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NTIS 바로가기응용통계연구 = The Korean journal of applied statistics, v.34 no.5, 2021년, pp.723 - 734
박수진 (중앙대학교 응용통계학과) , 이진영 (중앙대학교 응용통계학과) , 김삼용 (중앙대학교 응용통계학과)
Wind energy is one of the rapidly developing renewable energies which is being developed and invested in response to climate change. As renewable energy policies and power plant installations are promoted, the supply of wind power in Korea is gradually expanding and attempts to accurately predict de...
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