Details
Title
A combined method for wind power generation forecastingJournal title
Archives of Electrical EngineeringYearbook
2021Volume
vol. 70Issue
No 4Affiliation
Le, Tuan-Ho : Faculty of Engineering and Technology, Quy Nhon University, Quy Nhon, Binh Dinh Province, 820000, VietnamAuthors
Keywords
autoregressive integrated moving average ; exponential smoothing method ; forecasting ; response surface methodology ; wind powerDivisions of PAS
Nauki TechniczneCoverage
991-1009Publisher
Polish Academy of SciencesBibliography
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