Modified Power Curves for Prediction of Power Output of Wind Farms
Abstract
:1. Introduction
- (1)
- A physics-based approach in which the effect of atmospheric variables are added to standard power curves. Wagner et al. [2,3] studied the effect of wind shear by proposing an equivalent wind speed using multiple measurements of wind speed distributed vertically. Additionally, methods to incorporate the effect of turbulence intensity [4,5,6,7] and yaw error [8] have been explored. The effect of atmospheric stability on the performance of power curves has also been examined [9,10]. Moreover, the applicability of equivalent wind speed extends beyond power curves. It can also be implemented in wind farm parameterization models such as Weather Research and Forecast (WRF) model [11].
- (2)
- A data-driven approach for modeling power production. Clifton et al. [1] used a machine learning algorithm called random forests (RF) to predict wind power and found that RFs are a very promising alternative to standard power curves. Neural networks [12,13], conditional kernel density [14] and support vector machines [15] are other data-driven models that have been investigated for power prediction.
2. Model Development
2.1. Standard Power Curve
2.2. Modified Power Curves
2.2.1. Modified Power Curve Based on One-Second Data
2.2.2. Modified Power Curve Based on Ten-Minute Data
3. Data Description
3.1. Turbine Data
3.2. Meteorological Tower Data
3.3. Data Quality Control
3.3.1. Meteorological Tower Data
3.3.2. SCADA Data
4. Discussion of Results
Power Surface
5. Conclusions and Future Work
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Sensor | Make/Model | Quantity | Heights | Resolution |
---|---|---|---|---|
Barometric Pressure | Setra 278 | 2 | 6, 106 m | 1 Hz |
Temperature Sensor | NRG 110S | 2 | 6, 20 m | 1 Hz |
Wind Vane | NRG 200P | 7 | 6, 10, 20, 32, 80, 106 m | 1 Hz |
Cup Anemometer | A100LK | 7 | 6, 10, 20, 32, 80, 106 m | 1 Hz |
T/RH Sensor | Vaisala-HMP 155 | 4 | 10, 32, 80, 106 m | 1 Hz |
Sonic Anemometer | Campbell Scientific-CSAT3B | 4 | 10, 32, 80, 106 m | 20 Hz |
Gas Analyzer | LICOR-LI 7500-RS | 1 | 106 m | 20 Hz |
Gas Analyzer | Campbell Scientific-Irgason | 1 | 106 m | 20 Hz |
Radiometer | Kipp&Zonen-CNR4 | 1 | 106 m | 1 Hz |
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Vahidzadeh, M.; Markfort, C.D. Modified Power Curves for Prediction of Power Output of Wind Farms. Energies 2019, 12, 1805. https://doi.org/10.3390/en12091805
Vahidzadeh M, Markfort CD. Modified Power Curves for Prediction of Power Output of Wind Farms. Energies. 2019; 12(9):1805. https://doi.org/10.3390/en12091805
Chicago/Turabian StyleVahidzadeh, Mohsen, and Corey D. Markfort. 2019. "Modified Power Curves for Prediction of Power Output of Wind Farms" Energies 12, no. 9: 1805. https://doi.org/10.3390/en12091805
APA StyleVahidzadeh, M., & Markfort, C. D. (2019). Modified Power Curves for Prediction of Power Output of Wind Farms. Energies, 12(9), 1805. https://doi.org/10.3390/en12091805