Fault Feature Extraction and Degradation State Identification for Piezoelectric Ceramics Cracking in Ultrasonic Motor Based on Multi-Scale Morphological Gradient

Piezoelectric ceramics cracking is one of the main faults of the ultrasonic motor. According to the morphological mathematics and information entropy, a method based on multi-scale morphological gradient was proposed for ceramics fault feature extraction and degradation state identification. To solve the problem that traditional multi-scale morphology spectral (MMS) entropy cannot exactly describe the performance degradation of the piezoelectric ceramics, multi-scale morphology gradient difference (MMGD) entropy was proposed to improve the sensitivity to the fault. Furthermore, multi-scale morphology gradient singular (MMGS) entropy was presented to reduce the system noise interference to the useful fault information. The disturbance analysis of temperature, load, and noise for MMGD entropy and MMGS entropy was also given in this paper. Combining the advantages of the above two entropies, a standard degradation mode matrix was built to distinguish the degradation state via the grey correlation analysis. The analysis of actual test samples demonstrated that this method is feasible and effective to extract the fault feature and indicate the degradation of piezoelectric cracking in ultrasonic motor.

[1]  Patrice Minotti,et al.  High-performance load-adaptive speed control for ultrasonic motors , 1998 .

[2]  Ning-ning Zhou,et al.  Characteristics of ring type traveling wave ultrasonic motor in vacuum. , 2009, Ultrasonics.

[3]  Xiao Long Zhang,et al.  Faults diagnosis of rolling element bearings based on modified morphological method , 2011 .

[4]  Bing Li,et al.  A weighted multi-scale morphological gradient filter for rolling element bearing fault detection. , 2011, ISA transactions.

[5]  D. Stepanenko,et al.  Development and study of novel non-contact ultrasonic motor based on principle of structural asymmetry. , 2012, Ultrasonics.

[6]  S.A.V. Satya Murty,et al.  Roller element bearing fault diagnosis using singular spectrum analysis , 2013 .

[7]  Wang Bin Motor bearing forecast feature extracting and degradation status identification based on multi-scale morphological decomposition spectral entropy , 2013 .

[8]  Yong Zhu,et al.  Gear fault diagnosis method based on local mean decomposition and generalized morphological fractal dimensions , 2015 .

[9]  Xiaoming Xue,et al.  An adaptively fast ensemble empirical mode decomposition method and its applications to rolling element bearing fault diagnosis , 2015 .

[10]  Shiyang Li,et al.  Temperature evaluation of traveling-wave ultrasonic motor considering interaction between temperature rise and motor parameters. , 2015, Ultrasonics.

[11]  F. Luo,et al.  Experimental investigation on sandwich structure ring-type ultrasonic motor. , 2015, Ultrasonics.

[12]  Gang Chen,et al.  Study on Hankel matrix-based SVD and its application in rolling element bearing fault diagnosis , 2015 .

[13]  Haifeng Gao,et al.  A hybrid fault diagnosis method using morphological filter–translation invariant wavelet and improved ensemble empirical mode decomposition , 2015 .

[14]  Gangbing Song,et al.  Multivariate empirical mode decomposition and its application to fault diagnosis of rolling bearing , 2016 .

[15]  Min Wang,et al.  A method for the compound fault diagnosis of gearboxes based on morphological component analysis , 2016 .

[16]  Jinglong Chen,et al.  Mono-component feature extraction for mechanical fault diagnosis using modified empirical wavelet transform via data-driven adaptive Fourier spectrum segment , 2016 .

[17]  Xiang Li,et al.  Dynamic modeling and characteristics analysis of a modal-independent linear ultrasonic motor. , 2016, Ultrasonics.

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

[19]  Dong Wang,et al.  Novel Gauss-Hermite integration based Bayesian inference on optimal wavelet parameters for bearing fault diagnosis , 2016 .

[20]  Jian Sun,et al.  The morphological undecimated wavelet decomposition – Discrete cosine transform composite spectrum fusion algorithm and its application on hydraulic pumps , 2016 .

[21]  Yongbo Li,et al.  Early fault feature extraction of rolling bearing based on ICD and tunable Q-factor wavelet transform , 2017 .

[22]  Marc Thomas,et al.  A Frequency-Weighted Energy Operator and complementary ensemble empirical mode decomposition for bearing fault detection , 2017 .

[23]  Sanjay H Upadhyay,et al.  Bearing performance degradation assessment based on a combination of empirical mode decomposition and k-medoids clustering , 2017 .

[24]  Bing Wang,et al.  The application of a general mathematical morphological particle as a novel indicator for the performance degradation assessment of a bearing , 2017 .

[25]  Mahmoud Taibi,et al.  Using multi-scale entropy and principal component analysis to monitor gears degradation via the motor current signature analysis , 2017 .

[26]  Ming J. Zuo,et al.  Diagonal slice spectrum assisted optimal scale morphological filter for rolling element bearing fault diagnosis , 2017 .

[27]  Ming J. Zuo,et al.  Fault detection method for railway wheel flat using an adaptive multiscale morphological filter , 2017 .

[28]  Ai Yanting,et al.  Fusion information entropy method of rolling bearing fault diagnosis based on n-dimensional characteristic parameter distance , 2017 .

[29]  Hongru Li,et al.  Degradation feature extraction of hydraulic pump based on LCD-DCS fusion algorithm , 2018 .

[30]  Zaoxiao Zhang,et al.  A new qualitative acoustic emission parameter based on Shannon’s entropy for damage monitoring , 2018 .

[31]  Satinder Singh,et al.  Rolling element bearing fault diagnosis based on Over-Complete rational dilation wavelet transform and auto-correlation of analytic energy operator , 2018 .

[32]  Jianxin Liu,et al.  Train axle bearing fault detection using a feature selection scheme based multi-scale morphological filter , 2018 .