Adaptive variational mode decomposition and its application to multi-fault detection using mechanical vibration signals.

Vibration-based feature extraction of multiple transient fault signals is a challenge in the field of rotating machinery fault diagnosis. Variational mode decomposition (VMD) has great potential for multiple faults decoupling because of its equivalent filtering characteristics. However, the two key hyper-parameters of VMD, i.e., the number of modes and balancing parameter, require to be predefined, thereby resulting in sub-optimal decomposition performance. Although some studies focused on the adaptive parameter determination, the problems in these improved methods like mode redundancy or being sensitive to random impacts still need to be solved. To overcome these drawbacks, an adaptive variational mode decomposition (AVMD) method is developed in this paper. In the proposed method, a novel index called syncretic impact index (SII) is firstly introduced for better evaluation of the complex impulsive fault components of signals. It can exclude the effects of interference terms and concentrate on the fault impacts effectively. The optimal parameters of VMD are selected based on the index SII through the artificial bee colony (ABC) algorithm. The envelope power spectrum, proved to be more capable for fault feature extraction than the envelope spectrum, is applied in this study. Analysis on simulated signals and two experimental applications based on the proposed method demonstrates its effectiveness over other existing methods. The results indicate that the proposed method outperforms in separating impulsive multi-fault signals, thus being an efficient method for multi-fault diagnosis of rotating machines.

[1]  Paolo Pennacchi,et al.  The relationship between kurtosis- and envelope-based indexes for the diagnostic of rolling element bearings , 2014 .

[2]  Yanyang Zi,et al.  Enhancement of signal denoising and multiple fault signatures detecting in rotating machinery using dual-tree complex wavelet transform , 2010 .

[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]  Ming Liang,et al.  Identification of multiple transient faults based on the adaptive spectral kurtosis method , 2012 .

[5]  Jing Lin,et al.  Identification of mechanical compound-fault based on the improved parameter-adaptive variational mode decomposition. , 2019, ISA transactions.

[6]  Jing Yuan,et al.  Wavelet transform based on inner product in fault diagnosis of rotating machinery: A review , 2016 .

[7]  Tomasz Barszcz,et al.  A novel method for the optimal band selection for vibration signal demodulation and comparison with the Kurtogram , 2011 .

[8]  Gang Tang,et al.  Underdetermined blind separation of bearing faults in hyperplane space with variational mode decomposition , 2019, Mechanical Systems and Signal Processing.

[9]  Huaqing Wang,et al.  A Rolling Bearing Fault Diagnosis Method Based on Variational Mode Decomposition and an Improved Kernel Extreme Learning Machine , 2017 .

[10]  Yaguo Lei,et al.  A Hybrid Prognostics Approach for Estimating Remaining Useful Life of Rolling Element Bearings , 2020, IEEE Transactions on Reliability.

[11]  Dervis Karaboga,et al.  A comprehensive survey: artificial bee colony (ABC) algorithm and applications , 2012, Artificial Intelligence Review.

[12]  Dervis Karaboga,et al.  A comparative study of Artificial Bee Colony algorithm , 2009, Appl. Math. Comput..

[13]  Yanxue Wang,et al.  Research on variational mode decomposition and its application in detecting rub-impact fault of the rotor system , 2015 .

[14]  Robert B. Randall,et al.  THE RELATIONSHIP BETWEEN SPECTRAL CORRELATION AND ENVELOPE ANALYSIS IN THE DIAGNOSTICS OF BEARING FAULTS AND OTHER CYCLOSTATIONARY MACHINE SIGNALS , 2001 .

[15]  Dejie Yu,et al.  Energy operator demodulating of optimal resonance components for the compound faults diagnosis of gearboxes , 2015 .

[16]  Minping Jia,et al.  Compound fault diagnosis of rotating machinery based on OVMD and a 1.5-dimension envelope spectrum , 2016 .

[17]  Jie Chen,et al.  Incipient fault diagnosis of rolling bearings based on adaptive variational mode decomposition and Teager energy operator , 2020 .

[18]  Yanxue Wang,et al.  Detecting Rub-Impact Fault of Rotor System Based on Variational Mode Decomposition , 2015 .

[19]  Jiaxu Wang,et al.  Weak feature enhancement in machinery fault diagnosis using empirical wavelet transform and an improved adaptive bistable stochastic resonance. , 2019, ISA transactions.

[20]  Robert B. Randall,et al.  Rolling element bearing diagnostics—A tutorial , 2011 .

[21]  Yaguo Lei,et al.  Applications of stochastic resonance to machinery fault detection: A review and tutorial , 2019, Mechanical Systems and Signal Processing.

[22]  V. Purushotham,et al.  Multi-fault diagnosis of rolling bearing elements using wavelet analysis and hidden Markov model based fault recognition , 2005 .

[23]  Ruqiang Yan,et al.  Kurtosis based weighted sparse model with convex optimization technique for bearing fault diagnosis , 2016 .

[24]  Cancan Yi,et al.  A Fault Diagnosis Scheme for Rolling Bearing Based on Particle Swarm Optimization in Variational Mode Decomposition , 2016 .

[25]  Yimin Zhan,et al.  Robust detection of gearbox deterioration using compromised autoregressive modeling and Kolmogorov–Smirnov test statistic—Part I: Compromised autoregressive modeling with the aid of hypothesis tests and simulation analysis , 2007 .

[26]  Ming Zhao,et al.  Identification of multiple faults in rotating machinery based on minimum entropy deconvolution combined with spectral kurtosis , 2016 .

[27]  Wentao Hu,et al.  The fault feature extraction and classification of gear using principal component analysis and kernel principal component analysis based on the wavelet packet transform , 2014 .

[28]  Yaguo Lei,et al.  Application of a Novel Hybrid Intelligent Method to Compound Fault Diagnosis of Locomotive Roller Bearings , 2008 .

[29]  D. Karaboga,et al.  On the performance of artificial bee colony (ABC) algorithm , 2008, Appl. Soft Comput..

[30]  Xiaolong Wang,et al.  Diagnosis of compound faults of rolling bearings through adaptive maximum correlated kurtosis deconvolution , 2016 .

[31]  Yu Jiang,et al.  Recent progress on decoupling diagnosis of hybrid failures in gear transmission systems using vibration sensor signal: A review , 2016 .

[32]  Dominique Zosso,et al.  Variational Mode Decomposition , 2014, IEEE Transactions on Signal Processing.

[33]  Xiaoyuan Zhang,et al.  Multi-fault diagnosis for rolling element bearings based on ensemble empirical mode decomposition and optimized support vector machines , 2013 .

[34]  Jijian Lian,et al.  Adaptive variational mode decomposition method for signal processing based on mode characteristic , 2018, Mechanical Systems and Signal Processing.

[35]  Laizhong Cui,et al.  A novel artificial bee colony algorithm with depth-first search framework and elite-guided search equation , 2016, Inf. Sci..