Development of an integrated model on the basis of GCMs-RF-FA for predicting wind energy resources under climate change impact: A case study of Jing-Jin-Ji region in China
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DOI: 10.1016/j.renene.2023.119547
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Keywords
Climate change; Factorial analysis; Jing-jin-ji region; Multiple GCMs; Random forest; Wind energy resources;All these keywords.
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