Title: Bringing satellite winds to hub-height
1Bringing satellite winds to hub-height
- Merete Badger, DTU Wind Energy, Denmark
- Rolv Erlend Bredesen, Erik Berge
- Kjeller Vindteknikk, Norway
- Alfredo Peña, Andrea Hahmann, Jake Badger,
- Ioanna Karagali, Charlotte Hasager, Torben
Mikkelsen - DTU Wind Energy, Denmark
2Ocean wind fields from satellites
Scatterometer Synthetic Aperture Radar (SAR)
Retrieved parameters Wind speed and direction Wind speed
Spatial resolution 0.25lat/lon 500 m
Spatial coverage Global Selected areas
Coastal mask Up to 70 km from coastline None
Temporal resolution Twice daily Variable less than one per day
Temporal coverage Systematically since 1991 ScanSAR since 1995
Current sensors ASCAT, OSCAT, HY2A, MetOp-B Envisat ASAR, Radarsat-1/2
Rain sensitivity High rain flags provided Low
3Level of detail for scatterometer and SAR winds
QuikScat mean wind speed
Envisat ASAR mean wind speed
4From radar backscatter to wind
A geophysical model function is applied to
retrieve 10-meter ocean winds from radar
backscatter.
5Application 1Wind resource mapping from SAR
wind fields
6Application 2Wind farm wake analyses and wake
model validation
Wind speed from ERS-2 SAR, February 25, 2003
From Christiansen, M. B. Hasager, C. B. 2005,
Wake effects of large offshore wind farms
identified from satellite SAR. Remote Sensing of
Environment, 98, 251-268
7Application 3Characterizing mesoscale wind
phenomena - and validation of mesoscale models
Strait of Gibraltar
The Azores
8Challenges for the application of SAR wind
fields in offshore wind energy
- Challenge 1 Dealing with a limited number of
samples - See Badger et al. 2010, Wind class sampling
of satellite SAR imagery for offshore wind
resource mapping. J. Appl. Meteor. Climat., 49,
2474-2491. - Challenge 2 Bringing satellite winds from the
10-m vertical level to the hub-height of modern
wind turbines - - the topic of this presentation
9Recent advances - which make the lifting of SAR
wind fields possible
- A validated description of vertical wind profiles
at high levels is available - (Peña, A. et al. 2008, Measurements and
Modelling of the Wind Speed Profile in the Marine
Atmospheric Boundary Layer, Bound.-Layer Meteor.,
129, pp. 479-495) - Wind retrieval algorithms can produce Equivalent
Neutral Winds (ENW) - (Hersbach, H. 2010, Comparison of C-band
Scatterometer CMOD5.N Equivalent - Neutral Winds with ECMWF, J. Atmos. Oceanic
Technol., 27, pp. 721-736) - Satellite SAR imagery is available in larger
quantities - (500-1,000 overlapping scenes over sites in the
European Seas) - Mesoscale modeling has been performed for
significant areas and time periods - Offshore measurements are available for
validation (masts and LiDAR)
10Bringing satellite winds to hub-height (100 m)
- Friction velocity, u from the satellite ENW
- ,
- Obukhov length, L
- - using WRF parameters T2 and HFX
- LWRF/SAR gt 0 stable
- LWRF/SAR 0 unstable
11Bringing satellite winds to hub-height (100 m)
- Stability function, ?(z/L)
-
- LWRF/SAR gt 0
- LWRF/SAR 0 ,
-
- Wind speed at 100 m, u100
- - using WRF parameters T2, HFX, PBLH
- LWRF/SAR gt 0
- LWRF/SAR 0
12100-m winds at Fino-1
13100-m Weibull fit at Fino-1
14Spatial wind variability over the North Sea
15Sampling effects over the North Sea
16Special situation Low boundary-layer height
- The applied wind profile equations are valid
within the atmospheric boundary-layer - Data are discarded when the boundary-layer height
is lt50 m - Up to 4 of the WRF samples are discarded over
the North Sea over a year - None of the 80 SAR scenes, and concurrent WRF
samples, are discarded
17Conclusions
- Satellite SAR data lifted to 100 m under-estimate
the wind speed at Fino-1 - Concurrent WRF simulations also under-estimate
the 100-m wind speed at Fino-1 - SAR-WRF agreement is generally good over the
North Sea with the largest differences near the
coast of Germany - The number of SAR samples (80) is insufficient to
describe the mean wind climate accurately - Work is in progress to improve the accuracy of
lifted satellite wind fields - Satellite observations represent a valuable
source of information for offshore wind energy
applications (e.g. wind resource mapping, wind
farm wake analyses)
18Acknowledgements
- Satellite data
- The European Space Agency (ESA)
- Remote Sensing Systems (RSS)
- SAR wind field retrieval
- Collecte Localisation Satellites (CLS)
- The Johns Hopkins University, Applied Physics
Laboratory (JHU/APL) - Fino-1 and Fino-2 mast data
- Bundesministerium für Umwelt (BMU), Projektträger
Juelich (PTJ), Deutsches Windenergie Institut
(DEWI) - Funding
- EU-NORSEWInD (TREN-FP7EN-21908)
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