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NREL is a national laboratory of the U.S. Department of Energy Office of Energy Efficiency and Renewable Energy operated by Midwest Research Institute • Battelle
National Wind
Technology Center
Neil Kelley
September 22-24, 2008
TurbSim Workshop: Site-Specific Models
National Renewable Energy Laboratory Innovation for Our Energy Future
TurbSim Models
• The TurbSim Code provides the designer with a
choice of five inflow turbulence environments
– The IEC NTM (Eds 2 & 3)
– Smooth, homogenous terrain
– Wind Farm
• Upwind of Row 1
• Upwind of Row 37 with 7D Row-to-Row Turbine Spacing
• Downwind of Row 41 with 14D Row-to-Row Turbine Spacing
– The NWTC (downwind of very complex mountainous terrain)
– A North American High Plains Site
• With the exception of the IEC and the Smooth
Models, the simulations are based on direct
measurements from each site.
National Renewable Energy Laboratory Innovation for Our Energy Future
IEC NTM
• TurbSim implements the IEC Kaimal NTM.
• It provides many options including the current (Ed.3) and earlier
versions (Ed.2) of the standard.
• This model runs very fast and provides a reasonable facsimile of
a turbulent inflow that may be encountered in neutral flow
conditions
• The approach assumes that the elevated turbulence levels will
induce the same amount of response and fatigue damage as
more site-specific models
• Many of the flow subtleties present in much more complex flows
and which may have some significance for specific turbine
designs are ignored.
National Renewable Energy Laboratory Innovation for Our Energy Future
Smooth Model
• The Smooth Model implements the diabatic spectral models
developed by Højstrup, Olesen, and Larsen
• They are based on the reference Kansas Experiment dataset
but with improvements from Kaimal’s original model the neutral
version of which forms the basis of the IEC Kaimal NTM.
• The Kansas Experiment was performed in very flat and
homogeneous terrain to exclude the effects of topography as
much as possible.
• This model extends many features of the IEC NTM since it can
simulate non-neutral flows but with more realistic scaling. It is
useful for matching observed data when available.
National Renewable Energy Laboratory Innovation for Our Energy Future
Wind Farm Models
• The TurbSim Wind Farm models are a legacy
development based on a limited set of measurements
upwind, within, and downwind of a 41-row wind farm
in San Gorgonio Pass California.
• Data was collected for a six week period at the height
of the 1989 wind season (July-August) from two 50-m
micrometeorological towers upwind and downwind of
the wind farm. They employed multiple levels of very
sensitive cups/vanes, a single three-axis sonic
anemometer at nominal hub height, and temperature,
temperature difference, humidity, and pressure
measurements.
National Renewable Energy Laboratory Innovation for Our Energy Future
Wind Farm Models – cont’d
• In 1990 data was collected from a 35-m met tower
located upwind of two Micon 65 turbines on Row 37
of the wind farm. The tower was similarly
instrumented with a single sonic
anemometer/thermometer near hub height but with
propeller-type anemometry. The nearest turbines
were located 7 rotor diameters upstream.
• The two turbines were heavily instrumented and
offered a detailed look at the effects of inflow
turbulence on two different rotor designs. Data
system malfunctions limited the useful of the data
collected but what is available covers a wide range of
conditions.
National Renewable Energy Laboratory Innovation for Our Energy Future
Wind Farm Models – cont’d
• Models based on measurements at the three
locations are offered in TurbSim. They include
conditions seen upwind of Row 1, at Row 37 with the
7D spacing, and downwind of Row 41 with a 14D
spacing to the nearest upwind turbines.
• We believe the data supports simulations up to about
50 m based on the scaling derived from the
measurements taken in 1989.
National Renewable Energy Laboratory Innovation for Our Energy Future
NWTC Model
• The NWTC Model simulates a range of turbulent inflows derived
from the measurements from an planar array of five sonic
anemometer/thermometers upstream of the NWTC ART
Turbine. The data was collected for the 1999-2000 NWTC wind
season (Oct-May) and represents a wide range of flow
conditions.
• The NWTC Site is very turbulent and produces some very
unique flow situations that are commonly seen in more complex
local terrain. It offers a distinct complement to the simulations
based on the measurements in the High Plains of Colorado.
• We believe the simulations are reasonably realistic up to a
height of 100 m.
National Renewable Energy Laboratory Innovation for Our Energy Future
Great Plains Model
• The Great Plains Low-Level Jet Model simulates
conditions based on extensive measurements from a
120-m tower and sodar for over one year at a site on
the High Plains of SE Colorado. The tower was
instrumented to make measurements for a GE wind
turbine with a 70-m rotor and an 85-m hub height.
• Of prime importance in this experiment and the
model it is based on is to include the turbulence
characteristics associated with the presence of a
nocturnal low-level jet stream of varying height and
strength. Coherent turbulent structures are an
integral part of the stable atmosphere and jet
presence and are modeled as accurately as possible.
National Renewable Energy Laboratory Innovation for Our Energy Future
Great Plains Model – cont’d
• The Great Plains Model is unique in that it provides
vertical profiles of wind direction in addition to wind
speed and turbulence. This feature is important
when simulations of a low-level jet at turbine hub
height are made which is a common situation at this
location.
• This model also provides the user with the option of
including or not including coherent structures to
reflect the observation that jets do not always break
down into organized turbulence but remain stable
with intense vertical wind shears.
National Renewable Energy Laboratory Innovation for Our Energy Future
120m Tower
(1357 m – 4451 ft)
Arkansas River
Pikes Peak
(4302 m - 14110 ft) Great Plains
Location of Great Plains Data Collection
National Renewable Energy Laboratory Innovation for Our Energy Future
US287
120m Tower
(1357 m – 4451 ft)
Local Topography Surrounding Measurement Site
National Renewable Energy Laboratory Innovation for Our Energy Future
Some Comparative Examples
• We discuss the some results when exciting the
NWTC 5 MW virtual turbine model with inflows
generated by the IEC NTM (Class C), Great Plains
(GP-LLJ), and the NWTC (NWTCUP) TurbSim
Models.
National Renewable Energy Laboratory Innovation for Our Energy Future
Example Boundary Conditions
Case Jet Height
(m)
Ujet
(m/s)
Ri Rotor
Disk
u* (m/s)
C-3 80 11.64 0.216 0.213
C-10 460 27.68 0.020 0.450
NREL 5 MW Virtual Turbine
National Renewable Energy Laboratory Innovation for Our Energy Future
Adjustments
• Hub height mean wind speeds for IEC and NWTC
models set to same as GP-LLJ to insure accurate
comparisons
National Renewable Energy Laboratory Innovation for Our Energy Future
Blade Root Bending Moments
Edgewise
IEC GP-LLJ NWTC
kNm
5600
5800
6000
6200
Flapwise
Inflow Excitation
IEC GP-LLJ NWTC
2000
3000
4000
5000
6000 Pitching
IEC GP-LLJ NWTC
90
100
110
120
130
Blade Root Bending Moments
Edgewise
IEC GP-LLJ NWTC
kNm
5600
5800
6000
6200
Flapwise
Inflow Excitation
IEC GP-LLJ NWTC
2000
3000
4000
5000
6000 Pitching
IEC GP-LLJ NWTC
80
90
100
110
120
130
Case 3
Case 10
National Renewable Energy Laboratory Innovation for Our Energy Future
Rotor
Generator Torque
IEC GP-LLJ NWTC
kNm
0.0
0.4
0.8
1.2
1.6
2.0 Rotor Thrust
Inflow Excitation
IEC GP-LLJ NWTC
kN
40
60
80
100
RotorTorque
IEC GP-LLJ NWTC
kNm
100
200
300
400
Generator Torque
IEC GP-LLJ NWTC
kNm
0.0
0.4
0.8
1.2
1.6
2.0 Rotor Thrust
Inflow Excitation
IEC GP-LLJ NWTC
kN
40
60
80
100
120
Rotor Torque
IEC GP-LLJ NWTC
kNm
100
200
300
400
Case 3
Case 10
National Renewable Energy Laboratory Innovation for Our Energy Future
Low-Speed Shaft Tip Bending
Low-Speed Shaft Tip Bending Moment
My
IEC GP-LLJ NWTC
kNm
800
1200
1600
2000
2400
2800
3200
Mz
Inflow Excitation
IEC GP-LLJ NWTC
Low-Speed Shaft Tip Bending Moment
My
IEC GP-LLJ NWTC
kNm 800
1200
1600
2000
2400
2800
3200
Mz
Inflow Excitation
IEC GP-LLJ NWTC
Case 3 Case 10
National Renewable Energy Laboratory Innovation for Our Energy Future
Tip Deflections
Axial
IEC GP-LLJ NWTC
15
30
45
60
Out-of-Plane
IEC GP-LLJ NWTC
cm
20
30
40
50
60
70 In-Plane
Inflow Excitation
IEC GP-LLJ NWTC
8
9
10
11
12
Blade Tip Deflections
Out-of-Plane
IEC GP-LLJ NWTC
cm
10
15
20
25
30
In-Plane
Inflow Excitation
IEC GP-LLJ NWTC
8
9
10
11
12
Axial
IEC GP-LLJ NWTC
15
30
45
60
Case 3
Case 10

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Nwtc turb sim workshop september 22 24, 2008- site specific models

  • 1. NREL is a national laboratory of the U.S. Department of Energy Office of Energy Efficiency and Renewable Energy operated by Midwest Research Institute • Battelle National Wind Technology Center Neil Kelley September 22-24, 2008 TurbSim Workshop: Site-Specific Models
  • 2. National Renewable Energy Laboratory Innovation for Our Energy Future TurbSim Models • The TurbSim Code provides the designer with a choice of five inflow turbulence environments – The IEC NTM (Eds 2 & 3) – Smooth, homogenous terrain – Wind Farm • Upwind of Row 1 • Upwind of Row 37 with 7D Row-to-Row Turbine Spacing • Downwind of Row 41 with 14D Row-to-Row Turbine Spacing – The NWTC (downwind of very complex mountainous terrain) – A North American High Plains Site • With the exception of the IEC and the Smooth Models, the simulations are based on direct measurements from each site.
  • 3. National Renewable Energy Laboratory Innovation for Our Energy Future IEC NTM • TurbSim implements the IEC Kaimal NTM. • It provides many options including the current (Ed.3) and earlier versions (Ed.2) of the standard. • This model runs very fast and provides a reasonable facsimile of a turbulent inflow that may be encountered in neutral flow conditions • The approach assumes that the elevated turbulence levels will induce the same amount of response and fatigue damage as more site-specific models • Many of the flow subtleties present in much more complex flows and which may have some significance for specific turbine designs are ignored.
  • 4. National Renewable Energy Laboratory Innovation for Our Energy Future Smooth Model • The Smooth Model implements the diabatic spectral models developed by Højstrup, Olesen, and Larsen • They are based on the reference Kansas Experiment dataset but with improvements from Kaimal’s original model the neutral version of which forms the basis of the IEC Kaimal NTM. • The Kansas Experiment was performed in very flat and homogeneous terrain to exclude the effects of topography as much as possible. • This model extends many features of the IEC NTM since it can simulate non-neutral flows but with more realistic scaling. It is useful for matching observed data when available.
  • 5. National Renewable Energy Laboratory Innovation for Our Energy Future Wind Farm Models • The TurbSim Wind Farm models are a legacy development based on a limited set of measurements upwind, within, and downwind of a 41-row wind farm in San Gorgonio Pass California. • Data was collected for a six week period at the height of the 1989 wind season (July-August) from two 50-m micrometeorological towers upwind and downwind of the wind farm. They employed multiple levels of very sensitive cups/vanes, a single three-axis sonic anemometer at nominal hub height, and temperature, temperature difference, humidity, and pressure measurements.
  • 6. National Renewable Energy Laboratory Innovation for Our Energy Future Wind Farm Models – cont’d • In 1990 data was collected from a 35-m met tower located upwind of two Micon 65 turbines on Row 37 of the wind farm. The tower was similarly instrumented with a single sonic anemometer/thermometer near hub height but with propeller-type anemometry. The nearest turbines were located 7 rotor diameters upstream. • The two turbines were heavily instrumented and offered a detailed look at the effects of inflow turbulence on two different rotor designs. Data system malfunctions limited the useful of the data collected but what is available covers a wide range of conditions.
  • 7. National Renewable Energy Laboratory Innovation for Our Energy Future Wind Farm Models – cont’d • Models based on measurements at the three locations are offered in TurbSim. They include conditions seen upwind of Row 1, at Row 37 with the 7D spacing, and downwind of Row 41 with a 14D spacing to the nearest upwind turbines. • We believe the data supports simulations up to about 50 m based on the scaling derived from the measurements taken in 1989.
  • 8. National Renewable Energy Laboratory Innovation for Our Energy Future NWTC Model • The NWTC Model simulates a range of turbulent inflows derived from the measurements from an planar array of five sonic anemometer/thermometers upstream of the NWTC ART Turbine. The data was collected for the 1999-2000 NWTC wind season (Oct-May) and represents a wide range of flow conditions. • The NWTC Site is very turbulent and produces some very unique flow situations that are commonly seen in more complex local terrain. It offers a distinct complement to the simulations based on the measurements in the High Plains of Colorado. • We believe the simulations are reasonably realistic up to a height of 100 m.
  • 9. National Renewable Energy Laboratory Innovation for Our Energy Future Great Plains Model • The Great Plains Low-Level Jet Model simulates conditions based on extensive measurements from a 120-m tower and sodar for over one year at a site on the High Plains of SE Colorado. The tower was instrumented to make measurements for a GE wind turbine with a 70-m rotor and an 85-m hub height. • Of prime importance in this experiment and the model it is based on is to include the turbulence characteristics associated with the presence of a nocturnal low-level jet stream of varying height and strength. Coherent turbulent structures are an integral part of the stable atmosphere and jet presence and are modeled as accurately as possible.
  • 10. National Renewable Energy Laboratory Innovation for Our Energy Future Great Plains Model – cont’d • The Great Plains Model is unique in that it provides vertical profiles of wind direction in addition to wind speed and turbulence. This feature is important when simulations of a low-level jet at turbine hub height are made which is a common situation at this location. • This model also provides the user with the option of including or not including coherent structures to reflect the observation that jets do not always break down into organized turbulence but remain stable with intense vertical wind shears.
  • 11. National Renewable Energy Laboratory Innovation for Our Energy Future 120m Tower (1357 m – 4451 ft) Arkansas River Pikes Peak (4302 m - 14110 ft) Great Plains Location of Great Plains Data Collection
  • 12. National Renewable Energy Laboratory Innovation for Our Energy Future US287 120m Tower (1357 m – 4451 ft) Local Topography Surrounding Measurement Site
  • 13. National Renewable Energy Laboratory Innovation for Our Energy Future Some Comparative Examples • We discuss the some results when exciting the NWTC 5 MW virtual turbine model with inflows generated by the IEC NTM (Class C), Great Plains (GP-LLJ), and the NWTC (NWTCUP) TurbSim Models.
  • 14. National Renewable Energy Laboratory Innovation for Our Energy Future Example Boundary Conditions Case Jet Height (m) Ujet (m/s) Ri Rotor Disk u* (m/s) C-3 80 11.64 0.216 0.213 C-10 460 27.68 0.020 0.450 NREL 5 MW Virtual Turbine
  • 15. National Renewable Energy Laboratory Innovation for Our Energy Future Adjustments • Hub height mean wind speeds for IEC and NWTC models set to same as GP-LLJ to insure accurate comparisons
  • 16. National Renewable Energy Laboratory Innovation for Our Energy Future Blade Root Bending Moments Edgewise IEC GP-LLJ NWTC kNm 5600 5800 6000 6200 Flapwise Inflow Excitation IEC GP-LLJ NWTC 2000 3000 4000 5000 6000 Pitching IEC GP-LLJ NWTC 90 100 110 120 130 Blade Root Bending Moments Edgewise IEC GP-LLJ NWTC kNm 5600 5800 6000 6200 Flapwise Inflow Excitation IEC GP-LLJ NWTC 2000 3000 4000 5000 6000 Pitching IEC GP-LLJ NWTC 80 90 100 110 120 130 Case 3 Case 10
  • 17. National Renewable Energy Laboratory Innovation for Our Energy Future Rotor Generator Torque IEC GP-LLJ NWTC kNm 0.0 0.4 0.8 1.2 1.6 2.0 Rotor Thrust Inflow Excitation IEC GP-LLJ NWTC kN 40 60 80 100 RotorTorque IEC GP-LLJ NWTC kNm 100 200 300 400 Generator Torque IEC GP-LLJ NWTC kNm 0.0 0.4 0.8 1.2 1.6 2.0 Rotor Thrust Inflow Excitation IEC GP-LLJ NWTC kN 40 60 80 100 120 Rotor Torque IEC GP-LLJ NWTC kNm 100 200 300 400 Case 3 Case 10
  • 18. National Renewable Energy Laboratory Innovation for Our Energy Future Low-Speed Shaft Tip Bending Low-Speed Shaft Tip Bending Moment My IEC GP-LLJ NWTC kNm 800 1200 1600 2000 2400 2800 3200 Mz Inflow Excitation IEC GP-LLJ NWTC Low-Speed Shaft Tip Bending Moment My IEC GP-LLJ NWTC kNm 800 1200 1600 2000 2400 2800 3200 Mz Inflow Excitation IEC GP-LLJ NWTC Case 3 Case 10
  • 19. National Renewable Energy Laboratory Innovation for Our Energy Future Tip Deflections Axial IEC GP-LLJ NWTC 15 30 45 60 Out-of-Plane IEC GP-LLJ NWTC cm 20 30 40 50 60 70 In-Plane Inflow Excitation IEC GP-LLJ NWTC 8 9 10 11 12 Blade Tip Deflections Out-of-Plane IEC GP-LLJ NWTC cm 10 15 20 25 30 In-Plane Inflow Excitation IEC GP-LLJ NWTC 8 9 10 11 12 Axial IEC GP-LLJ NWTC 15 30 45 60 Case 3 Case 10