Conference Paper

Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter

Volume: 4 Number: 2 June 29, 2020
EN

Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter

Abstract

The barkhausen noise carries important information which can be used in early damage detection and fault diagnosis. The barkhausen noise is corrupted by interference signals from other sources during the measure and the information of fault can be lost. In this paper a new algorithm based on Empirical Mode Decomposition (EMD) and Savitzky-Golay filter is proposed to extract the information about the fault of materials from a measured barkhausen noise. Firstly, using EMD to decompose the barkhausen noise signal into elementary function called Intrinsic Mode Function (IMF). Secondly, we use the energy to select the relevant mode, these selected IMF is filtered by Savitzky-Golay filter and the reconstructed signal is obtained by the IMFs filtered. The envelope spectra are used to test the efficiency of the proposed method in enhancement the quality of barkhausen noise signal. The proposed method is validated using the measuring chain of barkhausen noise (Fig (3-8)) and the obtained results show the effectiveness of the proposed method in fault detection.

Keywords

Supporting Institution

Research Center in Industrial Technologies CRTI, P.O.BOX 64, Cheraga 16014 Algiers, Algeria.

Project Number

1

Thanks

thanks

References

  1. [1] O. Stupakov, J. Pal’a, V. Yurchenko, I. Tomáš,and J. Bydžovský, Measurement of Barkhausen noise and its correlation with magnetic permeability , Journal of Magnetism and Magnetic Materials Volume 320, Issues 3–4, February 2008, Pages 204–209.
  2. [2] Yuan Huijuan, Zhang Enjing, Li Hongmei, Fu Jian, Yang Ying, Zou Ying, Hu Dandan, Application Status of the Barkhausen Effect in Nondestructive Testing TELKOMNIKA, Vol.12, No.3, September 2014, pp. 523~630.
  3. [3] Krzysztof Miesowicz,Wieslaw J. Staszewski , Tomasz Korbiel,Analysis of Barkhausen Noise Using Wavelet Based Fractal Signal Processing for Fatigue Crack Detection International Journal of Fatigue.
  4. [4] E. Huang, Z. Shen, S.R. Long, M.C.Wu, H.H. Shih, Q.Zheng, N.C. Yen,C.C. Tung, H.H. Liu, “The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis,” Proc. R. Soc. Lond. Ser. A 454 (3) (1998) 903–995.
  5. [5] A. O. Boudraa, J. C. Cexus, “EMD-based signal filtering,” IEEE Trans. Instru. Meas. Vol. 56, No. 6, 2007, pp. 2196-2202.
  6. [6] Jianzhao Huang, Jian Xie, Feng li, Liang li, “A Threshold Denoising Method based on EMD,” Journal of Theoretical and Applied Information technology 10th January 2013. Vol. 47 No.1.
  7. [7] Ianzhao Huang, Jian Xie, Feng li, Liang li, “A Threshold Denoising Method based on EMD,” Journal of Theoretical and Applied Information technology 10th January 2013. Vol. 47 No.1
  8. [8] A. Savitzky and M.J.E. Golay, ”Smoothing and differentiation of data by simplified least squares procedures,” Analytical Chemistry, vol. 36, pp. 1627-1639,1964

Details

Primary Language

English

Subjects

Material Production Technologies

Journal Section

Conference Paper

Authors

Mohammed Khorchef This is me

Mourad Zergoug This is me

Publication Date

June 29, 2020

Submission Date

November 6, 2019

Acceptance Date

April 21, 2020

Published in Issue

Year 2020 Volume: 4 Number: 2

APA
Abdelkader, R., Khorchef, M., & Zergoug, M. (2020). Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter. Acta Materialia Turcica, 4(2), 33-38. https://izlik.org/JA94MB93GP
AMA
1.Abdelkader R, Khorchef M, Zergoug M. Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter. ACTAMAT. 2020;4(2):33-38. https://izlik.org/JA94MB93GP
Chicago
Abdelkader, Rabah, Mohammed Khorchef, and Mourad Zergoug. 2020. “Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter”. Acta Materialia Turcica 4 (2): 33-38. https://izlik.org/JA94MB93GP.
EndNote
Abdelkader R, Khorchef M, Zergoug M (June 1, 2020) Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter. Acta Materialia Turcica 4 2 33–38.
IEEE
[1]R. Abdelkader, M. Khorchef, and M. Zergoug, “Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter”, ACTAMAT, vol. 4, no. 2, pp. 33–38, June 2020, [Online]. Available: https://izlik.org/JA94MB93GP
ISNAD
Abdelkader, Rabah - Khorchef, Mohammed - Zergoug, Mourad. “Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter”. Acta Materialia Turcica 4/2 (June 1, 2020): 33-38. https://izlik.org/JA94MB93GP.
JAMA
1.Abdelkader R, Khorchef M, Zergoug M. Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter. ACTAMAT. 2020;4:33–38.
MLA
Abdelkader, Rabah, et al. “Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter”. Acta Materialia Turcica, vol. 4, no. 2, June 2020, pp. 33-38, https://izlik.org/JA94MB93GP.
Vancouver
1.Rabah Abdelkader, Mohammed Khorchef, Mourad Zergoug. Fault Diagnosis Based on Enhancement of Barkhausen Noise Using Hybrid Method Emprical Mode Decomposition-Savitzky-Golay Filter. ACTAMAT [Internet]. 2020 Jun. 1;4(2):33-8. Available from: https://izlik.org/JA94MB93GP