Current methods and advances in forecasting of wind power generation

Renewable Energy - Tập 37 Số 1 - Trang 1-8 - 2012
Aoife Foley1,2,3, Paul Leahy1,2, Antonino Marvuglia4, Eamon McKeogh1,2
1Dept. of Civil & Environmental Engineering, School of Engineering, University College Cork, College Rd., Cork, Ireland
2Environmental Research Institute, University College Cork, Lee Rd. Cork, Ireland
3School of Mechanical and Aerospace Engineering, Ashby Building, Queen's University Belfast, Stranmillis Road, BT9 5AH, Northern Ireland, UK
4Cork Constraint Computation Center (4C), University College Cork, Western Gateway Building, Cork, Ireland

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