Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers

Many implementations of artificial neural networks have been reported in scientific papers. However, few of these implementations allow the direct use of off-line trained networks. Moreover, no implementation reported the use of relatively small network adequate to run on low cost microcontroller. H...

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Main Authors: Sufyan Samara, Emad Natsheh
Format: Article
Language:English
Published: Elsevier 2018-11-01
Series:Heliyon
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405844018319042
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spelling doaj-d82a45c852034642921a249fc14fe9e22020-11-25T03:04:50ZengElsevierHeliyon2405-84402018-11-01411e00972Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollersSufyan Samara0Emad Natsheh1Corresponding author.; Department of Computer Engineering, An-Najah National University, Nablus, PalestineDepartment of Computer Engineering, An-Najah National University, Nablus, PalestineMany implementations of artificial neural networks have been reported in scientific papers. However, few of these implementations allow the direct use of off-line trained networks. Moreover, no implementation reported the use of relatively small network adequate to run on low cost microcontroller. Hence, this work, which presents a small artificial neural network, which models the output power of heterogeneous photovoltaic panel. In addition, the work discuss the hardware implementation that allows such network to run on low cost microcontroller. The hardware implementation has the ability to model heterogeneous photovoltaic panel's output power with very high accuracy and fast response time. Feedforward back propagation has been used because of its high resolution and accurate activation function. Real-time measured parameters can be used as inputs for the developed system. The resulting hardware data is tested with data from real photovoltaic panels; to confirm that it can efficiently implement the models prepared off-line with Matlab. The comparison revealed the robustness of the proposed heterogeneous photovoltaic model system at different conditions. The proposed heterogeneous photovoltaic model system offer a proper and efficient tool that can be used in monitoring photovoltaic panels, such as the ones used in smart-house applications.http://www.sciencedirect.com/science/article/pii/S2405844018319042Electrical engineeringEnergy engineeringComputer science
collection DOAJ
language English
format Article
sources DOAJ
author Sufyan Samara
Emad Natsheh
spellingShingle Sufyan Samara
Emad Natsheh
Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
Heliyon
Electrical engineering
Energy engineering
Computer science
author_facet Sufyan Samara
Emad Natsheh
author_sort Sufyan Samara
title Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
title_short Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
title_full Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
title_fullStr Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
title_full_unstemmed Modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
title_sort modeling the output power of heterogeneous photovoltaic panels based on artificial neural networks using low cost microcontrollers
publisher Elsevier
series Heliyon
issn 2405-8440
publishDate 2018-11-01
description Many implementations of artificial neural networks have been reported in scientific papers. However, few of these implementations allow the direct use of off-line trained networks. Moreover, no implementation reported the use of relatively small network adequate to run on low cost microcontroller. Hence, this work, which presents a small artificial neural network, which models the output power of heterogeneous photovoltaic panel. In addition, the work discuss the hardware implementation that allows such network to run on low cost microcontroller. The hardware implementation has the ability to model heterogeneous photovoltaic panel's output power with very high accuracy and fast response time. Feedforward back propagation has been used because of its high resolution and accurate activation function. Real-time measured parameters can be used as inputs for the developed system. The resulting hardware data is tested with data from real photovoltaic panels; to confirm that it can efficiently implement the models prepared off-line with Matlab. The comparison revealed the robustness of the proposed heterogeneous photovoltaic model system at different conditions. The proposed heterogeneous photovoltaic model system offer a proper and efficient tool that can be used in monitoring photovoltaic panels, such as the ones used in smart-house applications.
topic Electrical engineering
Energy engineering
Computer science
url http://www.sciencedirect.com/science/article/pii/S2405844018319042
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AT emadnatsheh modelingtheoutputpowerofheterogeneousphotovoltaicpanelsbasedonartificialneuralnetworksusinglowcostmicrocontrollers
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