Statistička analiza procene vetropotencijala na teritoriji grada Kragujevca / Statistical analysis of the assessment of wind potential in the territory of the city of Kragujevac

Energija, ekonomija, ekologija, 4, XXV (2023) (стр 48-52)
 

АУТОР(И) / AUTHOR(S): Aleksandar Nešović, Nikola Komatina

Е-АДРЕСА / E-MAIL: aca.nesovic@gmail.com

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DOI: 10.46793/EEE23-4.48N

САЖЕТАК / ABSTRACT:

Poznavanje vektorskih karakteristika vetra (pravac, smer i intenzitet) preduslov je za određivanje vetropotencijala neke lokacije. Na osnovu procene vetropotencijala, vrše se dalje analize i istraživanja. Tek kada se svi zahtevani uslovi ispune, prelazi se na poslednje dve faze: implementacija (fizička realizacija, tj. postavljanje) i eksploatacija (puštanje u rad i korišćenje) vetrogeneratora. U ovom radu primenjena je statistička metodologija da bi se ispitala mogućnost postavljanja i korišćenja, prvenstveno, vertikalnih vetrogeneratora. Na osnovu jednogodišnjeg vremenskog fajla (sa jednočasovnim vremenskim korakom) formirani su karakteristični dijagrami (histogram brzine vetra, ruža vetrova, funkcija gustine verovatnoće, funkcija kumulativne raspodele i visinski profil brzine vetra) za procenu vetropotencijala urbanog područja grada Kragujevca. Predložena metodologija može se koristiti za procenu vetropotencijala bilo koje lokacije, kako urbane, tako i ruralne.

КЉУЧНЕ РЕЧИ / KEYWORDS:

Vetrogenerator, Vetropotencijal, Energija vetra, OIE, Statistička analiza, Urbana sredina

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