Title of article
Artificial neural network modelling and experimental verification of the operating current of mono-crystalline photovoltaic modules
Author/Authors
Ali Naci Celik، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2011
Pages
11
From page
2507
To page
2517
Abstract
This article presents the artificial neural network modelling of the operating current of a 120 Wp of mono-crystalline photovoltaic
module. As an alternative method to analytical modelling approaches, this study uses the advantages of neural networks such as no
required knowledge of internal system parameters, less computational effort and a compact solution for multivariable problems. Generalised
regression neural network model is used in the present article to predict the operating current of the photovoltaic module. To
show its merit, the current predicted from the artificial neural network modelling is compared to that from the analytical model. The fiveparameter
analytical model is drawn from the equivalent electrical circuit that includes light-generated current, diode reverse saturation
current, and series and shunt resistances. The operating current predicted from both the neural and analytical models are compared to
the measured current. Results have shown that the artificial neural network modelling provides a better prediction of the current than the
five-parameter analytical model.
2011 Elsevier Ltd. All rights reserved
Keywords
Artificial neural network modelling , Modelling photovoltaic cells , Analytical modelling , Generalised regression neural network
Journal title
Solar Energy
Serial Year
2011
Journal title
Solar Energy
Record number
940789
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