Reálopciók és mesterséges intelligencia a hidrogénalapú beruházások döntéstámogatásában
DOI:
https://doi.org/10.14267/VEZTUD.2026.03.04Kulcsszavak:
hidrogén, energiarendszerek, reálopciók, bizonytalanság, mesterséges intelligencia, bibliometriaAbsztrakt
A globális dekarbonizációs célok és az energiatranzíció gyors üteme átalakítják a technológiai és gazdasági döntéshozatalt. A hidrogén ígéretes fenntartható energiaforrás, azonban terjedését gátolják a magas beruházási és működési költségek, az infrastruktúra korlátai, valamint a szabályozási bizonytalanságok. A tanulmány célja a hidrogénberuházások tervezéséhez kapcsolódó kutatási trendek és módszerek feltérképezése. Bibliometriai elemzést végeztek a szerzők a kulcsszavak előfordulása, a regionális eloszlás és a szerzői hálózatok alapján. Kiemelik a reálopciók elméletét, valamint a mesterséges intelligencia és gépi tanulás szerepét a komplex energiarendszerek optimalizálásában. Eredményeik szerint a döntéselméleti kutatások elsősorban az energiarendszerek optimalizálására és a bizonytalanság kezelésére irányulnak, kevésbé a hidrogénre. A tanulmány kutatási hiányokat azonosít, és javaslatot tesz a hidrogén gazdasági értékelési modellekbe való beágyazására.Downloads
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