A Hybrid Intelligent System to forecast solar energy production

Computers & Electrical Engineering - Tập 78 - Trang 373-387 - 2019
Nuño Basurto1, Ángel Arroyo1, Rafael Vega2, Héctor Quintián2, José Luis Calvo-Rolle2, Álvaro Herrero1
1Grupo de Inteligencia Computacional Aplicada (GICAP), Departamento de Ingeniería Civil, Escuela Politécnica Superior, Universidad de Burgos, Av. Cantabria s/n, 09006 Burgos, Spain
2Department of Industrial Engineering, University of Coruña, Avda. 19 de febrero S/N 15405, Ferrol - Coruña, Spain

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