Predictive models development using gradient boosting based methods for solar power plants

Necati Aksoy*, Istemihan Genc

*Bu çalışma için yazışmadan sorumlu yazar

Araştırma sonucu: Dergiye katkıMakalebilirkişi

33 Atıf (Scopus)

Özet

Being able to predict the power to be generated by solar power plants in a smart grid, microgrid or nanogrid with high accuracy and speed brings a lot of advantages in the decisions to be made for these systems. Making power generation forecasts, which are strictly dependent on the dynamic energy management of these grids, influences many factors from the amount of energy to be stored to the cost of energy. In this study, the development and analysis of three gradient boosting machine learning-based methods for power prediction are carried out. Innovative and fast predictive models are designed with XGBoost, LightGBM and CatBoost algorithms. These models, which have a training set consisting of several meteorological features, offer considerable benefits such as high accuracy and fast learning. Further, the performances of these models are compared and their applicability is discussed.

Orijinal dilİngilizce
Makale numarası101958
DergiJournal of Computational Science
Hacim67
DOI'lar
Yayın durumuYayınlandı - Mar 2023

Bibliyografik not

Publisher Copyright:
© 2023 Elsevier B.V.

Finansman

All authors approved version of the manuscript to be published.

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