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Fundamental Research / Recherche fondamentale

Surface Wind Speed Prediction in the Canadian Arctic using Non-Linear Machine Learning Methods

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Pages 22-31 | Received 16 Dec 2009, Accepted 02 Nov 2010, Published online: 15 Feb 2011

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