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Science / AWS Truewind / Weather prediction / National Renewable Energy Laboratory / Wind / Numerical weather prediction / GE Wind Energy / Renewable energy / Weather Research and Forecasting model / Atmospheric sciences / Meteorology / Wind power
Date: 2012-10-31 08:35:33
Science
AWS Truewind
Weather prediction
National Renewable Energy Laboratory
Wind
Numerical weather prediction
GE Wind Energy
Renewable energy
Weather Research and Forecasting model
Atmospheric sciences
Meteorology
Wind power

Development of Eastern Regional Wind Resource and Wind Plant Output Datasets March 3, 2008 — March 31, 2010 Michael Brower

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