Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey

Sun is the most important energy source of the world. To make use of this energy source effectively, the sun’s angle of incidence to earth must be known. The angle, however, between rotation axis and orbital plane of the world is not constant and it changes continuously. Depending on this change, th...

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Main Author: Mustafa Şahin
Format: Article
Language:English
Published: Faculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in Osijek 2019-01-01
Series:Tehnički Vjesnik
Subjects:
Online Access:https://hrcak.srce.hr/file/322619
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author Mustafa Şahin
author_facet Mustafa Şahin
author_sort Mustafa Şahin
collection DOAJ
description Sun is the most important energy source of the world. To make use of this energy source effectively, the sun’s angle of incidence to earth must be known. The angle, however, between rotation axis and orbital plane of the world is not constant and it changes continuously. Depending on this change, the incidence angle of sun beams also change. For purpose of increasing the light amount falling on solar panels, light beams must be adjusted according to their angles of incidence. The difference of this study from the studies in literature realized to determine the optimum tilt angle by means of mathematical methods is the determination of optimum tilt angles with artificial neural networks. In the study, not each province within boundaries of Turkey but the whole country as a system was introduced to the artificial neural network. Thanks to this, monthly optimum tilt angle of the system to be installed in any place within boundaries of Turkey was determined by the artificial neural network. The installed solar panels were adjusted according to this optimum tilt angle. Thanks to this, it was ensured to be obtained maximum output from solar panels. Mounting of the system according to an angle as predicted by artificial neural network has caused 34% increase in energy amount obtained from fixed solar panel systems. Consequently, in this study, in prediction of optimum tilt angle of fixed solar panels, in what extent the artificial neural networks are successful were observed. It was determined that correct results have been obtained in respect of both economy and utilization.
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spelling doaj.art-3f102a409f684317a0e7d889ae11da7f2024-04-15T15:34:21ZengFaculty of Mechanical Engineering in Slavonski Brod, Faculty of Electrical Engineering in Osijek, Faculty of Civil Engineering in OsijekTehnički Vjesnik1330-36511848-63392019-01-0126359660210.17559/TV-20160702220418Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in TurkeyMustafa Şahin0Afyon Kocatepe University, Technology Faculty, Electrical and Electronic Engineering, Gazlıgöl, 03200, Afyonkarahisar, TurkeySun is the most important energy source of the world. To make use of this energy source effectively, the sun’s angle of incidence to earth must be known. The angle, however, between rotation axis and orbital plane of the world is not constant and it changes continuously. Depending on this change, the incidence angle of sun beams also change. For purpose of increasing the light amount falling on solar panels, light beams must be adjusted according to their angles of incidence. The difference of this study from the studies in literature realized to determine the optimum tilt angle by means of mathematical methods is the determination of optimum tilt angles with artificial neural networks. In the study, not each province within boundaries of Turkey but the whole country as a system was introduced to the artificial neural network. Thanks to this, monthly optimum tilt angle of the system to be installed in any place within boundaries of Turkey was determined by the artificial neural network. The installed solar panels were adjusted according to this optimum tilt angle. Thanks to this, it was ensured to be obtained maximum output from solar panels. Mounting of the system according to an angle as predicted by artificial neural network has caused 34% increase in energy amount obtained from fixed solar panel systems. Consequently, in this study, in prediction of optimum tilt angle of fixed solar panels, in what extent the artificial neural networks are successful were observed. It was determined that correct results have been obtained in respect of both economy and utilization.https://hrcak.srce.hr/file/322619Artificial Neural NetworksOptimum Tilt AngleRenewable EnergySolar Cell
spellingShingle Mustafa Şahin
Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey
Tehnički Vjesnik
Artificial Neural Networks
Optimum Tilt Angle
Renewable Energy
Solar Cell
title Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey
title_full Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey
title_fullStr Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey
title_full_unstemmed Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey
title_short Determining Optimum Tilt Angles of Photovoltaic Panels by Using Artificial Neural Networks in Turkey
title_sort determining optimum tilt angles of photovoltaic panels by using artificial neural networks in turkey
topic Artificial Neural Networks
Optimum Tilt Angle
Renewable Energy
Solar Cell
url https://hrcak.srce.hr/file/322619
work_keys_str_mv AT mustafasahin determiningoptimumtiltanglesofphotovoltaicpanelsbyusingartificialneuralnetworksinturkey