Elektrotehničko i računarsko inženjerstvo
God. 37 Br. 02 (2022): Zbornik radova Fakulteta tehničkih nauka
DUGOROČNA PROGNOZA POTROŠNJE ELEKTRIČNE ENERGIJE ZASNOVANA NA LINEARNOM MODELU
Apstrakt
Rad se bavi problemom dugoročne prognoze potrošnje električne energije. Cilj rada jeste da se upotrebi jednostavan model i pokaže korelacija temperature vazduha sa potrošnjom električne energije. Korišteni su SVM i MLR algoritmi, koji rade prognozu potrоšnje na osnovu linearnog modela, dok su za određivanje tačnosti upotrebljeni kvantili, MAPE, MSE, PLF i Winkler funkcija.
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