An Improved Method Based on CEEMD for Fault Diagnosis of Rolling Bearing

In order to improve the effectiveness for identifying rolling bearing faults at an early stage, the present paper proposed a method that combined the so-called complementary ensemble empirical mode decomposition (CEEMD) method with a correlation theory for fault diagnosis of rolling element bearing. The cross-correlation coefficient between the original signal and each intrinsic mode function (IMF) was calculated in order to reduce noise and select an effective IMF. Using the present method, a rolling bearing fault experiment with vibration signals measured by acceleration sensors was carried out, and bearing inner race and outer race defect at a varying rotating speed with different degrees of defect were analyzed. And the proposed method was compared with several algorithms of empirical mode decomposition (EMD) to verify its effectiveness. Experimental results showed that the proposed method was available for detecting the bearing faults and able to detect the fault at an early stage. It has higher computational efficiency and is capable of overcoming modal mixing and aliasing. Therefore, the proposed method is more suitable for rolling bearing diagnosis.

[1]  Wang Peng Adaptive fault diagnosis of rolling bearings based on EEMD and demodulated resonance , 2013 .

[2]  Peng Chen,et al.  Sequential Fuzzy Diagnosis for Plant Machinery , 2003 .

[3]  N. Huang,et al.  The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis , 1998, Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences.

[4]  Danilo P. Mandic,et al.  Filter Bank Property of Multivariate Empirical Mode Decomposition , 2011, IEEE Transactions on Signal Processing.

[5]  Robert B. Randall,et al.  Signal Processing Tools for Tracking the Size of a Spall in a Rolling Element Bearing , 2011 .

[6]  Danilo P. Mandic,et al.  Empirical Mode Decomposition-Based Time-Frequency Analysis of Multivariate Signals: The Power of Adaptive Data Analysis , 2013, IEEE Signal Processing Magazine.

[7]  George E. P. Box,et al.  The Royal Society of London , 2013 .

[8]  Gang Wang,et al.  On Intrinsic Mode Function , 2010, Adv. Data Sci. Adapt. Anal..

[9]  Li Meng,et al.  Bearing Fault Diagnosis Based on PCA and SVM , 2007, 2007 International Conference on Mechatronics and Automation.

[10]  Alfred O. Hero,et al.  Scale and Translation Invariant Methods for Enhanced Time-Frequency Pattern Recognition , 1998, Multidimens. Syst. Signal Process..

[11]  N. Huang,et al.  A study of the characteristics of white noise using the empirical mode decomposition method , 2004, Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences.

[12]  J. C. Lázaro,et al.  Ultrasonic flaw detection in NDE of highly scattering materials using wavelet and Wigner-Ville transform processing. , 2004, Ultrasonics.

[13]  Hong-Tzer Yang,et al.  A de-noising scheme for enhancing wavelet-based power quality monitoring system , 2001 .

[14]  Shi Hao-hao Fault diagnosis of rolling bearings based on EMD Interval-Threshold denoising and maximum likelihood estimation , 2013 .

[15]  Yaguo Lei,et al.  Application of the EEMD method to rotor fault diagnosis of rotating machinery , 2009 .

[16]  Guo Yijie Fault Feature Enhancement Method for Rolling Bearing Based on Wavelet Packet-coordinate Transformation , 2011 .

[17]  Yuesheng Xu,et al.  A B-spline approach for empirical mode decompositions , 2006, Adv. Comput. Math..

[18]  Ming-Hsiang Shih,et al.  Developing Dynamic Digital Image Techniques with Continuous Parameters to Detect Structural Damage , 2013, TheScientificWorldJournal.

[19]  Norden E. Huang,et al.  Ensemble Empirical Mode Decomposition: a Noise-Assisted Data Analysis Method , 2009, Adv. Data Sci. Adapt. Anal..

[20]  M. Bahrawi,et al.  Speckle Cross-Correlation Method in Measuring Fine Surface Displacements , 2012 .

[21]  Rene de Jesus Romero-Troncoso,et al.  Empirical Mode Decomposition and Neural Networks on FPGA for Fault Diagnosis in Induction Motors , 2014, TheScientificWorldJournal.

[22]  David Camarena-Martinez,et al.  EEMD-MUSIC-Based Analysis for Natural Frequencies Identification of Structures Using Artificial and Natural Excitations , 2014, TheScientificWorldJournal.

[23]  Zhang Chao A Bearing Fault Diagnosis Method Based on EEMD Energy Entropy and SVM , 2011 .

[24]  Kusma Kumari Cheepurupalli,et al.  Noisy Reverberation Suppression Using AdaBoost Based EMD in Underwater Scenario , 2014 .

[25]  Norden E. Huang,et al.  Complementary Ensemble Empirical Mode Decomposition: a Novel Noise Enhanced Data Analysis Method , 2010, Adv. Data Sci. Adapt. Anal..

[26]  Danilo P. Mandic,et al.  Emd via mEMD: multivariate noise-Aided Computation of Standard EMD , 2013, Adv. Data Sci. Adapt. Anal..

[27]  D. P. Mandic,et al.  Multivariate empirical mode decomposition , 2010, Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences.