MODELLING OF PARTIAL DISCHARGE ANALYSIS SYSTEM USING WAVELET TRANSFORM DENOISING TECHNIQUE IN LABVIEW ENVIRONMENT

Authors

  • A. Nazifah Abdullah High Voltage Transients & Insulation Health (HVTrans) Group, Centre of Excellent Renewable Energy (CERE), School of Electrical System Engineering, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Arau, Perlis, Malaysia
  • S. H. K. Hamadi High Voltage Transients & Insulation Health (HVTrans) Group, Centre of Excellent Renewable Energy (CERE), School of Electrical System Engineering, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Arau, Perlis, Malaysia
  • M. Isa High Voltage Transients & Insulation Health (HVTrans) Group, Centre of Excellent Renewable Energy (CERE), School of Electrical System Engineering, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Arau, Perlis, Malaysia
  • B. Ismail High Voltage Transients & Insulation Health (HVTrans) Group, Centre of Excellent Renewable Energy (CERE), School of Electrical System Engineering, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Arau, Perlis, Malaysia
  • A. N. Nanyan High Voltage Transients & Insulation Health (HVTrans) Group, Centre of Excellent Renewable Energy (CERE), School of Electrical System Engineering, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Arau, Perlis, Malaysia
  • A. Z. Abdullah High Voltage Transients & Insulation Health (HVTrans) Group, Centre of Excellent Renewable Energy (CERE), School of Electrical System Engineering, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Arau, Perlis, Malaysia

DOI:

https://doi.org/10.11113/jt.v81.13649

Keywords:

Partial discharge, denoising, wavelet, MSE, SNR

Abstract

Partial discharge (PD) measurement is an essential to detect and diagnose the existence of the PD. However, this measurement has faced noise disturbance in industrial environments. Thus, PD analysis system using discrete wavelet transform (DWT) denoising technique via Laboratory Virtual Instrument Engineering Workbench (LabVIEW) software is proposed to distinguish noise from the measured PD signal. In this work, the performance of denoising process is analyzed based on calculated mean square error (MSE) and signal to noise ratio (SNR). The result is manipulated based on Haar, Daubechies, Coiflets, Symlets and Biorthogonal type of mother wavelet with different decomposition levels. From the SNR results, all types of the mother wavelet are suitable to be used in denoising technique since the value of SNR is in large positive value. Therefore, further studies were conducted and found out that db14, coif3, sym5 and bior5.5 wavelets with least MSE value are considered good to be used in the denoising technique. However, bior5.5 wavelet is proposed as the most optimum mother wavelet due to consistency of producing minimum value of MSE and followed by db14.

References

J. A. Ardila-Rey, J. M. Martínez-Tarifa, G. Robles, and M. Rojas-Moreno. 2013. Partial Discharge and Noise Separation by Means of Spectral-power Clustering Techniques. IEEE Trans. Dielectr. Electr. Insul. 20(4): 1436-1443.

A. Z. Abdullah, H. Hamid, and M. Isa. 2018. Real On-site Partial Discharge Measurement Technique in Medium Voltage Power Cable. 2018 IEEE 7th Int. Conf. Power Energy Where. 1: 405-408.

D. Salathe. 2015. New Methods for Offline PD Diagnosis on MV Cable Systems. 30th Power System Conference-Tehran, Iran. November: 374-379.

M. N. K. H. Rohani et al. 2016. Geometrical Shapes Impact on the Performance of ABS-based Coreless Inductive Sensors for PD Measurement in HV Power Cables. IEEE Sens. J. 16(17): 6625-6632.

B. Han, Q. Xue, X. Liu, and K. Wang. 2017. Multi-objective Optimization Design of a High-speed PM Machine Supported by Magnetic Bearings. Mech. Syst. Signal Process. 92: 349-363.

I. Blokhintsev, B. J. Cassidy, and C. L. Patterson. 2009. Advantage of On-line Partial Discharge Continuous Monitoring of Medium Voltage Substation. 2009 IEEE Electr. Insul. Conf. Montr. QC, Canada. June: 153-158.

M. N. K. H. Rohani, M. Isa, M. Syahril, C. C. Yii, A. S. Rosmi, and B. Ismail. 2018. Sigma-delta ADC Topology Implementation Based on Partial Discharge Detection using Rogowski Coil Sensor. J. Phys. Conf. Ser. 1019(1): 1-8.

A. Mukhtaruddin, M. Isa, M. R. Adzman, S. I. S. Hasan, M. N. K. H. Rohani, and C. C. Yii. 2016. Techniques on Partial Discharge Detection and Location Determination in Power Transformer. 2016 3rd Int. Conf. Electron. Des. ICED 2016. 537-542.

C. C. Yii, M. N. K. H. Rohani, M. Isa, S. I. S. Hassan, B. Ismail, and N. Hussin. 2015 Multi-end Partial Discharge Location Algorithm based on Trimmed Mean Data Filtering Technique for MV Underground Cable. 2015 IEEE Student Conference on Research and Development (SCOReD) IV. 345-350.

S. H. K. Hamadi et al. 2017. Modelling of Partial Discharge Signal and Noise Interference using LabVIEW. IEEE 15th Student Conference on Research and Development (SCOReD). 451-455.

M. Isa, N. I. Elkalashy, M. Lehtonen, G. M. Hashmi, and M. S. Elmusrati. 2012. Multi-end Correlation-based PD Location Technique for Medium Voltage Covered-conductor Lines. IEEE Trans. Dielectr. Electr. Insul. 19(3): 936-946.

X. Zhou, C. Zhou, and B. G. Stewart. 2006. Comparisons of Discrete Wavelet Transform, Wavelet Packet Transform and Stationary Wavelet Transform in Denoising PD Measurement Data. Electr. Insul. 2006. Conf. Rec. 2006 IEEE Int. Symp. 237-240.

G. M. Hashmi, M. Lehtonen, and M. Nordman. 2010. Calibration of On-line Partial Discharge Measuring System using Rogowski Coil in Covered-conductor Overhead Distribution Networks. IET Sci. Meas. Technol. 5(1): 5-13.

M. N. K. H. Rohani et al. 2016. Effect of Unshielded and Shielded Rogowski Coil Sensor Performance for Partial Discharge Measurement. 2015 IEEE Student Conf. Res. Dev. SCOReD 2015. 21-25.

L. M. Ishak et al. 2017. Partial Discharge Location Algorithm Based on Cross-Correlation Technique for Unsynchronized Measurement. 2017 IEEE 15th Student Conference on Research and Development (SCOReD). 388-391.

C. C. Yii, M. N. K. H. Rohani, M. Isa, and S. I. S. Hassan. 2017. Multi-end PD Location Algorithm using Segmented Correlation and Trimmed Mean Data Filtering Techniques for MV Underground Cable. IEEE Trans. Dielectr. Electr. Insul. 24(1): 92-98.

C. F. F. De, A. T. D. Carvalho, M. R. Petraglia, and A. C. S. Lima. 2013. An Improved Scale Dependent Wavelet Selection for Data Denoising of Partial Discharge Measurement. Proceedings of IEEE International Conference on Solid Dielectrics, ICSD. 100-104.

N. A. Yusoff, M. Isa, H. Hamid, M. R. Adzman, M. Nur, and K. Hafizi. 2016. Denoising Technique for Partial Discharge Signal : A Comparison Performance between Artificial Neural Network, Fast Fourier Transform and Discrete Wavelet Transform. 2016 IEEE International Conference on Power and Energy (PECon). 311-316.

W. Li. 2009. Research on Extraction of Partial Discharge Signals based on Wavelet Analysis. Proceedings - 2009 International Conference on Electronic Computer Technology, ICECT 2009. 545-548.

J. Du, W. Li, and J. Guo. 2018. Design of LabVIEW based General Data Acquisition System. Proc. 2017 IEEE 2nd Inf. Technol. Networking, Electron. Autom. Control Conf. ITNEC 2017. 2018-Janua: 1235-1239.

E. Ouatah, S. Megherfi, K. Haroun, and Y. Zebboudj. 2013. Characteristics of Partial Discharge Pulses Propagation in Shielded Power Cable. Electric Power Systems Research. 38-44.

A. A. Khan, N. Malik, A. Al-Arainy, and S. Alghuweinem. 2013. Investigation of Attenuation Characteristics of PD Pulse during Propagation in XLPE Cable. IEEE Power and Energy Society General Meeting. 4-8.

G. C. Montanari. 2016. Partial Discharge Detection in Medium Voltage and High Voltage Cables : Maximum Distance for Detection, Length of Cable, and Some Answers. 32(5): 41-46.

S. H. K. Hamadi et al. 2017. Evaluation of Denoising Performance Indices for Noisy Partial Discharge Signal Based on DWT Technique. 2017 IEEE 15th Student Conference on Research and Development (SCOReD), 1: 392-397.

S. Madhu, H. B. Bhavani, and S. Sumathi. 2015. Performance Analysis of Thresholding Techniques for Denoising of Simulated Partial Discharge Signals Corrupted by Gaussian White Noise. Proc. 2015 IEEE Int. Conf. Power Adv. Control Eng. ICPACE 2015. 399-404.

H. D. O. Mota, L. C. D. Da Rocha, T. C. D. M. Salles, and F. H. Vasconcelos. 2011. Partial Discharge Signal Denoising with Spatially Adaptive Wavelet Thresholding and Support Vector Machines. Electr. Power Syst. Res. 81(2): 644-659.

Ö. Altay and Ö. Kalenderli. 2010. Noise Reduction on Partial Discharge Data with Wavelet Analysis and Appropriate Thresholding. 2010 International Conference on High Voltage Engineering and Application, ICHVE 2010.

H. Zhang, T. R. Blackburn, B. T. Phung, and D. Sen. 2007. A Novel Wavelet Transform Technique for On-line Partial Discharge Measurements Part 1: WT De-Noising Algorithm. IEEE Trans. Dielectr. Electr. Insul. 14(1): 3-14.

R. Hussein, A. H. El-Hag, and K. B. Shaban. 2016. Energy Conservation-based Thresholding for Effective Wavelet Denoising Of Partial Discharge Signals. IET Sci. Meas. Technol. 10(7): 813-822.

R. Hussein, K. B. Shaban, and A. H. El-Hag. 2015. Histogram-based Thresholding in Discrete Wavelet Transform for Partial Discharge Signal Denoising. 2015 International Conference on Communications, Signal Processing, and Their Applications, ICCSPA 2015.

Downloads

Published

2019-09-22

Issue

Section

Science and Engineering

How to Cite

MODELLING OF PARTIAL DISCHARGE ANALYSIS SYSTEM USING WAVELET TRANSFORM DENOISING TECHNIQUE IN LABVIEW ENVIRONMENT. (2019). Jurnal Teknologi (Sciences & Engineering), 81(6). https://doi.org/10.11113/jt.v81.13649