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Short-Term Power Prediction of Building Integrated Photovoltaic (BIPV) System Based on Machine Learning Algorithms
Author(s) -
R. Kabilan,
Chandran Venkatesan,
J. Yogapriya,
Alagar Karthick,
Priyesh P. Gandhi,
V. Mohanavel,
Robbi Rahim,
S. Manoharan
Publication year - 2021
Publication title -
international journal of photoenergy
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.426
H-Index - 51
eISSN - 1687-529X
pISSN - 1110-662X
DOI - 10.1155/2021/5582418
Subject(s) - building integrated photovoltaics , facade , photovoltaic system , artificial neural network , roof , computer science , cluster analysis , machine learning , algorithm , mean squared error , decision tree , power (physics) , artificial intelligence , data mining , engineering , mathematics , civil engineering , electrical engineering , statistics , physics , quantum mechanics
One of the biggest challenges is towards ensuring large-scale integration of photovoltaic systems into buildings. This work is aimed at presenting a building integrated photovoltaic system power prediction concerning the building’s various orientations based on the machine learning data science tools. The proposed prediction methodology comprises a data quality stage, machine learning algorithm, weather clustering assessment, and an accuracy assessment. The results showed that the application of linear regression coefficients to the forecast outputs of the developed photovoltaic power generation neural network improved the PV power generation’s forecast output. The final model resulted from accurate forecasts, exhibiting a root mean square error of 4.42% in NN, 16.86% in QSVM, and 8.76% in TREE. The results are presented with the building facade and roof application such as flat roof, south facade, east facade, and west facade.

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