Multiple Fault Detection in Induction Motors through Homogeneity and Kurtosis Computation
Abstract
:1. Introduction
2. Theoretical Framework
2.1. Broken Rotor Bar Fault (BRB)
2.2. Bearing Fault (BRN)
2.3. Mechanical Unbalance Fault (UNB)
2.4. Homogeneity
2.5. Kurtosis
2.6. Artificial Neural Networks
3. Experimentation
4. Obtained Results
Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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IM Condition | HLT | 1BRB | 2BRB | BRN | UNB | Overall Effectiveness |
---|---|---|---|---|---|---|
HLT | 20 | 0 | 0 | 0 | 0 | 100% |
1BRB | 0 | 20 | 0 | 0 | 0 | 100% |
2BRB | 0 | 0 | 20 | 0 | 0 | 100% |
BRN | 0 | 0 | 0 | 20 | 0 | 100% |
UNB | 0 | 0 | 0 | 0 | 20 | 100% |
Method | Accuracy Rate | Applied Techniques | Detected Fault |
---|---|---|---|
Garcia-Bracamonte et al. [8] | From 90% to 99% | Autocorrelation; FFT; independent component analysis; region-of-interest segmentation; and 1-D, 2-D, and 3-D vector extraction. | BRB only |
Yang and Shi [27] | Qualitative | Wavelet packet, threshold optimization, Shannon entropy, wavelet packet reconstruction, and FFT computation. | |
Haroun et al. [28] | From 81.4% to 100% | Zero-crossing time, envelope extraction of the three phase currents, frequency domain characterization, ReliefF algorithm, and self-organizing map. | |
Li et al. [29] | Qualitative | Fourier transform, power spectral density estimation, local characteristic frequency bands’ synchronization, spectrum transformation, central point computation, and kurtosis energy-based spectrum. | |
Gong et al. [30] | Qualitative | Wavelet packet transform and spectral kurtosis. | BRN only |
Gao and Xiang [31] | Qualitative | Ensemble empirical mode decomposition, L-Kurtosis value, FFT, clustering-based segmentation, inverse FFT, and Hilbert envelope spectrum computation. | |
Navasari et al. [32] | From 98% to 100% | Wavelet decomposition, sampling of the decomposition streams, energy computation, and ANN. | |
Ben Abid et al. [33] | 100% | Stationary wavelet packet transform, root mean square (RMS), aiNet clustering algorithm, and directed acyclic graph support vector machine. | |
Rahman and Uddin [16] | Qualitative | Standard deviation, crest factor, and kurtosis computation; FFT; DWT-based frequency domain analysis; Hilbert transform; and envelope detection. | UNB only |
Tahir et al. [17] | 100% | Multi-axis RMS value, variance, skewness, kurtosis, impulse factor, and range computation; signed distance computation; and SVM. | |
Guo et al. [18] | 86.87% | DC part removal, signal resampling, continuous wavelet transform scalogram (CWTS), cropping, and convolutional neural network. | |
Cunha Palacios et al. [34] | From 99.7% to 100% | Signal segmentation, peak value, module computation, crossover detection, normalization, input selection, classification through different intelligent algorithms. | BRN, BRB, and Stator Faults |
Jigyasu et al. [35] | From 99.7% to 100% | RMS, variance, kurtosis, peak value, skewness, median, crest factor, margin factor, impulse factor, shape, and median range extraction; different neural network structures. | BRN, BRB, and Eccentricity |
Proposed Approach | 100% | Homogeneity, kurtosis, and an ANN. | 1BRB, 2BRB, BRN, and UNB |
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Martinez-Herrera, A.L.; Ferrucho-Alvarez, E.R.; Ledesma-Carrillo, L.M.; Mata-Chavez, R.I.; Lopez-Ramirez, M.; Cabal-Yepez, E. Multiple Fault Detection in Induction Motors through Homogeneity and Kurtosis Computation. Energies 2022, 15, 1541. https://doi.org/10.3390/en15041541
Martinez-Herrera AL, Ferrucho-Alvarez ER, Ledesma-Carrillo LM, Mata-Chavez RI, Lopez-Ramirez M, Cabal-Yepez E. Multiple Fault Detection in Induction Motors through Homogeneity and Kurtosis Computation. Energies. 2022; 15(4):1541. https://doi.org/10.3390/en15041541
Chicago/Turabian StyleMartinez-Herrera, Ana L., Edna R. Ferrucho-Alvarez, Luis M. Ledesma-Carrillo, Ruth I. Mata-Chavez, Misael Lopez-Ramirez, and Eduardo Cabal-Yepez. 2022. "Multiple Fault Detection in Induction Motors through Homogeneity and Kurtosis Computation" Energies 15, no. 4: 1541. https://doi.org/10.3390/en15041541
APA StyleMartinez-Herrera, A. L., Ferrucho-Alvarez, E. R., Ledesma-Carrillo, L. M., Mata-Chavez, R. I., Lopez-Ramirez, M., & Cabal-Yepez, E. (2022). Multiple Fault Detection in Induction Motors through Homogeneity and Kurtosis Computation. Energies, 15(4), 1541. https://doi.org/10.3390/en15041541