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NTIS 바로가기Energies, v.14 no.10, 2021년, pp.2822 -
Lee, Dongkyu , Jeong, Jae-Weon , Choi, Guebin
Photovoltaics are methods used to generate electricity by using solar cells, which convert natural energy from the sun. This generation makes use of unlimited natural energy. However, this generation is irregular because they depend on weather occurrences. For this reason, there is a need to improve...
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