Activitatea I.5.

Proiectarea și simularea modelului funcțional al sistemului PV

Scenariul nr. 1

Scenariul nr. 2

Scenariul nr. 3

Scenariul nr. 4

Bibliografie

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[18]Sustainable Energy Authority of Ireland,

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http://www.carbontrust.com/media/31683/ctg008_monitoring_and_targeting.pdf

[22] Ordinul 1287/2018 pentru aprobarea Ghidului de finanţare a Programului privind instalarea sistemelor de panouri fotovoltaice pentru producerea de energie electrică, în vederea acoperirii necesarului de consum şi livrării surplusului în reţeaua naţională

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