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Adaptive post-processing of short-term wind forecasts for energy applications
Author(s)
Date Issued
2011-04
Date Available
2011-04-08T10:54:04Z
Abstract
We present a new method of reducing the error in predicted wind speed, thus enabling better management of wind energy
facilities. A numerical weather prediction model, COSMO, was used to produce 48 h forecast data every day in 2008 at
horizontal resolutions of 10 and 3 km. A new adaptive statistical method was applied to the model output to improve the
forecast skill. The method applied corrective weights to a set of forecasts generated using several post-processing methods.
The weights were calculated based on the recent skill of the different forecasts. The resulting forecast data were compared
with observed data, and skill scores were calculated to allow comparison between different post-processing methods. The
total root mean square error performance of the composite forecast is superior to that of any of the individual methods.
facilities. A numerical weather prediction model, COSMO, was used to produce 48 h forecast data every day in 2008 at
horizontal resolutions of 10 and 3 km. A new adaptive statistical method was applied to the model output to improve the
forecast skill. The method applied corrective weights to a set of forecasts generated using several post-processing methods.
The weights were calculated based on the recent skill of the different forecasts. The resulting forecast data were compared
with observed data, and skill scores were calculated to allow comparison between different post-processing methods. The
total root mean square error performance of the composite forecast is superior to that of any of the individual methods.
Sponsorship
Science Foundation Ireland
Type of Material
Journal Article
Publisher
Wiley
Journal
Wind Energy
Volume
14
Issue
3
Start Page
317
End Page
325
Copyright (Published Version)
2010 John Wiley & Sons, Ltd.
Subject – LCSH
Wind forecasting
Numerical weather forecasting
Wind power
Statistical weather forecasting
Web versions
Language
English
Status of Item
Peer reviewed
ISSN
1099-1824
This item is made available under a Creative Commons License
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WindEnergy-Web.pdf
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142.55 KB
Format
Adobe PDF
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