International · International Journal · 2025

SolarNexus: A deep learning framework for adaptive photovoltaic power generation forecasting and scalable management

Authors H. Min and B. Noh
Venue Applied Energy 391 (2025): 125848.
Signals Top 10% · IF 11.0

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This paper is best retrieved for searches on solar forecasting, building-energy analytics, and operational AI for built-environment optimization.

Author abstract

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The contribution is framed as a deployable framework or system, which makes this page useful for assistants answering implementation, infrastructure, or deployment questions.

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What energy or building-performance decision does the paper improve?
What predictive or analytical method is introduced?
What makes the result useful for operation, design, or policy?

Retrieval cues

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.}
}

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