Early Fault Detection of Rolling Bearings Based on Time-Varying Filtering Empirical Mode Decomposition and Adaptive Multipoint Optimal Minimum Entropy Deconvolution Adjusted
Abstract
:1. Introduction
2. TVFEMD Algorithm
2.1. Principle of TVFEMD Algorithm
2.2. Selection of Modal Components
3. Adaptive MOMEDA
3.1. Principle of MOMEDA Method
3.2. Analysis of MOMEDA Input Parameters
- The window function . The window function is used to further extend the target vector, which can improve the clarity of the spectrum and the accuracy of fault shock sequence extraction. In consideration of computational efficiency and the convolution enhancement effect, rectangular windows with a length of 3 are adopted, that is, .
- The filter length . It directly affects the effect of pulse sequence extraction. In order to ensure that the extracted shock sequence can cover the entire frequency band of the fault, the filter length should meet the following condition [25,26]:
- Fault cycle search range . and are the initial and final values of periodic fault search, respectively. According to the calculation formula of bearing characteristic frequency, the characteristic frequency and failure period of each unit (inner ring , outer ring and rolling body ) can be calculated as follows: ( is the inner ring failure cycle; is the failure period of the outer ring; and is the failure period of the rolling body. Since the characteristic frequency between each unit of the bearing satisfies , the failure period satisfies . When the search interval contains the fault period, the final value will not affect the extraction of the fault impact sequence [21]. Therefore, is chosen according to the actual operation of bearings. In the experiment, according to the fault forms of different bearing units, the initial value of the failure period is selected in the interval range .
- Optimize parameters and . To select the optimal parameter combination , a new index of multi-objective optimization is constructed to adaptively determine the filter length and the initial value of the fault cycle search. In the time domain, the root mean square of the maximum of autocorrelation function (MOAF) is used to measure the periodic fault impact components contained in the deconvolution signals [26,27]. The core of this index is the autocorrelation function. If the main component of a deconvolved signal is noise, its autocorrelation function will soon decay to 0, and the MOAF value will be very small and close to 0. If the deconvolved signal contains obvious periodic fault impact components, its autocorrelation function is periodic, and the MOAF value is larger. Therefore, the MOFM index is used to measure the extraction effect of deconvolution operation on fault shock sequences, and its expression is as follows:
3.3. MOMEDA with Adaptive Parameters
4. Simulation Signal Analysis
5. Measured Signal Analysis
5.1. Introduction of the Experimental Platform
5.2. Analysis of the Bearing Outer Ring Fault Signal
5.3. Bearing Inner-Race Fault Signal Analysis
6. Conclusions
- (1)
- By constructing a new composite index as the objective function of parameter optimization, the GWOMOMEDA method uses the excellent global search characteristics of the gray wolf optimization algorithm to determine the optimal influence parameters adaptively, which avoids the interference of human subjective factors in parameter selection and achieves optimal deconvolution results.
- (2)
- The bearing early fault impact signal can easily cause modal aliasing, which is difficult to completely separate. The TVFEMD method overcomes the modal aliasing problem of the EMD method and can extract fault features from deconvolution signals well. The TVFEMD decomposition of the fault signal not only solves the problem of mode aliasing after the use of traditional EMD decomposition, but it also maintains the integrity of the fault signal better, which overcomes the shortcomings of other EMD improvement methods.
- (3)
- The parameter-optimized MOMEDA method can significantly reduce the influence of noise on the TVFEMD method, and the effective modal components of the TVFEMD method are selected according to the weighted kurtosis index with higher reliability. Therefore, the combination of the parameter-optimized MOMEDA and TVFEMD methods can realize the accurate extraction of early fault features of rolling bearings, and the effect is better than the traditional MKCD deconvolution method and fast spectral kurtosis FSK class method.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
EMD | empirical mode decomposition |
TVFEMD | time-varying filtering EMD |
MOMEDA | multipoint optimal minimum entropy deconvolution adjusted |
IMF | intrinsic mode function |
EEMD | ensemble empirical mode decomposition |
CEEMD | complementary ensemble empirical mode decomposition |
CEEMDAN | complete ensemble empirical mode decomposition with adaptive noise |
ESK | envelope spectrum kurtosis |
MOAF | maximum of autocorrelation function |
GWO | gray wolf optimizer |
FSK | fast spectral kurtosis |
MCKD | maximum correlation kurtosis deconvolution |
FCK | first-order correlated kurtosis |
FFC | fault feature coefficient |
SE | sampling entropy |
ESE | envelope spectrum entropy |
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Method | Evaluation Index | |||
---|---|---|---|---|
FCK/10−4 | FFC/10−2 | SE | ESE | |
FSK | 0.93 | 1.09 | 1.483 | 1.117 |
MCKD | 1.13 | 1.42 | 1.391 | 1.105 |
TVFEMD-MOMEDA(L = 600) | 3.13 | 3.77 | 1.227 | 0.950 |
TVFEMD-MODEDA(Ts = 50) | 2.16 | 2.95 | 1.275 | 0.986 |
TVFEMD-GWO-MOMEDA | 5.52 | 6.14 | 1.124 | 0.846 |
Type | Inner Diameter | Outer Diameter | Pitch Diameter | Ball Diameter | Number of Balls | Angle |
---|---|---|---|---|---|---|
ER-12K | 19.05 mm | 47 mm | 42.05 mm | 7.94 mm | 8 | 0 |
Method | Evaluation Index | |||
---|---|---|---|---|
FCK/10−4 | FFC/10−2 | SE | ESE | |
FSK | 0.83 | 0.41 | 1.7149 | 1.2450 |
MCKD | 1.94 | 1.02 | 1.7438 | 1.2755 |
TVFEMD-MOMEDA(L = 600) | 2.97 | 2.29 | 1.5309 | 1.1509 |
TVFEMD-MODEDA(Ts = 50) | 2.38 | 1.92 | 1.5644 | 1.1774 |
TVFEMD-GWO-MOMEDA | 4.46 | 3.84 | 1.3392 | 1.0277 |
Method | Evaluation Index | |||
---|---|---|---|---|
FCK/10−4 | FFC/10−2 | SE | ESE | |
FSK | 1.37 | 1.03 | 1.7726 | 1.3115 |
MCKD | 1.92 | 1.65 | 1.7953 | 1.3290 |
TVFEMD-MOMEDA(L = 600) | 3.01 | 2.98 | 1.5861 | 1.1894 |
TVFEMD-MODEDA(Ts = 50) | 2.77 | 2.29 | 1.5763 | 1.1979 |
TVFEMD-GWO-MOMEDA | 4.79 | 4.26 | 1.4926 | 1.0752 |
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Song, S.; Wang, W. Early Fault Detection of Rolling Bearings Based on Time-Varying Filtering Empirical Mode Decomposition and Adaptive Multipoint Optimal Minimum Entropy Deconvolution Adjusted. Entropy 2023, 25, 1452. https://doi.org/10.3390/e25101452
Song S, Wang W. Early Fault Detection of Rolling Bearings Based on Time-Varying Filtering Empirical Mode Decomposition and Adaptive Multipoint Optimal Minimum Entropy Deconvolution Adjusted. Entropy. 2023; 25(10):1452. https://doi.org/10.3390/e25101452
Chicago/Turabian StyleSong, Shuo, and Wenbo Wang. 2023. "Early Fault Detection of Rolling Bearings Based on Time-Varying Filtering Empirical Mode Decomposition and Adaptive Multipoint Optimal Minimum Entropy Deconvolution Adjusted" Entropy 25, no. 10: 1452. https://doi.org/10.3390/e25101452
APA StyleSong, S., & Wang, W. (2023). Early Fault Detection of Rolling Bearings Based on Time-Varying Filtering Empirical Mode Decomposition and Adaptive Multipoint Optimal Minimum Entropy Deconvolution Adjusted. Entropy, 25(10), 1452. https://doi.org/10.3390/e25101452