Modified Singular Spectrum Decomposition and Its Application to Composite Fault Diagnosis of Gearboxes

Under the strong noise environment, the composite fault signal of gearbox is weak, which makes it difficult to extract fault features. For this problem, based on noise-assisted method, we propose a novel method called Modified Singular Spectrum Decomposition (MSSD). Singular Spectrum Decomposition (SSD) has many advantages such as high decomposition precision and strong ability to restrain mode mixing, etc. However, the ability of SSD to extract a weak signal is not ideal, the decomposition results usually contain a lot of redundant noise and mode mixing caused by intermittency, which is also a troubling problem. In order to improve the decomposition efficiency and make up for the defects of SSD, the new method MSSD adds an adaptive and particular noise in every SSD decomposition stage for each trial, and in addition, whenever the input signal is decomposed to obtain an intrinsic module function (IMF), a unique residual is obtained. After multiple decomposition, the average value of the residual is used as input to the next stage, until the residual cannot continue to decompose, which means that the residual component has, at most, one extreme value. Finally, analyzing simulated signals to explain the advantages of MSSD compared to ensemble empirical mode decomposition (EEMD) and complete ensemble local mean decomposition with adaptive noise (CEEMDAN). In order to further prove the effectiveness of MSSD, this new method, MSSD, is applied to the fault diagnosis of an engineering gearbox test stand in an actual engineer project case. The final results show that MSSD can extract more fault feature information, and mode mixing has been improved and suffers less interference compared to SSD.

[1]  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.

[2]  Yaguo Lei,et al.  A fault diagnosis method of rolling element bearings based on CEEMDAN , 2017 .

[3]  Yangkang Chen,et al.  Signal extraction using randomized-order multichannel singular spectrum analysis , 2017 .

[4]  Theodore Alexandrov,et al.  A METHOD OF TREND EXTRACTION USING SINGULAR SPECTRUM ANALYSIS , 2008, 0804.3367.

[5]  Jinfeng Zhang,et al.  Rolling bearing fault diagnosis based on time-delayed feedback monostable stochastic resonance and adaptive minimum entropy deconvolution , 2017 .

[6]  Shibin Wang,et al.  Time-frequency atoms-driven support vector machine method for bearings incipient fault diagnosis , 2016 .

[7]  Patrick Flandrin,et al.  A complete ensemble empirical mode decomposition with adaptive noise , 2011, 2011 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).

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

[9]  Minqiang Xu,et al.  A fault diagnosis scheme for rolling bearing based on local mean decomposition and improved multiscale fuzzy entropy , 2016 .

[10]  Gangbing Song,et al.  Health Degradation Monitoring and Early Fault Diagnosis of a Rolling Bearing Based on CEEMDAN and Improved MMSE , 2018, Materials.

[11]  Guolin He,et al.  An algorithm for improving the coefficient accuracy of wavelet packet analysis , 2014 .

[12]  Jyoti K. Sinha,et al.  An improved data fusion technique for faults diagnosis in rotating machines , 2014 .

[13]  Joël M. H. Karel,et al.  Singular Spectrum Decomposition: a New Method for Time Series Decomposition , 2014, Adv. Data Sci. Adapt. Anal..

[14]  David,et al.  Pitting detection in worm gearboxes with vibration analysis , 2014 .

[15]  Fu-Cheng Su,et al.  Fault diagnosis of rotating machinery using an intelligent order tracking system , 2005 .

[16]  Li Li,et al.  Multi-fault diagnosis study on roller bearing based on multi-kernel support vector machine with chaotic particle swarm optimization , 2014 .

[17]  Fengshou Gu,et al.  A novel procedure for diagnosing multiple faults in rotating machinery. , 2015, ISA transactions.

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

[19]  Rajiv Tiwari,et al.  Multiclass fault diagnosis in gears using support vector machine algorithms based on frequency domain data , 2013 .

[20]  Zhijian Wang,et al.  A Novel Method for Multi-Fault Feature Extraction of a Gearbox under Strong Background Noise , 2017, Entropy.

[21]  Zhijian Wang,et al.  Weak Fault Diagnosis of Wind Turbine Gearboxes Based on MED-LMD , 2017, Entropy.

[22]  Wenhua Du,et al.  Research on Fault Diagnosis of Gearbox with Improved Variational Mode Decomposition , 2018, Sensors.

[23]  Jyoti K. Sinha,et al.  A novel fault diagnosis technique for enhancing maintenance and reliability of rotating machines , 2015 .

[24]  María Eugenia Torres,et al.  Improved complete ensemble EMD: A suitable tool for biomedical signal processing , 2014, Biomed. Signal Process. Control..

[25]  Rajiv Tiwari,et al.  Support vector machine based optimization of multi-fault classification of gears with evolutionary algorithms from time–frequency vibration data , 2014 .

[26]  Zhengjia He,et al.  A novel intelligent gear fault diagnosis model based on EMD and multi-class TSVM , 2012 .

[27]  Rajesh Kumar,et al.  Gear fault identification and localization using analytic wavelet transform of vibration signal , 2013 .

[28]  Luis A Aguirre,et al.  Enhancing multivariate singular spectrum analysis for phase synchronization: The role of observability. , 2016, Chaos.

[29]  Tomasz Barszcz,et al.  Automatic characteristic frequency association and all-sideband demodulation for the detection of a bearing fault , 2016 .

[30]  Jyoti K. Sinha,et al.  Sensitivity analysis of higher order coherent spectra in machine faults diagnosis , 2016 .

[31]  Jiangping Wang,et al.  Vibration-based fault diagnosis of pump using fuzzy technique , 2006 .

[32]  Jyoti K. Sinha,et al.  Use of composite higher order spectra for faults diagnosis of rotating machines with different foundation flexibilities , 2015 .

[33]  Xu Fan,et al.  A combined model based on CEEMDAN and modified flower pollination algorithm for wind speed forecasting , 2017 .

[34]  A. W. Lees,et al.  Model based Identification of Rotating Machines , 2009 .