Table of Contents Author Guidelines Submit a Manuscript
Shock and Vibration
Volume 2017, Article ID 1254310, 14 pages
https://doi.org/10.1155/2017/1254310
Research Article

Probabilistic Entropy EMD Thresholding for Periodic Fault Signal Enhancement in Rotating Machine

1State Key Laboratory Base of Eco-Hydraulic Engineering in Arid Area, Xi’an University of Technology, Xi’an 710048, China
2Institute of Water Resources and Hydro-Electric Engineering, Xi’an University of Technology, Xi’an 710048, China
3Institute of Water Resources and Hydropower Research, Northwest A&F University, Yangling 712100, China

Correspondence should be addressed to Rong Jia; nc.ude.tuax@gnoraij

Received 1 March 2017; Accepted 20 June 2017; Published 30 July 2017

Academic Editor: Marc Thomas

Copyright © 2017 Jian Dang et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Linked References

  1. D. E. Bently and C. T. Hatch, Fundamentals of Rotating Machinery Diagnostics, American Society of Mechanical Engineers, New York, NY, USA, 2002.
  2. A. D. Nembhard, J. K. Sinha, and A. Yunusa-Kaltungo, “Development of a generic rotating machinery fault diagnosis approach insensitive to machine speed and support type,” Journal of Sound and Vibration, vol. 337, pp. 321–341, 2015. View at Publisher · View at Google Scholar · View at Scopus
  3. J. Chen, Z. Li, J. Pan et al., “Wavelet transform based on inner product in fault diagnosis of rotating machinery: a review,” Mechanical Systems and Signal Processing, vol. 70-71, pp. 1–35, 2016. View at Publisher · View at Google Scholar · View at Scopus
  4. J. Dang, R. Jia, X. Luo, H. Wu, and D. Chen, “Partly duffing oscillator stochastic resonance method and its application on mechanical fault diagnosis,” Shock and Vibration, vol. 2016, Article ID 3109385, 2016. View at Publisher · View at Google Scholar · View at Scopus
  5. N. E. Huang, Z. Shen, S. R. Long et al., “The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis,” Proceedings of the Royal Society A—Mathematical, Physical and Engineering Sciences, vol. 454, no. 1971, pp. 903–995, 1998. View at Publisher · View at Google Scholar · View at MathSciNet
  6. Y. Lei, J. Lin, Z. He, and M. J. Zuo, “A review on empirical mode decomposition in fault diagnosis of rotating machinery,” Mechanical Systems and Signal Processing, vol. 35, no. 1-2, pp. 108–126, 2013. View at Publisher · View at Google Scholar · View at Scopus
  7. C. Mishra, A. K. Samantaray, and G. Chakraborty, “Bond graph modeling and experimental verification of a novel scheme for fault diagnosis of rolling element bearings in special operating conditions,” Journal of Sound and Vibration, vol. 377, pp. 302–330, 2016. View at Publisher · View at Google Scholar · View at Scopus
  8. X. Xue, J. Zhou, Y. Xu, W. Zhu, and C. Li, “An adaptively fast ensemble empirical mode decomposition method and its applications to rolling element bearing fault diagnosis,” Mechanical Systems and Signal Processing, vol. 62, pp. 444–459, 2015. View at Publisher · View at Google Scholar · View at Scopus
  9. Z. H. Wu and N. E. Huang, “A study of the characteristics of white noise using the empirical mode decomposition method,” Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol. 17, no. 2046, pp. 1597–1611, 2004. View at Publisher · View at Google Scholar
  10. P. Flandrin, G. Rilling, and P. Gonçalvés, “Empirical mode decomposition as a filter bank,” IEEE Signal Processing Letters, vol. 11, no. 2, pp. 112–114, 2004. View at Publisher · View at Google Scholar · View at Scopus
  11. B. G. Jeong, B. C. Kim, Y. H. Moon, and I. K. Eom, “Simplified noise model parameter estimation for signal-dependent noise,” Signal Processing, vol. 96, pp. 266–273, 2014. View at Publisher · View at Google Scholar · View at Scopus
  12. P. Flandrin, P. Gonçalves, and G. Rilling, “EMD Equivalent Filter Banks, from Interpretation to Applications,” in Hilbert-Huang Transform And Its Applications, vol. 5 of Interdisciplinary Mathematical Sciences, pp. 57–74, World Scientific, Hackensack, NJ, USA, 2005. View at Publisher · View at Google Scholar · View at MathSciNet
  13. A.-O. Boudraa and J.-C. Cexus, “EMD-based signal filtering,” IEEE Transactions on Instrumentation & Measurement, vol. 56, no. 6, pp. 2196–2202, 2007. View at Publisher · View at Google Scholar · View at Scopus
  14. R. Ricci and P. Pennacchi, “Diagnostics of gear faults based on EMD and automatic selection of intrinsic mode functions,” Mechanical Systems and Signal Processing, vol. 25, no. 3, pp. 821–838, 2011. View at Publisher · View at Google Scholar · View at Scopus
  15. A.-P. Albert and A.-O. Nii, “A criterion for selecting relevant intrinsic mode functions in empirical mode decomposition,” Advances in Adaptive Data Analysis, vol. 2, no. 1, pp. 1–24, 2010. View at Publisher · View at Google Scholar · View at Scopus
  16. O. A. Omitaomu, V. A. Protopopescu, and A. R. Ganguly, “Empirical mode decomposition technique with conditional mutual information for denoising operational sensor data,” IEEE Sensors Journal, vol. 11, no. 10, pp. 2565–2575, 2011. View at Publisher · View at Google Scholar · View at Scopus
  17. R. Shao, W. Hu, and J. Li, “Multi-fault feature extraction and diagnosis of gear transmission system using time-frequency analysis and wavelet threshold de-noising based on EMD,” Shock and Vibration, vol. 20, no. 4, pp. 763–780, 2013. View at Publisher · View at Google Scholar · View at Scopus
  18. G. Yang, Y. Liu, Y. Wang, and Z. Zhu, “EMD interval thresholding denoising based on similarity measure to select relevant modes,” Signal Processing, vol. 109, pp. 95–109, 2015. View at Publisher · View at Google Scholar · View at Scopus
  19. A. Komaty, A. Boudraa, and D. Dare, “EMD-based filtering using the Hausdorff distance,” in Proceedings of the 12th IEEE International Symposium on Signal Processing and Information Technology (ISSPIT '12), pp. 292–297, Ho Chi Minh City, Vietnam, December 2012. View at Publisher · View at Google Scholar · View at Scopus
  20. A. Komaty, A.-O. Boudraa, B. Augier, and D. Dare-Emzivat, “EMD-based filtering using similarity measure between probability density functions of IMFs,” IEEE Transactions on Instrumentation and Measurement, vol. 63, no. 1, pp. 27–34, 2014. View at Publisher · View at Google Scholar · View at Scopus
  21. Y. Kopsinis and S. McLaughlin, “Development of EMD-based denoising methods inspired by wavelet thresholding,” IEEE Transactions on Signal Processing, vol. 57, no. 4, pp. 1351–1362, 2009. View at Publisher · View at Google Scholar · View at MathSciNet
  22. D. L. Donoho and I. M. Johnstone, “Ideal spatial adaptation by wavelet shrinkage,” Biometrika, vol. 81, no. 3, pp. 425–455, 1994. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  23. C.-S. Qu, T.-Z. Lu, and Y. Tan, “A modified empirical mode decomposition method with applications to signal de-noising,” Acta Automatica Sinica, vol. 36, no. 1, pp. 67–73, 2010. View at Publisher · View at Google Scholar · View at Scopus
  24. N. R. Saggurti and J. Shankar, “EMD based clear recursive thresholding (EMD-CRT) for speech enhancement,” in Proceedings of the International Conference on Signal Processing, Computing and Control, ISPCC 2015, pp. 149–154, Solan, India, September 2015. View at Publisher · View at Google Scholar · View at Scopus
  25. C. Bandt and B. Pompe, “Permutation entropy: a natural complexity measure for time series,” Physical Review Letters, vol. 88, no. 17, Article ID 174102, 2002. View at Google Scholar · View at Scopus
  26. F. Fu-zhou, R. Guo-qiang, Z. Li-xia et al., “Research on abnormality detection method for s based on emd and permutation entropy,” Bearing, vol. 2, pp. 53–56, 2013. View at Google Scholar
  27. Y. Kopsinis and S. McLaughlin, “Empirical mode decomposition based soft-thresholding,” in Proceedings of the 16th European Signal Processing Conference, EUSIPCO 2008, IEEE, Lausanne, Switzerland, August 2008. View at Scopus
  28. B. Fadlallah, B. Chen, A. Keil, and J. Príncipe, “Weighted-permutation entropy: a complexity measure for time series incorporating amplitude information,” Physical Review E, vol. 87, no. 2, Article ID 022911, 2013. View at Publisher · View at Google Scholar · View at Scopus
  29. N. Nicolaou and J. Georgiou, “Detection of epileptic electroencephalogram based on Permutation Entropy and Support Vector Machines,” Expert Systems with Applications, vol. 39, no. 1, pp. 202–209, 2012. View at Publisher · View at Google Scholar · View at Scopus
  30. F. C. Morabito, D. Labate, F. La Foresta, A. Bramanti, G. Morabito, and I. Palamara, “Multivariate multi-scale permutation entropy for complexity analysis of Alzheimer's disease EEG,” Entropy, vol. 14, no. 7, pp. 1186–1202, 2012. View at Publisher · View at Google Scholar · View at Scopus
  31. J. M. Li, X. F. Chen, and Z. J. He, “Adaptive stochastic resonance method for impact signal detection based on sliding window,” Mechanical Systems and Signal Processing, vol. 36, no. 2, pp. 240–255, 2013. View at Publisher · View at Google Scholar · View at Scopus