Reference Model Adaptive Control Scheme on PMVG-Based WECS for MPPT under a Real Wind Speed
Abstract
:1. Introduction
- First, the RMAC is proposed for DD variable-speed PMVG-based WECS, which tracks a reference model that guarantees the expected exponential decay of rotor speed error trajectory.
- Based on the given reference model, the proposed technique can ensure a rapid exponential decrease of the speed error trajectory. Moreover, to enhance the tracking capability of the proposed RMAC method, an adaptive compensative term and a stabilizing feedback control term are presented.
- A RNN is trained offline to learn the rotor speed and torque information. Then, the trained RNN-model is deployed online to retrieve the wind speed without using an additional wind speed sensor. Furthermore, the pitch angle adjustment is presented to maintain the optimum rotor speed under varying wind conditions.
- Finally, the proposed control system demonstrates its effectiveness through simulation and experimentation using a prototype of 5 kW DD PMVG-based WECS. Then, the comparative results validate the superiority of the proposed control over existing control methods.
2. Modeling of PMVG-Based WECS
2.1. Wind Turbine Modeling
2.2. PMVG Modeling
3. The Proposed Rotor Speed Control Design
3.1. Reference Model for the Rotor Speed Control Design
3.2. Reference Model Adaptive Control Design for the Speed Control
4. The Proposed RNN for Wind Speed Estimation
5. Pitch Angle Controller
6. Simulation and Experimentation Results
6.1. Simulation Verification and Discussion
- A random wind speed under region II;
- A random wind speed under regions II and III;
- A real wind speed is measured at the location of Gunsan, South Korea.
6.1.1. Case I: A Random Wind Speed under the Region II
6.1.2. Case II: A Random Wind Speed under the Region II and III
6.1.3. Case III: Real Wind Speed
6.2. Experimental Verification and Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Parameter | Symbol | Value |
---|---|---|
Rated power | 5 kW | |
Air density | 1.225 kg/m3 | |
Radius | R | 2.82 m |
Moment of inertia | J | 0.188 kg·m2 |
Resistance | 0.44 | |
d-q inductanc of generator | , | 17.5 mH |
No. of poles | 20 | |
Flux density | 0.4459 Wb |
Regions | Control Methods | Tracking Efficiency (%) | Electrical Power Efficiency (%) |
---|---|---|---|
PI | 94.25 | 84.82 | |
II | OTC | 95.24 | 85.71 |
Proposed | 95.60 | 86.04 | |
PI | 93.75 | 84.37 | |
II and III | OTC | 94.48 | 85.03 |
Proposed | 94.70 | 85.23 | |
PI | 92.58 | 83.32 | |
Under real wind speed | OTC | 93.12 | 83.80 |
Proposed | 94.21 | 84.78 |
Control Methods | Tracking Efficiency (%) | Electrical Power Efficiency (%) |
---|---|---|
OTC | 94.24 | 83.01 |
Proposed | 94.60 | 85.14 |
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Yesudhas, A.A.; Joo, Y.H.; Lee, S.R. Reference Model Adaptive Control Scheme on PMVG-Based WECS for MPPT under a Real Wind Speed. Energies 2022, 15, 3091. https://doi.org/10.3390/en15093091
Yesudhas AA, Joo YH, Lee SR. Reference Model Adaptive Control Scheme on PMVG-Based WECS for MPPT under a Real Wind Speed. Energies. 2022; 15(9):3091. https://doi.org/10.3390/en15093091
Chicago/Turabian StyleYesudhas, Anto Anbarasu, Young Hoon Joo, and Seong Ryong Lee. 2022. "Reference Model Adaptive Control Scheme on PMVG-Based WECS for MPPT under a Real Wind Speed" Energies 15, no. 9: 3091. https://doi.org/10.3390/en15093091
APA StyleYesudhas, A. A., Joo, Y. H., & Lee, S. R. (2022). Reference Model Adaptive Control Scheme on PMVG-Based WECS for MPPT under a Real Wind Speed. Energies, 15(9), 3091. https://doi.org/10.3390/en15093091