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The Statistical Prediction Of Offshore Winds From Land-Based Data For Wind-Energy Applications
Authors:John L Walmsley  Rebecca J Barthelmie  William R Burrows
Institution:(1) Meteorological Service of Canada, Canada;(2) Department of Wind Energy and Atmospheric Physics, Risø dNational Laboratory, Roskilde, Denmark;(3) Meteorological Service of Canada, Downsview, Ontario, Canada
Abstract:Land-based meteorological measurements at two locations on the Danish coast are used to predict offshore wind speeds. Offshore wind-speed data are used only for developing the statistical prediction algorithms and forverification. As a first step, the two datasets were separated into ninepercentile-based bins, with a minimum of 30 data records in each bin. Next, the records were randomly selected with approximately 70% of the data in each bin being used as a training set for development of the prediction algorithms, and the remaining 30% being reserved as a test set for evaluation purposes. The binning procedure ensured that both training and test sets fairly represented the overall data distribution.To base the conclusions on firmer ground, five permutations of these training and test sets were created. Thus, all calculations were based on five cases, each one representing a different random selection from the same data, but maintaining the (approximate) 70-30 split in each bin. This procedure served to ensure that conclusions were not based on a single randomly-selected case. Two statistical methods are employed:multiple linear regression (MLR), and Classification and Regression Trees(CART). MLR produces excellent results using only land-based predictors.The CART results are similar to those from MLR, and tend to be slightly better.Retired
Keywords:Offshore wind energy  Statistical prediction  Wind speed
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