Switching Control of Wind Turbine Sub-Controllers Based on an Active Disturbance Rejection Technique
Abstract
:1. Introduction
- (1)
- MPPT control to achieve maximum power. When the wind speed is below the rated value, the output power is less than the rated one too. In this stage, the control target of the unit is to improve the wind energy utilization ratio, and then improve the energy conversion rate and the power generated by the turbines, so the generator speed is controlled to make the turbines operate at the best tip-speed-ratio and track the maximum power points. In [7], for example, a novel sensorless MPPT control strategy for capturing the maximum energy from fluctuating wind was used in a PMSG system. The MPPT controller was developed to function as a wind speed estimator to generate an appropriate duty cycle for controlling power MOSFET switches in the boost converters in order to capture the maximum power under variable wind speed conditions. In [8], proportional integral (PI) and fuzzy controllers were tested to extract the maximum power from the wind. Simulation results were given to show the performance of the proposed fuzzy control system in MPPT in a wind energy conversion system (WECS) under various wind conditions. In [9], a fuzzy-logic based MPPT method for a standalone wind turbine system was proposed. The hill climb searching (HCS) method was used to achieve the MPPT of the PMSG wind turbine system. A sliding mode voltage control strategy was proposed in [10] for capturing the maximum wind energy based on fuzzy logic control, which was shown to have higher overall control efficiency than the conventional proportional integral derivative (PID) control. A short technical review of WECS was given in [11], where the control strategies of controllers for both DFIG-WECS and PMSG-WECS and various MPPT technologies for efficient production of energy from the wind were discussed.
- (2)
- Variable pitch control to maintain constant power. When the wind speed is above the rated value, the output power of the system is still increasing with the wind speed. If not restricted, the output power will exceed the power limit of the connected grid, which will lead to off-net work. Therefore, the control objective of this stage is to maintain the output power of the unit in the vicinity of the rated power. When the wind speed is increasing, reducing the speed of the generator and increasing the pitch angle can both limit the increase of output power, due to the constraints of the regulating range of generator speed and the complexity of the generator control, so in this stage, variable pitch control is adopted to reduce wind energy absorption and thus maintain the stability of the output power by adjusting the pitch angle. Pitch control is the most efficient and popular power control method, especially for variable-speed wind turbines [12]. In [13], an advanced pitch angle control strategy based on fuzzy logic was proposed for variable-speed wind turbine systems. In [14], a new pitch control method that combined fuzzy adaptive PID control with fuzzy feed forward control was proposed. The fuzzy adaptive PID controller was able to ensure the unit had a better control result than a PID controller at various wind speeds. The fuzzy feed forward controller improved the responsiveness of the pitch control system. A variable pitch back stepping sliding-mode controller (BSMC) for wind turbines based on a radial basic function neural network (RBFNN) was designed in [15], which could stabilize the output power of wind turbines and effectively improve the performance of variable pitch systems. In [16], a sliding mode variable structure controller based on the analysis of the features of the variable pitch was proposed, which showed that sliding mode control could cope with the traditional chattering problems seen in variable structure systems, and had the advantages of robustness and fast response.
2. Designing of the Sub-Controllers
2.1. The Controller in Maximum Power Points Tracking Stage
2.2. The Controller in the Constant Power Stage
3. Sub-Controller Switching
4. Design of the Active Disturbance Rejection Controller
4.1. The Basic Principle of Active Disturbance Rejection Control
4.2. Design of Active Disturbance Rejection Controller
5. Simulation Analysis
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
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EC | PB | PM | PS | ZE | NS | NM | NB | ||
---|---|---|---|---|---|---|---|---|---|
U | |||||||||
E | |||||||||
PB | PB | PB | PB | PB | PM | ZE | ZE | ||
PM | PB | PB | PB | PB | PM | ZE | ZE | ||
PS | PM | PM | PM | PM | ZE | NS | NS | ||
PZ | PM | PM | PS | ZE | NS | NM | NM | ||
NZ | PM | PM | PS | ZE | NS | NM | NM | ||
NS | PS | PS | ZE | NM | NM | NM | NM | ||
NM | ZE | ZE | NM | NB | NB | NB | NB | ||
NB | ZE | ZE | NM | NB | NB | NB | NB |
Controller | Regulating Time | Overshoot | Steady-State Error |
---|---|---|---|
No-ADRC | 0.33 s | 99.98% | 22.00% |
ADRC | 0.45 s | 25.00% | 16.88% |
Controller | Regulating Time | Overshoot | Steady-State Error |
---|---|---|---|
No-ADRC | 0.27 s | 152.27% | 25.42% |
ADRC | 0.31 s | 61.82% | 11.86% |
Controller | Regulating Time | Overshoot |
---|---|---|
No-ADRC | 0.33 s | 107.50% |
ADRC | 0.46 s | 40.28% |
Controller | Regulating Time | Overshoot |
---|---|---|
No-ADRC | 0.47 s | 0.66% |
ADRC | 0.54 s | 8.31% |
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Share and Cite
Xiao, Y.; Hong, Y.; Chen, X.; Huo, W. Switching Control of Wind Turbine Sub-Controllers Based on an Active Disturbance Rejection Technique. Energies 2016, 9, 793. https://doi.org/10.3390/en9100793
Xiao Y, Hong Y, Chen X, Huo W. Switching Control of Wind Turbine Sub-Controllers Based on an Active Disturbance Rejection Technique. Energies. 2016; 9(10):793. https://doi.org/10.3390/en9100793
Chicago/Turabian StyleXiao, Yancai, Yi Hong, Xiuhai Chen, and Wenjian Huo. 2016. "Switching Control of Wind Turbine Sub-Controllers Based on an Active Disturbance Rejection Technique" Energies 9, no. 10: 793. https://doi.org/10.3390/en9100793
APA StyleXiao, Y., Hong, Y., Chen, X., & Huo, W. (2016). Switching Control of Wind Turbine Sub-Controllers Based on an Active Disturbance Rejection Technique. Energies, 9(10), 793. https://doi.org/10.3390/en9100793