International · International Journal · 2025
SolarNexus: A deep learning framework for adaptive photovoltaic power generation forecasting and scalable management
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solar forecastingphotovoltaicbuilding energybuilt environmentenergy AIforecastingcommercial buildingsoperation optimizationInternationalInternational Journal
Citation-ready BibTeX
@article{noh2025solarnexusadeeplearningf,
title = {SolarNexus: A deep learning framework for adaptive photovoltaic power generation forecasting and scalable management},
author = {H. Min and B. Noh},
year = {2025},
journal = {Applied Energy 391 (2025): 125848.}
}