An Integrated Cumulative Transformation and Feature Fusion Approach for Bearing Degradation Prognostics

Aimed at degradation prognostics of a rolling bearing, this paper proposed a novel cumulative transformation algorithm for data processing and a feature fusion technique for bearing degradation assessment. First, a cumulative transformation is presented to map the original features extracted from a vibration signal to their respective cumulative forms. The technique not only makes the extracted features show a monotonic trend but also reduces the fluctuation; such properties are more propitious to reflect the bearing degradation trend. Then, a new degradation index system is constructed, which fuses multidimensional cumulative features by kernel principal component analysis (KPCA). Finally, an extreme learning machine model based on phase space reconstruction is proposed to predict the degradation trend. The model performance is experimentally validated with a whole-life experiment of a rolling bearing. The results prove that the proposed method reflects the bearing degradation process clearly and achieves a good balance between model accuracy and complexity.

[1]  Marc Thomas,et al.  Tracking surface degradation of ball bearings by means of new time domain scalar indicators , 2008 .

[2]  Yuan Li,et al.  Partial discharge signals separation using cumulative energy function and mathematical morphology gradient , 2016, IEEE Transactions on Dielectrics and Electrical Insulation.

[3]  Fulei Chu,et al.  Application of the wavelet transform in machine condition monitoring and fault diagnostics: a review with bibliography , 2004 .

[4]  Theodoros H. Loutas,et al.  Remaining Useful Life Estimation in Rolling Bearings Utilizing Data-Driven Probabilistic E-Support Vectors Regression , 2013, IEEE Transactions on Reliability.

[5]  M. Pecht,et al.  Estimation of remaining useful life of ball bearings using data driven methodologies , 2012, 2012 IEEE Conference on Prognostics and Health Management.

[6]  Soumaya Yacout,et al.  Prognostics of multiple failure modes in rotating machinery using a pattern-based classifier and cumulative incidence functions , 2019, J. Intell. Manuf..

[7]  Jay Lee,et al.  A novel method for machine performance degradation assessment based on fixed cycle features test , 2009 .

[8]  Chee Kheong Siew,et al.  Extreme learning machine: Theory and applications , 2006, Neurocomputing.

[9]  Michael Pecht,et al.  Modeling Approaches for Prognostics and Health Management of Electronics , 2010 .

[10]  Jay Lee,et al.  Prognostics and health management design for rotary machinery systems—Reviews, methodology and applications , 2014 .

[11]  Linxia Liao,et al.  Discovering Prognostic Features Using Genetic Programming in Remaining Useful Life Prediction , 2014, IEEE Transactions on Industrial Electronics.

[12]  Noureddine Zerhouni,et al.  A feature extraction procedure based on trigonometric functions and cumulative descriptors to enhance prognostics modeling , 2013, 2013 IEEE Conference on Prognostics and Health Management (PHM).

[13]  Du Ruxu,et al.  An Intelligent Online Monitoring and Diagnostic System for Manufacturing Automation , 2008, IEEE Transactions on Automation Science and Engineering.

[14]  Peter W. Tse,et al.  Faulty bearing signal recovery from large noise using a hybrid method based on spectral kurtosis and ensemble empirical mode decomposition , 2012 .

[15]  Ming Jian Zuo,et al.  A Non-Probabilistic Metric Derived From Condition Information for Operational Reliability Assessment of Aero-Engines , 2015, IEEE Transactions on Reliability.

[16]  Xinghui Zhang,et al.  System degradation process modeling for two-stage degraded mode , 2014, 2014 Prognostics and System Health Management Conference (PHM-2014 Hunan).

[17]  Ming Liang,et al.  Fault severity assessment for rolling element bearings using the Lempel–Ziv complexity and continuous wavelet transform , 2009 .

[18]  Fanrang Kong,et al.  Multiscale slope feature extraction for rotating machinery fault diagnosis using wavelet analysis , 2013 .

[19]  Brigitte Chebel-Morello,et al.  Accurate bearing remaining useful life prediction based on Weibull distribution and artificial neural network , 2015 .

[20]  Ruxu Du,et al.  An Intelligent Online Monitoring and Diagnostic System for Manufacturing Automation , 2008, IEEE Trans Autom. Sci. Eng..

[21]  Jay Lee,et al.  Robust performance degradation assessment methods for enhanced rolling element bearing prognostics , 2003, Adv. Eng. Informatics.

[22]  Fanrang Kong,et al.  Fault diagnosis of rotating machinery based on the statistical parameters of wavelet packet paving and a generic support vector regressive classifier , 2013 .

[23]  Jamie B. Coble,et al.  Merging Data Sources to Predict Remaining Useful Life – An Automated Method to Identify Prognostic Parameters , 2010 .

[24]  F. Takens Detecting strange attractors in turbulence , 1981 .

[25]  Noureddine Zerhouni,et al.  Feature Evaluation for Effective Bearing Prognostics , 2013, Qual. Reliab. Eng. Int..

[26]  Yongxiang Zhang,et al.  Residual Life Prediction for Rolling Element Bearings Based on an Effective Degradation Indicator , 2015, Journal of Failure Analysis and Prevention.

[27]  Shaojiang Dong,et al.  Bearing degradation process prediction based on the PCA and optimized LS-SVM model , 2013 .

[28]  Daming Lin,et al.  A review on machinery diagnostics and prognostics implementing condition-based maintenance , 2006 .

[29]  Yaping Wang,et al.  Imperfect preventive maintenance policies for two-process cumulative damage model of degradation and random shocks , 2011, Int. J. Syst. Assur. Eng. Manag..

[30]  Ming J. Zuo,et al.  Vibration signal modeling of a planetary gear set for tooth crack detection , 2015 .

[31]  Bin Zhang,et al.  Degradation Feature Selection for Remaining Useful Life Prediction of Rolling Element Bearings , 2016, Qual. Reliab. Eng. Int..

[32]  Chao Hu,et al.  A Copula-based sampling method for data-driven prognostics and health management , 2013, 2013 IEEE Conference on Prognostics and Health Management (PHM).

[33]  Zigmund Bluvband,et al.  Remaining useful life estimation for systems with non-trendability behaviour , 2012, 2012 IEEE Conference on Prognostics and Health Management.

[34]  Hongtao Zeng,et al.  Demodulation analysis based on adaptive local iterative filtering for bearing fault diagnosis , 2016 .

[35]  Noureddine Zerhouni,et al.  Enabling Health Monitoring Approach Based on Vibration Data for Accurate Prognostics , 2015, IEEE Transactions on Industrial Electronics.

[36]  Gérard-André Capolino,et al.  Advances in Diagnostic Techniques for Induction Machines , 2008, IEEE Transactions on Industrial Electronics.

[37]  Fanrang Kong,et al.  Subspace-based gearbox condition monitoring by kernel principal component analysis , 2007 .

[38]  Xing Wang,et al.  A dynamic multi-scale Markov model based methodology for remaining life prediction , 2011 .