Poison, O. ;Rional P.; Mennier, M. "New Signal Processing Tool Applied to Power Qnality Analysis ", IEEE
Trans-actions on PowerDelivery, Vol. 14, No. 2, April 1999. Page(s): 561 -915.

Keznnovic Mladen ;Liao, Ynan "ANovel Software Implementation Concept for Power Quality Study", 2000.

Shyh-Jier, H. ;Chen-Tao, H. ;Ching-Lien, H. "Application of Morlet Wavelet to Supervise Power System Disturbances", IEEE Transactions on Power Delivery, Vol. 14, No. 1,January 1999. Page(s): 235 -243.

Xiangxun, Cheng. "Wavelet based detection, localization, quantification and classification of short
duration power quality disturbances " IEEE Power Engineering Society Winter Meeting, 2002, Vol. 2, 2002.

Cormane, Jorge Barrera, Victor. "Predicción de corrientes armónicas en ventanas de carga residenciales,
mediante mode-los neuronales artificiales" Tesis de grado pp 164, Universidad Industrial de Santander, Bucaramanga 2003.

Kohonen T. : Se1f-Organizing Maps. 2" Ed. Springer Verlag Berlin Heidelberg. 1997.

Páez, Carlos; Meneses,Jathinson "Herramienta software para la zonificación de datos, basado en redes neuronales 11 Tesis de grado Pp 64, Universidad Industrial de Santander,
Bucararnanga 2003.

IEC 6100-4-15 Electromagnetic Compatibility (EMC). Part 4: Testing and measurements technique - Section 15. Flicker-meter. Functional and design specifications. Bureau Central de la Comision Electrotechnique Internationale, 1997111.