STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA

The use of Neuro-Fuzzy Controller (NFC) is introduced to handle the limitation of on-off conventional controllers in reducing output oscillation generated by Solar Power Generator System. In the thesis, the simulation is carried out using one of the system applications known as Solar Home System SHS...

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Main Author: Witjakso, Ario
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/1563
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:1563
spelling id-itb.:15632004-11-06T23:23:33ZSTUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA Witjakso, Ario Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/1563 The use of Neuro-Fuzzy Controller (NFC) is introduced to handle the limitation of on-off conventional controllers in reducing output oscillation generated by Solar Power Generator System. In the thesis, the simulation is carried out using one of the system applications known as Solar Home System SHS). NFC is also expected to solve the excessive solar energy problem that occurs due to limited conventional controller performance. Besides, the resulting NFC is still open for both better operation and further development. The proposed NFC can be trained and learned from data based on ANFIS Adaptive Network Base on Fuzzy Inference System). Training is intended to determine all the control parameters. The determination of these parameters does not only depend on learning algorithm but also data that is fed to the system. Error back propagation algorithm is used to train the controller using data that are generated from SHS model consisting of components such as Photovoltaic, Battery etc. Photovoltaic model having RMSE 0.0072, and Battery having 0.0865 (charging) and 0.0053 (discharging) are used to develop the NFC having 2 inputs, and 1 output. Each input has 5 membership generalized Bell functions. The simulation is also done for 3 and 4-membership functions, using 2000 epochs. The resulting errors are 0.689, 0.700 and 2.404 for 5, 4 and 3 membership function, respectively. The implementation of NFC on SHS model shows that the additional load is needed. However, the designed NFC can still reduce the number of oscillation and store more energy in the battery as much as 13% at charging condition 1 A. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description The use of Neuro-Fuzzy Controller (NFC) is introduced to handle the limitation of on-off conventional controllers in reducing output oscillation generated by Solar Power Generator System. In the thesis, the simulation is carried out using one of the system applications known as Solar Home System SHS). NFC is also expected to solve the excessive solar energy problem that occurs due to limited conventional controller performance. Besides, the resulting NFC is still open for both better operation and further development. The proposed NFC can be trained and learned from data based on ANFIS Adaptive Network Base on Fuzzy Inference System). Training is intended to determine all the control parameters. The determination of these parameters does not only depend on learning algorithm but also data that is fed to the system. Error back propagation algorithm is used to train the controller using data that are generated from SHS model consisting of components such as Photovoltaic, Battery etc. Photovoltaic model having RMSE 0.0072, and Battery having 0.0865 (charging) and 0.0053 (discharging) are used to develop the NFC having 2 inputs, and 1 output. Each input has 5 membership generalized Bell functions. The simulation is also done for 3 and 4-membership functions, using 2000 epochs. The resulting errors are 0.689, 0.700 and 2.404 for 5, 4 and 3 membership function, respectively. The implementation of NFC on SHS model shows that the additional load is needed. However, the designed NFC can still reduce the number of oscillation and store more energy in the battery as much as 13% at charging condition 1 A.
format Theses
author Witjakso, Ario
spellingShingle Witjakso, Ario
STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA
author_facet Witjakso, Ario
author_sort Witjakso, Ario
title STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA
title_short STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA
title_full STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA
title_fullStr STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA
title_full_unstemmed STUDI PERANCANGAN PENGONTROL NEURO-FUZZY PADA PEMBANGKIT LISTRIK TENAGA SURYA
title_sort studi perancangan pengontrol neuro-fuzzy pada pembangkit listrik tenaga surya
url https://digilib.itb.ac.id/gdl/view/1563
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