Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid

In this paper, we propose a new control-based the neural network and bootstrap method to get the predictive duty cycle for the maximum power point of hybrid Photovoltaic (PV) and Wind Turbine generator system (WTG) connected to 380 V grid. The neural network is designed to be controller by learning...

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Main Authors: Feby Agung Pamuji, Nurvita Arumsari, Mochamad Ashari, Hery Suryoatmojo, Soedibyo Soedibyo
Format: Article
Language:English
Published: Institut Teknologi Sepuluh Nopember 2020-10-01
Series:JAREE (Journal on Advanced Research in Electrical Engineering)
Online Access:http://jaree.its.ac.id/index.php/jaree/article/view/119
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spelling doaj-923b03fe891748649ac65db30fc2c7602021-02-26T04:28:46ZengInstitut Teknologi Sepuluh NopemberJAREE (Journal on Advanced Research in Electrical Engineering)2580-03612579-62162020-10-014210.12962/j25796216.v4.i2.11975Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of GridFeby Agung Pamuji0Nurvita Arumsari1Mochamad Ashari2Hery Suryoatmojo3Soedibyo Soedibyo4Institut Teknologi Sepuluh NopemberPoliteknik Perkapalan Negeri SurabayaInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberInstitut Teknologi Sepuluh NopemberIn this paper, we propose a new control-based the neural network and bootstrap method to get the predictive duty cycle for the maximum power point of hybrid Photovoltaic (PV) and Wind Turbine generator system (WTG) connected to 380 V grid. The neural network is designed to be controller by learning the data control of multi-input DC/ DC converter. The artificial neural network (ANN) needs many data for training then the ANN can give the predictive duty cycle to multi input DC/ DC converter. To get much data, we can use the bootstrap method to generate data from the real data. From Photovoltaic characteristic, we can get 344 real data after the data are made by bootstrap method we can get 8000 data. The 8000 data of PV can be used for training artificial neural network (ANN) of PV system. From wind turbine characteristic we can get 348 real data after the data are made by bootstrap method we can get 6000 data. The 6000 data of WT can be used for training artificial neural network of WT system. This new control has two responsibilities, are to shift the voltage of PV and WTG to optimum condition and to maintain the stability of grid system. From the simulation results those can be seen that the power of hybrid PV / WTG system using MPPT controller is in maximum power and has constant voltage and constant frequency of grid system.http://jaree.its.ac.id/index.php/jaree/article/view/119
collection DOAJ
language English
format Article
sources DOAJ
author Feby Agung Pamuji
Nurvita Arumsari
Mochamad Ashari
Hery Suryoatmojo
Soedibyo Soedibyo
spellingShingle Feby Agung Pamuji
Nurvita Arumsari
Mochamad Ashari
Hery Suryoatmojo
Soedibyo Soedibyo
Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid
JAREE (Journal on Advanced Research in Electrical Engineering)
author_facet Feby Agung Pamuji
Nurvita Arumsari
Mochamad Ashari
Hery Suryoatmojo
Soedibyo Soedibyo
author_sort Feby Agung Pamuji
title Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid
title_short Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid
title_full Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid
title_fullStr Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid
title_full_unstemmed Predictive Duty Cycle of Maximum Power Point Tracking Based on Artificial Neural Network and Bootstrap Method for Hybrid Photovoltaic/ Wind Turbine System Considering Limitation Voltage of Grid
title_sort predictive duty cycle of maximum power point tracking based on artificial neural network and bootstrap method for hybrid photovoltaic/ wind turbine system considering limitation voltage of grid
publisher Institut Teknologi Sepuluh Nopember
series JAREE (Journal on Advanced Research in Electrical Engineering)
issn 2580-0361
2579-6216
publishDate 2020-10-01
description In this paper, we propose a new control-based the neural network and bootstrap method to get the predictive duty cycle for the maximum power point of hybrid Photovoltaic (PV) and Wind Turbine generator system (WTG) connected to 380 V grid. The neural network is designed to be controller by learning the data control of multi-input DC/ DC converter. The artificial neural network (ANN) needs many data for training then the ANN can give the predictive duty cycle to multi input DC/ DC converter. To get much data, we can use the bootstrap method to generate data from the real data. From Photovoltaic characteristic, we can get 344 real data after the data are made by bootstrap method we can get 8000 data. The 8000 data of PV can be used for training artificial neural network (ANN) of PV system. From wind turbine characteristic we can get 348 real data after the data are made by bootstrap method we can get 6000 data. The 6000 data of WT can be used for training artificial neural network of WT system. This new control has two responsibilities, are to shift the voltage of PV and WTG to optimum condition and to maintain the stability of grid system. From the simulation results those can be seen that the power of hybrid PV / WTG system using MPPT controller is in maximum power and has constant voltage and constant frequency of grid system.
url http://jaree.its.ac.id/index.php/jaree/article/view/119
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