Pitch Angle Misalignment Correction Based on Benchmarking and Laser Scanner Measurement in Wind Farms
Abstract
:1. Introduction
- According to this technique, pitch angles are obtained based on three different rotation planes: the plane defined by blades 2–3 for blade 1’s pitch angle calculation; the plane defined by blades 3–1 for blade 2’s pitch angle calculation; and the plane defined by blades 1–2 for blade 3’s pitch angle calculation. Since the blade axes are not coplanar due to manufacturing and assembly tolerances, it can lead to variances larger than 0.5.
- To use this technique for calculations based on the same blade section, the blade axis must be placed so that it is pointing downward while being perfectly aligned with the measuring system. However, such an alignment is difficult, as it is done manually and there is no fixed reference against which the three blades of a rotor can be placed in the very same position.
- Assuming that pitch angle differences within the rotor of a particular turbine are accurately measured, the only way to correctly determine the absolute pitch angles is by either:
- (a)
- obtaining the pitch angle at the maximum chord line from the turbine manufacturer, although it is very rarely available due to the sensitivity of turbine design information; or
- (b)
- placing the measuring system in the very same location with respect to the rotor in every turbine; however, it must be noted that slight errors in this position create variation in the measurement of absolute pitch angles.
2. Pitch Angle Misalignment
2.1. State of the Art
2.2. Impact of Pitch Misalignment on Power Production
- Case 1: One blade is in the correct position, and two blades have similar errors with opposite signs.
- Case 2: The three blades are affected by the same pitch angle misalignment.
- Case 3: Two blades are in the correct position, one blade has a pitch angle error.
- The static results match the dynamic results.
- The functions exhibit a well-defined shape that is dependent on the operation zone. This will be useful to identify pitch errors in field measurements.
- The total losses can be approximated by adding the losses on each blade. The total wind turbine is notably sensitive to blade assembly errors. A small pitch discrepancy of 2 in only one blade is able to reduce approximately 1% of the value.
- An absolute misalignment of 2 in the three blades also causes an loss; in this case, the loss is 3.5%.
- Because of the nonlinear dependence of the loss on the pitch error, it is better to have small pitch errors in all three blades than it is to have only one blade with a high error.
- Understanding that power production is proportional to the third power of the wind speed, yaw misalignment yields a completely different pattern that is virtually flat on the low end and middle of the wind speed range.
2.3. Impact of Pitch Misalignment on Turbine Lifetime
2.3.1. Effect of Even Positive Pitch Angle Offset
2.3.2. Effect of Even Negative Pitch Angle Offset
- The peak of the steady-state curve of the thrust force over the rotor increases.
- Performance of the rotor speed controller by blade pitching is diminished due to lower plant gain. As a consequence, the controller bandwidth is reduced, creating much higher dynamic loads.
3. Methodology
3.1. Novel on-Field Method for Pitch Calculation and Compensation
3.2. Production Performance Assessment
- Wind speeds measured above the turbine nacelles are used. Although anemometers are not calibrated or certified, multi-megawatt wind turbines are nowadays equipped with good anemometers that offer reliable measurements. This particularly holds for sonic anemometers, which are only affected by nacelle aerodynamics and the blade passing wake. In any case, this type of disturbance is consistent throughout the entire wind farm, so the comparison between the results obtained from the Best in Class turbine and the Worst in Class turbines will be consistent. Nevertheless, the correlation between wind speed measurements for different wind turbines is also checked.
- Output power: data in which the power might be compromised by effects not purely related to aerodynamics are ruled out, including:
- (a)
- Turbine and complex terrain disturbances, as described in [47],
- (b)
- Ten-minute periods in which the average power does not show the capability of the turbine to produce energy, e.g., due to starts and stops, maintenance work, power curtailment operation, etc.
3.3. On-Field Pitch Measurement and Calculation
4. Results
4.1. Case Study 1
4.2. Case Study 2
5. Discussion
- No product design information is needed from the turbine manufacturer, as the Best in Class turbine is used to define the pitch angle settings for the Worst in Class turbines.
- Mimicking the pitch angle settings of the Best in Class turbine in the Worst in Class turbines ensures that product certification is not compromised.
- Power performance benchmarking guarantees an increase in power production. This increase can be used to compute the increase in revenue, and thus to calculate Return On Investment of this service.
- There is no lost revenue for wind farm owners, as laser measurements in the affected turbines are carried out in idling conditions, under very low wind speeds.
- Although pitch angle corrections cannot address hub manufacturing tolerances, the measurement results of this technique offer valuable information for turbine manufacturers.
- At low wind speeds around 5 m/s, a of 25% can be reached in some cases, that is, the power output can be improved by 25% at those wind speeds.
- These corrections in the power curve can produce general improvement in energy production that reaches even 15% for .
- For a referential turbine of 1 MW (our turbines are 0.8 and 1.5 MW), this improvement implies 450 MWh more production annually, 3000 being the typical number of full load hours.
- If the 2018 spot-market price of 1 MWh in Spain is considered (±62 €/MWh according to [48], this increment of energy production supposes ±28,000 € more annually per installed MW of turbines like the studied worst ones.
- In addition, these empirical percentages of loss are quite coherent with the results obtained in the simulations of the Section 2.2 using FAST for different pitch misalignment combinations of the three blades, which show losses that can reach the 10% in the worst cases.
6. Conclusions and Future Outlook
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
Annual energy production | |
Power curve ratio of a given turbine with respect to the BIC turbine | |
BIC | Best in class turbine |
Power curve ratio gap in percent | |
Power coefficient | |
U | Wind speed |
T | Axis torque |
Angular velocity of the rotor | |
Low rotor speed | |
Nominal rotor speed | |
Pitch angle | |
Tip speed ratio | |
FAST | An aeroelastic computer-aided engineering tool for horizontal axis wind turbines |
Root mean square error |
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Blades | Measurement | Recommendation |
---|---|---|
Blade 1 | 83.06 | +0.1 |
Blade 2 | 81.64 | +1.5 |
Blade 3 | 84.34 | −1.2 |
Turbine-Blades | Measurement | Recommendation |
---|---|---|
ES10-Blade 1 | 99.68 | +0.61 |
ES10-Blade 2 | 100.30 | Leave as is |
ES10-Blade 3 | 94.4 | 5.89 |
ES11-Blade 1 | 98.12 | +2.17 |
ES11-Blade 2 | 98.08 | +2.21 |
ES11-Blade 3 | 97.10 | +3.16 |
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Elosegui, U.; Egana, I.; Ulazia, A.; Ibarra-Berastegi, G. Pitch Angle Misalignment Correction Based on Benchmarking and Laser Scanner Measurement in Wind Farms. Energies 2018, 11, 3357. https://doi.org/10.3390/en11123357
Elosegui U, Egana I, Ulazia A, Ibarra-Berastegi G. Pitch Angle Misalignment Correction Based on Benchmarking and Laser Scanner Measurement in Wind Farms. Energies. 2018; 11(12):3357. https://doi.org/10.3390/en11123357
Chicago/Turabian StyleElosegui, Unai, Igor Egana, Alain Ulazia, and Gabriel Ibarra-Berastegi. 2018. "Pitch Angle Misalignment Correction Based on Benchmarking and Laser Scanner Measurement in Wind Farms" Energies 11, no. 12: 3357. https://doi.org/10.3390/en11123357
APA StyleElosegui, U., Egana, I., Ulazia, A., & Ibarra-Berastegi, G. (2018). Pitch Angle Misalignment Correction Based on Benchmarking and Laser Scanner Measurement in Wind Farms. Energies, 11(12), 3357. https://doi.org/10.3390/en11123357