Robust Adaptive HCS MPPT Algorithm-Based Wind Generation System Using Model Reference Adaptive Control
Abstract
:1. Introduction
- The suggested algorithm has the ability to regulate rotor speed under different operating conditions by using the model reference adaptive control (MRAC) based on PID.
- Dependent on observing the mechanical power fluctuations, the MRAC continuously tunes the PID gains in order to generate a suitable dynamic step size (Ȿ) until tracking the MPP under the optimal tracking circumstances.
- Regarding the recent HCS techniques, the step size basically depends on predefined constants or objective functions, which makes the choosing of step sizes a complex task. However, the proposed technique is considered as a self-modulation of step size without prior knowledge of system parameters and memory requirements.
- As a result of applying the proposed technique, the optimum power extraction with high efficiency, low oscillations and fast response compared to existing HCS techniques is attained.
2. Studied Variable-Speed WECS Modeling
2.1. Aerodynamic Model
2.2. Wind Turbine Model
2.3. Shaft System Modeling
2.4. DFIG Model
2.5. Rotor-Side Converter
2.6. Grid Side Converter
3. Conventional HCS Technique
4. MRAC Strategy
4.1. Description of the Suggested Methodology
4.2. Adjustment of PID Parameters Using MRAC
5. Proposed Adaptive HCS (AD-HCS) Technique
6. Simulation Results
6.1. Step and Random Wind-Speed Change
6.2. Comparative Study
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AD-HCS | Adaptive hill-climbing search |
BTB | Back-to-back converter |
DC | Direct current |
DFIG | Double-fed induction generator |
DPC | The direct power controller |
GSC | Grid-side converter |
HCS | Hill-climbing search |
INC | Incremental conductance |
IPC | Indirect power controller |
LS-HCS | Large step size hill-climbing search |
MIT | Massachusetts Institute of Technology |
MRAC | Model reference adaptive control |
MPP | Maximum power point |
MPPT | Maximum power point tracking |
ORB | Optimum relation-based |
OT | Optimal torque |
P&O | Perturb and observe |
PID | Proportional integral derivative controller |
PSF | Power signal feedback |
RES | Renewable energy sources |
RSC | Rotor-side converter |
SS-HCS | Small step size hill-climbing search |
TSR | Tip speed ratio |
VS-HCS | Variable step size hill-climbing search |
WECS | Wind energy conversion system |
WT | Wind turbine |
Appendix A
Specification of Wind Turbine | |
---|---|
The coefficients C1 to C6 | ,, , , , |
Blade radius | |
Air density | |
The optimal tip speed ratio | |
Maximum power coefficient | |
DFIG parameters | |
Rated power | |
Pole pairs number | |
Stator resistance | |
Stator inductance | |
Moment of inertia | |
Mutual inductance | |
DC bus and gird parameters | |
DC-link voltage | |
The capacitor of the DC-link | |
Grid voltage | |
Grid frequency | |
Grid resistance | |
Grid inductance |
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Ref. | Details |
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[35] | This paper deals with the most common problems in HCS techniques such as speed–efficiency trade-off and wrong perturbation direction with fast fluctuations of wind speed. It follows the MPP contingent on an accurate value of , which is updated according to wind fluctuations. However, it is not possible to correctly track the MPP, as this technique necessitates measuring the wind speed to calculate . |
[36] | The relationship between the current and the square voltage of the DC-link is the basic idea for this technique, which enhances the system efficiency by 7.8%. On the other hand, the efficiency enhancement required offline training. |
[37] | This tracking strategy via the sliding-mode controller has high efficiency under wind speed variations. Conversely, system modeling must be known. |
[38] | The power lookup-table technique against speed characteristics was employed to obtain the MPP based on the field-oriented control. Furthermore, the unique decreases tracking efficiency. |
[39] | Authors investigated a modified HCS algorithm that considered the WT inertia. However, it requires a lookup table and powerful memory which depends on the WECS parameters |
[40,41,42] | Intelligent MPPT techniques were created, mainly based on fuzzy logic control. However, these intelligent methods for extracting MPP require a considerable time interval (processing time) for hardware implementation. |
[43] | The fixed perturbation steps were replaced by sinusoidal steps in the suggested HCS technique. This strategy is qualified for functioning efficiently only at fixed and slowly changing wind speeds. Moreover, it slows down the convergence speed. |
[44] | A novel fast and efficient variable-step HCS technique was suggested; it divides the operating zone into modular operating zones by comparing a special synthesized ratio with the precise value. This method provides a vital solution; however, it uses a constant step size in each zone. |
[45,46,47] | Recent P&O algorithms were investigated depending on the variation in step size with prior knowledge of system parameters and memory requirements. |
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Alrowaili, Z.A.; Ali, M.M.; Youssef, A.; Mousa, H.H.H.; Ali, A.S.; Abdel-Jaber, G.T.; Ezzeldien, M.; Gami, F. Robust Adaptive HCS MPPT Algorithm-Based Wind Generation System Using Model Reference Adaptive Control. Sensors 2021, 21, 5187. https://doi.org/10.3390/s21155187
Alrowaili ZA, Ali MM, Youssef A, Mousa HHH, Ali AS, Abdel-Jaber GT, Ezzeldien M, Gami F. Robust Adaptive HCS MPPT Algorithm-Based Wind Generation System Using Model Reference Adaptive Control. Sensors. 2021; 21(15):5187. https://doi.org/10.3390/s21155187
Chicago/Turabian StyleAlrowaili, Ziyad A., Mustafa M. Ali, Abdelraheem Youssef, Hossam H. H. Mousa, Ahmed S. Ali, Gamal T. Abdel-Jaber, Mohammed Ezzeldien, and Fatma Gami. 2021. "Robust Adaptive HCS MPPT Algorithm-Based Wind Generation System Using Model Reference Adaptive Control" Sensors 21, no. 15: 5187. https://doi.org/10.3390/s21155187
APA StyleAlrowaili, Z. A., Ali, M. M., Youssef, A., Mousa, H. H. H., Ali, A. S., Abdel-Jaber, G. T., Ezzeldien, M., & Gami, F. (2021). Robust Adaptive HCS MPPT Algorithm-Based Wind Generation System Using Model Reference Adaptive Control. Sensors, 21(15), 5187. https://doi.org/10.3390/s21155187