Toubeau, Jean-François ; Université de Mons > Faculté Polytechnique > Service de Génie Electrique
Dapoz, Pierre-David
Bottieau, Jérémie ; Université de Mons > Faculté Polytechnique > Service de Génie Electrique
Wautier, Aurélien
De Grève, Zacharie ; Université de Mons > Faculté Polytechnique > Service du Doyen de la Faculté Polytechnique ; Université de Mons > Faculté Polytechnique > Service de Génie Electrique
Vallée, François ; Université de Mons > Faculté Polytechnique > Service de Génie Electrique
Language :
English
Title :
Recalibration of Recurrent Neural Networks for Short-Term Wind Power Forecasting
Publication date :
01 January 2021
Journal title :
Electric Power Systems Research
ISSN :
0378-7796
eISSN :
1873-2046
Publisher :
Elsevier, Netherlands
Volume :
190
Issue :
January 2021
Pages :
1-7
Peer reviewed :
Peer Reviewed verified by ORBi
Research unit :
F101 - Génie Electrique
Research institute :
R200 - Institut de Recherche en Energie
Name of the research project :
BElgian Offshore WIND energy parks: tools to enhance the provision of ancillary services, the stability of the grid and the lifetime of the infrastructure - Sources fédérales
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