Novel Investigation of Higher Order Spectral Technologies for Fault Diagnosis of Motor-Based Rotating Machinery
Abstract
:1. Introduction
- novel comparison of the CCSM3 and CCCS3 technologies via comprehensive modeling trials
- novel comparison of the CCSM4 and CCCS4 technologies via comprehensive modeling trials
- novel comparison of the CCSM3 technologies and CCCS3 technologies via comprehensive experimental trials
- The objectives of the research are as follows:
- perform a novel comprehensive validation of the CCSM3 and CCSM4 via modeling trials for pristine and faulty mechanical components
- perform a novel comparison of the CCSM3 with the CCCS3 and the CCSM4 with the CCCS4 via modeling trials for pristine and faulty mechanical components
- perform novel comprehensive validation of the CCSM3 via experimental trials for pristine and faulty motor bearings, using motor current signal processing
- perform a novel comparison of the CCSM3 with the CCCS3 via experimental trials for pristine and faulty motor bearings, using motor current signal processing
2. Higher-Order Spectral Cross-Correlations
3. Technology Validation via Modeling
- for healthy components
- for damaged components with relative damage severity of 5%
- for damaged components with relative damage severity of 10%
3.1. Validation of Third Order Cross-Correlations via Modeling
3.2. Validation of Fourth Order Cross-Correlations via Modeling
4. Experimental Technology Validation
- segment current data into K non-overlapped segments of N samples each
- estimate DFT coefficients for each segment
- calculate CCSM3 estimates for all segments via multiplications of moduli of the selected DFT coefficients and average these estimates over K segments
4.1. Inner Race Defect Analysis
4.2. Outer Race
5. Technology Comparisons
6. Conclusions
- the quality of data capture equipment. A low noise current transducer (i.e., self-noise was −120 dB in the whole frequency range) and 24-bit DAQ are minimal requirements for current data capture
- the computational complexity of the estimations of the proposed technologies. This limitation is easy to overcome via powerful IT tools.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
CCSM | cross-correlation of spectral moduli |
CCSM3 | cross-correlation of spectral moduli of order 3 |
CCSM4 | cross-correlation of spectral moduli of order 4 |
CCCS | cross-correlation of complex spectra |
CCCS3 | cross-correlation of complex spectra of order 3 |
CCCS4 | cross-correlation of complex spectra of order 4 |
SNR | signal-to-noise ratio |
IM | induction motor |
RSH | rotor slot harmonics |
probability density function | |
TPCD | total probability of correct diagnosis |
FC | Fisher criterion |
Appendix A
Correlation Number | |||
---|---|---|---|
1 | 3 | −3 | −3 |
6 | −3 | −3 | |
9 | −3 | −3 | |
2 | 3 | −1 | −3 |
6 | −1 | −3 | |
9 | −1 | −3 | |
3 | 3 | 1 | −3 |
6 | 1 | −3 | |
9 | 1 | −3 | |
4 | 3 | 3 | −3 |
6 | 3 | −3 | |
9 | 3 | −3 | |
5 | 3 | −3 | −2 |
6 | −3 | −2 | |
9 | −3 | −2 | |
6 | 3 | −1 | −2 |
6 | −1 | −2 | |
9 | −1 | −2 | |
7 | 3 | 1 | −2 |
6 | 1 | −2 | |
9 | 1 | −2 | |
8 | 3 | 3 | −2 |
6 | 3 | −2 | |
9 | 3 | −2 | |
9 | 3 | −3 | −1 |
6 | −3 | −1 | |
9 | −3 | −1 | |
10 | 3 | −1 | −1 |
6 | −1 | −1 | |
9 | −1 | −1 | |
11 | 3 | 1 | −1 |
6 | 1 | −1 | |
9 | 1 | −1 | |
12 | 3 | 3 | −1 |
6 | 3 | −1 | |
9 | 3 | −1 | |
13 | 3 | −3 | 0 |
6 | −3 | 0 | |
9 | −3 | 0 | |
14 | 3 | −1 | 0 |
6 | −1 | 0 | |
9 | −1 | 0 | |
15 | 3 | 1 | 0 |
6 | 1 | 0 | |
9 | 1 | 0 | |
16 | 3 | 3 | 0 |
6 | 3 | 0 | |
9 | 3 | 0 | |
17 | 3 | −3 | 1 |
6 | −3 | 1 | |
9 | −3 | 1 | |
18 | 3 | −1 | 1 |
6 | −1 | 1 | |
9 | −1 | 1 | |
19 | 3 | 1 | 1 |
6 | 1 | 1 | |
9 | 1 | 1 | |
20 | 3 | 3 | 1 |
6 | 3 | 1 | |
9 | 3 | 1 | |
21 | 3 | −3 | 2 |
6 | −3 | 2 | |
9 | −3 | 2 | |
22 | 3 | −1 | 2 |
6 | −1 | 2 | |
9 | −1 | 2 | |
23 | 3 | 1 | 2 |
6 | 1 | 2 | |
9 | 1 | 2 | |
24 | 3 | 3 | 2 |
6 | 3 | 2 | |
9 | 3 | 2 | |
25 | 3 | −3 | 3 |
6 | −3 | 3 | |
9 | −3 | 3 | |
26 | 3 | −1 | 3 |
6 | −1 | 3 | |
9 | −1 | 3 | |
27 | 3 | 1 | 3 |
6 | 1 | 3 | |
9 | 1 | 3 | |
28 | 3 | 3 | 3 |
6 | 3 | 3 | |
9 | 3 | 3 |
Correlation Number | ||
---|---|---|
1 | 4 | −5 |
4 | −3 | |
4 | −1 | |
2 | 4 | 1 |
4 | 3 | |
4 | 5 | |
3 | 8 | −5 |
8 | −3 | |
8 | −1 | |
4 | 8 | 1 |
8 | 3 | |
8 | 5 |
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Bearing | Introduced Damage | Fault Severity Ratio [19] | Figure |
---|---|---|---|
in1 | inner race pit damage with diameter of 1 mm and depth of 0.5 mm | 1.20% | Figure 8A |
in2 | inner race scratch damage across the bearing rolling direction with length of 3 mm, width of 1 mm, and depth of 0.7 mm | 1.20% | Figure 8B |
out1 | outer race scratch damage along the bearing rolling direction with length of 3 mm, width of 1 mm, and depth of 0.5 mm | 2.23% | Figure 8C |
out2 | outer race scratch damage across the bearing rolling direction with length of 3 mm, width of 1 mm, and depth of 0.5 mm | 0.74% | Figure 8D |
Sampling Frequency [Hz] | Total Number of Operations |
---|---|
65,536 | 310,778,788 |
32,768 | 155,458,468 |
16,384 | 77,798,308 |
8192 | 38,968,181 |
FC | TPCD | |||||
---|---|---|---|---|---|---|
CCSM3 | CCCS3 | Gain | CCSM3 | CCCS3 | Gain | |
Simulations | 5.07 | 0.1 | 50.7 | 4.3% | 49% | 11.4 |
Inner race experiments | 19.5 | 0.2 | 97.5 | 1.4% | 39% | 27.9 |
Outer race experiments | 13.2 | 0.03 | 440.0 | 2% | 45% | 22.5 |
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Ciszewski, T.; Gelman, L.; Ball, A.; Abdullahi, A.O.; Jamabo, B.; Ziolko, M. Novel Investigation of Higher Order Spectral Technologies for Fault Diagnosis of Motor-Based Rotating Machinery. Sensors 2023, 23, 3731. https://doi.org/10.3390/s23073731
Ciszewski T, Gelman L, Ball A, Abdullahi AO, Jamabo B, Ziolko M. Novel Investigation of Higher Order Spectral Technologies for Fault Diagnosis of Motor-Based Rotating Machinery. Sensors. 2023; 23(7):3731. https://doi.org/10.3390/s23073731
Chicago/Turabian StyleCiszewski, Tomasz, Len Gelman, Andrew Ball, Abdulmumeen Onimisi Abdullahi, Biebele Jamabo, and Michal Ziolko. 2023. "Novel Investigation of Higher Order Spectral Technologies for Fault Diagnosis of Motor-Based Rotating Machinery" Sensors 23, no. 7: 3731. https://doi.org/10.3390/s23073731
APA StyleCiszewski, T., Gelman, L., Ball, A., Abdullahi, A. O., Jamabo, B., & Ziolko, M. (2023). Novel Investigation of Higher Order Spectral Technologies for Fault Diagnosis of Motor-Based Rotating Machinery. Sensors, 23(7), 3731. https://doi.org/10.3390/s23073731