VPSO-SVM-Based Open-Circuit Faults Diagnosis of Five-Phase Marine Current Generator Sets
Abstract
:1. Introduction
1.1. Research Background and Motivations
- (1)
- When machine power and phase current are kept constant, increasing phase number of the machine can reduce phase voltage, resulting in large power output with lower voltage level. This can also avoid the current-sharing problem caused by power electronic devices in series and parallel connections [7].
- (2)
- An MPM can provide more control freedom than a three-phase machine; fault-tolerant operation could be achieved in an MPM if one or more phase is in fault conditions [8].
- (3)
- Compared to a traditional three-phase machine, the dynamic and static characteristics of an MPM are improved [9], making it more suitable for sustainable energy generation systems.
1.2. State of the Art of Marine Current Generation and Its Fault Detection and Diagnosis (FDD)
1.3. Organization of This Article
2. Mathematical Models of Five-Phase Permanent Magnet Synchronous Generator (FP-PMSG)-Based Marine Current Generator Set (MCGS)
2.1. MCGS Structure
2.2. Hydro Turbine Model
2.2.1. Tidal Speed Model
2.2.2. Hydro Turbine Model
2.3. Model of Non-Salient FP-PMSG with Third Harmonic Windings (THWs)
3. Faults Detection and Diagnosis of FP-PMSG
3.1. Empirical Mode Decomposition (EMD)-Hilbert Based Fault Detection and Fault Feature Parameters Extraction
3.2. Support Vector Machine (SVM)-Based Fault Classification
3.3. Variable-Parameter Particle Swarm Optimization (VPSO) for SVM Parameters Optimation
3.4. Working Flow of VPSO-SVM-Based Fault Diagnosis
4. Simulations and Results Analysis
4.1. MCGS Simulation with No Faults
4.2. FP-PMSG Open-Circuit Faults (OCFs) Detection Simulations
- (1)
- single-phase OCFs, for example OCFs in phase a.
- (2)
- OCFs in two adjacent phases, for example OCFs concurrently in phase a and b.
- (3)
- OCFs in two non-adjacent phases, for example OCFs concurrently in phase a and c.
- (1)
- during the first 0.1 s of the simulation, the MCGS was running normally;
- (2)
- at 0.1 s, an OCF happened in single-phase a and was revoked at 0.2 s;
- (3)
- the MCGS was running in normal condition from 0.2 s to 0.3 s;
- (4)
- at 0.3 s, OCFs simultaneously happened in two adjacent phases a and b, and the faults were both removed at 0.4 s;
- (5)
- the MCGS was running in normal condition from 0.4 s to 0.5 s;
- (6)
- at 0.5 s, OCFs happened again concurrently in two non-adjacent phases a and c, and the faults were both revoked at 0.6 s;
- (7)
- from 0.6 s to 0.7 s, the MCGS operated with no faults.
- (1)
- during the four intervals when there were no faults (namely intervals of 0–0.1 s, 0.2–0.3 s, 0.4–0.5 s and 0.5–0.6 s), the currents of five phases had same amplitudes with peak values of 22.67 A.
- (2)
- From 0.1 s to 0.2 s, when an OCF happened in single-phase a, its current became zero, meanwhile, the currents of its two adjacent phases, b and e, increased with peak values of 27.55 A and 27.83 A, respectively. The currents of phases c and d had no obvious increments.
- (3)
- From 0.3 s to 0.4 s, when OCFs happened in two adjacent phases a and b, their currents both became zero, at the same time, the currents of its two adjacent phases, c and e, increased and reached peak values of 27.88 A and 27.78 A, respectively. The current peak value of phase d decreased to 19.74 A.
- (4)
- From 0.5 s to 0.6 s, when OCFs happened in two non-adjacent phases a and c, their currents both became zero, the current peak value of phase b decreased to 23.63 A and phases d and e increased to 25.88 A and 26.01 A, respectively.
4.3. Three Different FP-PMSG OCFs Diagnosis Simulations and Results Comparison
- -
- Label “1” is for OCF in the single-phase a,
- -
- Label “2” is for OCFs in both phase a and b,
- -
- Label “3” is for OCFs in phase a and c.
4.4. Faulty Phase Diagnosis Simulations of Single-Phase OCFs and Results Comparison
- (1)
- in the 1st simulation, from 0 to 0.1 s and from 0.2 to 0.3 s, the MCGS was running normally, while from 0.1 to 0.2 s, a single-phase OCF happened in phase a;
- (2)
- in the 2nd simulation, from 0 to 0.1 s and from 0.2 to 0.3 s, the MCGS was running normally, while from 0.1 to 0.2 s, a single-phase OCF happened in phase b;
- (3)
- in the 3rd simulation, from 0 to 0.1 s and from 0.2 to 0.3 s, the MCGS was running normally, while from 0.1 to 0.2 s, a single-phase OCF happened in phase c;
- (4)
- in the 4th simulation, from 0 to 0.1 s and from 0.2 to 0.3 s, the MCGS was running normally, while from 0.1 to 0.2 s, a single-phase OCF happened in phase d;
- (5)
- in the 5th simulation, from 0 to 0.1 s and from 0.2 to 0.3 s, the MCGS was running normally, while from 0.1 to 0.2 s, a single-phase OCF happened in phase e.
- -
- Label “1” is for single-phase OCF in phase a,
- -
- Label “2” is for single-phase OCF in phase b,
- -
- Label “3” is for single-phase OCF in phase c,
- -
- Label “4” is for single-phase OCF in phase d,
- -
- Label “5” is for single-phase OCF in phase e.
5. Conclusions and Discussion
Author Contributions
Funding
Conflicts of Interest
References
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Parameter Tuning Method | Conditions | Comments |
---|---|---|
where , and are parameter adjustment coefficients, which satisfy , and . fitave is average fitness, its superscript k indicates iteration steps. is a random value between 0 and 1. | ||
keeps same | ||
Generator Parameter | Values |
---|---|
Number of pole pairs, p | 10 |
Stator inductance, Ld1, Lq1, Ld3, Lq3 | Ld1 = Lq1 = 45 mH, Ld3 = Lq3 = 5 mH |
Stator resistance, R | 4Ω |
Flux of permanent magnet, φm1, φm3 | φm1 = 1 Wb, φm3 = 0.19 Wb |
Inertia, J | 0.003 kg.m2 |
Mechanical damping coefficient, B | 1 × 10−3 |
Parameters | Values | |
---|---|---|
PSO | Size of swarm | 20 |
Maximum number of iterations | 200 | |
Initial value of c1 (Fixed in CPSO-SVM) | 1.5 | |
Initial value of c2 (Fixed in CPSO-SVM) | 1.5 | |
Initial value of ω (Fixed in CPSO-SVM) | 1 | |
Range of penalty factor C | [0.01 10] | |
Range of kernel function parameter g | [0.01 10] | |
Adjustment coefficients | [1.15 1.15 0.98] | |
SVM | penalty factor C (for SVM with fixed parameters) | 2 |
kernel parameter g (for SVM with fixed parameters) | 1 | |
Cross validation set number | 5 | |
Number of training samples | 100 | |
Number of testing samples | 100 |
SVM | CPSO-SVM | VPSO-SVM | |
---|---|---|---|
Elapsed Time on Training (s) | 0.001976 | 18.527162 | 8.469169 |
Classification Accuracy on Testing Set Samples (correctly classified samples/total samples) | 99.33% (298/300) | 100% (300/300) | 100% (300/300) |
PSO Iteration Steps | - | 73 | 29 |
SVM | CPSO-SVM | VPSO-SVM | |
---|---|---|---|
Elapsed Time on Training (s) | 0.004017 | 83.073914 | 33.393072 |
Classification Accuracy on Testing Samples (correctly classified samples/total samples) | 94.2% (471/500) | 96.4% (482/500) | 96.4% (482/500) |
PSO Iteration Steps | - | 88 | 33 |
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Yao, G.; Pang, S.; Ying, T.; Benbouzid, M.; Ait-Ahmed, M.; Benkhoris, M.F. VPSO-SVM-Based Open-Circuit Faults Diagnosis of Five-Phase Marine Current Generator Sets. Energies 2020, 13, 6004. https://doi.org/10.3390/en13226004
Yao G, Pang S, Ying T, Benbouzid M, Ait-Ahmed M, Benkhoris MF. VPSO-SVM-Based Open-Circuit Faults Diagnosis of Five-Phase Marine Current Generator Sets. Energies. 2020; 13(22):6004. https://doi.org/10.3390/en13226004
Chicago/Turabian StyleYao, Gang, Shuxiu Pang, Tingting Ying, Mohamed Benbouzid, Mourad Ait-Ahmed, and Mohamed Fouad Benkhoris. 2020. "VPSO-SVM-Based Open-Circuit Faults Diagnosis of Five-Phase Marine Current Generator Sets" Energies 13, no. 22: 6004. https://doi.org/10.3390/en13226004
APA StyleYao, G., Pang, S., Ying, T., Benbouzid, M., Ait-Ahmed, M., & Benkhoris, M. F. (2020). VPSO-SVM-Based Open-Circuit Faults Diagnosis of Five-Phase Marine Current Generator Sets. Energies, 13(22), 6004. https://doi.org/10.3390/en13226004