Quantitative Evaluation on Valve Leakage of Reciprocating Compressor Using System Characteristic Diagnosis Method
Abstract
:1. Introduction
2. Fault Diagnosis Method Based on System Characteristics
2.1. Mechanism Analysis of the Influence of Valve Leakage on the RC
2.2. The Model of RC Motor Current and Excitation Signal Selection
2.3. Response Signal Selection
3. Experimental Test-Rig and Data Acquisition
3.1. Experimental Test-Rig Design
3.2. Data Collection
4. Feature Extraction of RC Valve Fault
4.1. Fault Characteristics Analysis of Excitation Signal
4.1.1. Spectrum Analysis of Excitation Signal
4.1.2. Excitation Signals EEMD and Selection of IMFs
4.1.3. Extraction of Excitation CIs
4.2. Fault Characteristics Analysis of Response Signal
4.2.1. Spectrum Analysis of Response Signal
4.2.2. Extraction of Response CIs
5. Pattern Recognition and Quantitative Diagnosis
5.1. Pattern Recognition of RC Valve Leakage
5.1.1. Contrast Experiment I: Fault Pattern Recognition Based on Excitation CIs
5.1.2. Contrast Experiment II: Fault Pattern Recognition Based on Response CIs
5.1.3. Pattern Recognition Based on System CIs
5.2. Quantitative Diagnostic
5.2.1. Quantitative Diagnoser Construction
5.2.2. Quantitative Diagnostic Verification
5.3. Applications
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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ICs | K | RMS | CC | ICs | K | RMS | CC |
LL | LL | ||||||
0 mm | 1.67 | 78.32 | 1 | 2 mm | 1.62 | 148.657 | 0.97 |
1.66 | 62.93 | 1 | 1.65 | 124.968 | 0.99 | ||
1.68 | 72.86 | 1 | 1.67 | 137.926 | 0.97 | ||
··· | ··· | ··· | ··· | ··· | ··· | ||
1.63 | 70.88 | 1 | 1.64 | 133.688 | 0.99 | ||
1.71 | 65.83 | 1 | 1.68 | 131.644 | 0.98 | ||
1.64 | 82.17 | 1 | 1.65 | 153.987 | 0.98 | ||
6 mm | 1.54 | 120.70 | 0.51 | 8 mm | 1.32 | 65.03 | 0.58 |
1.48 | 103.66 | 0.37 | 1.38 | 73.13 | 0.29 | ||
1.50 | 118.93 | 0.63 | 1.29 | 75.44 | 0.41 | ||
··· | ··· | ··· | ··· | ··· | ··· | ||
1.48 | 120.88 | 0.70 | 1.29 | 74.08 | 0.43 | ||
1.55 | 113.61 | 0.66 | 1.28 | 59.45 | 0.56 | ||
1.67 | 137.09 | 0.76 | 1.51 | 59.52 | 0.68 |
ICs | ERF | EDRF | ETRF | ICs | ERF | EDRF | ETRF |
---|---|---|---|---|---|---|---|
LL | LL | ||||||
0 mm | 1.88 | 2.21 | 5.09 | 2 mm | 2.79 | 5.11 | 6.75 |
1.86 | 2.17 | 6.03 | 2.83 | 5.26 | 6.91 | ||
1.86 | 2.48 | 6.65 | 2.86 | 5.09 | 6.48 | ||
··· | ··· | ··· | ··· | ··· | ··· | ||
2.23 | 3.03 | 6.41 | 2.84 | 5.42 | 5.29 | ||
1.59 | 2.84 | 6.23 | 2.82 | 5.71 | 5.92 | ||
2.02 | 2.51 | 6.56 | 2.81 | 5.50 | 6.32 | ||
6 mm | 2.45 | 2.58 | 5.40 | 8 mm | 3.08 | 2.88 | 5.37 |
2.70 | 2.73 | 5.09 | 2.47 | 2.59 | 4.00 | ||
2.44 | 3.31 | 6.21 | 3.05 | 2.77 | 5.27 | ||
··· | ··· | ··· | ··· | ··· | ··· | ||
2.50 | 3.01 | 6.39 | 2.56 | 2.59 | 4.99 | ||
2.76 | 3.45 | 4.42 | 2.98 | 2.74 | 6.61 | ||
2.73 | 3.04 | 5.57 | 2.59 | 2.50 | 5.21 |
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Han, L.; Jiang, K.; Wang, Q.; Wang, X.; Zhou, Y. Quantitative Evaluation on Valve Leakage of Reciprocating Compressor Using System Characteristic Diagnosis Method. Appl. Sci. 2020, 10, 1946. https://doi.org/10.3390/app10061946
Han L, Jiang K, Wang Q, Wang X, Zhou Y. Quantitative Evaluation on Valve Leakage of Reciprocating Compressor Using System Characteristic Diagnosis Method. Applied Sciences. 2020; 10(6):1946. https://doi.org/10.3390/app10061946
Chicago/Turabian StyleHan, Liubang, Kuosheng Jiang, Qidong Wang, Xuanyao Wang, and Yuanyuan Zhou. 2020. "Quantitative Evaluation on Valve Leakage of Reciprocating Compressor Using System Characteristic Diagnosis Method" Applied Sciences 10, no. 6: 1946. https://doi.org/10.3390/app10061946