Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system
Renewable energy is rapidly emerging as one of the most viable alternative source of power generation due to the following advantages of the wind turbine. Firstly, the wind turbine is cost-effective and eco-friendly. Secondly, the turbine is useful as efficient as possible for the changeable power g...
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iium-245162012-07-17T01:16:11Z http://irep.iium.edu.my/24516/ Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system Hossain, Altab Rahman, Mohammed Ataur T Technology (General) Renewable energy is rapidly emerging as one of the most viable alternative source of power generation due to the following advantages of the wind turbine. Firstly, the wind turbine is cost-effective and eco-friendly. Secondly, the turbine is useful as efficient as possible for the changeable power generation based on the wind velocity. However, the efficiency of the wind turbine can be achieved by using optimum turbine parameters in which energy is produced, used and saved. There are several techniques reported in literature to reach an optimum performance such as fuzzy expert system. However, in application, correct selection of turbine parameters is critical to estimate wind power generation by using FES since it depends only on expert’s knowledge. Hence, there is a need for a more efficient and simple system that could be employed to predict wind power generation. In this work, an adaptive neuro-fuzzy inference system (ANFIS) was developed with Reynolds number and wind velocity used as inputs to estimate wind power generation. The results obtained from experimental power generation were in good agreement with that obtained by ANFIS simulation i.e. with an average percentage deviation of 4.55% in power generation and a goodness of fit of 0.95 were obtained. This work has demonstrated the viability of modeling a wind turbine-power mechanics using an adaptive neuro-fuzzy inference system. American Institute of Physics 2013 Article PeerReviewed application/pdf en http://irep.iium.edu.my/24516/1/Wind_turbine__JRSE-MS_-_RE_-_110486-Accepted_Copy-2012.pdf Hossain, Altab and Rahman, Mohammed Ataur (2013) Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system. Journal of Renewable and Sustainable Energy Editorial Office, xx (xx). xx-xx. ISSN 1941-7012 (In Press) http://jrse.aip.org/ |
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T Technology (General) Hossain, Altab Rahman, Mohammed Ataur Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
description |
Renewable energy is rapidly emerging as one of the most viable alternative source of power generation due to the following advantages of the wind turbine. Firstly, the wind turbine is cost-effective and eco-friendly. Secondly, the turbine is useful as efficient as possible for the changeable power generation based on the wind velocity. However, the efficiency of the wind turbine can be achieved by using optimum turbine parameters in which energy is produced, used and saved. There are several techniques reported in literature to reach an optimum performance such as fuzzy expert system. However, in application, correct selection of turbine parameters is critical to estimate wind power generation by using FES since it depends only on expert’s knowledge. Hence, there is a need for a more efficient and simple system that could be employed to predict wind power generation. In this work, an adaptive neuro-fuzzy inference system (ANFIS) was developed with Reynolds number and wind velocity used as inputs to estimate wind power generation. The results obtained from experimental power generation were in good agreement with that obtained by ANFIS simulation i.e. with an average percentage deviation of 4.55% in power generation and a goodness of fit of 0.95 were obtained. This work has demonstrated the viability of modeling a wind turbine-power mechanics using an adaptive neuro-fuzzy inference system. |
format |
Article |
author |
Hossain, Altab Rahman, Mohammed Ataur |
author_facet |
Hossain, Altab Rahman, Mohammed Ataur |
author_sort |
Hossain, Altab |
title |
Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
title_short |
Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
title_full |
Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
title_fullStr |
Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
title_full_unstemmed |
Evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
title_sort |
evaluation of wind turbine power generation by using an adaptive neuro fuzzy inference system |
publisher |
American Institute of Physics |
publishDate |
2013 |
url |
http://irep.iium.edu.my/24516/ http://irep.iium.edu.my/24516/ http://irep.iium.edu.my/24516/1/Wind_turbine__JRSE-MS_-_RE_-_110486-Accepted_Copy-2012.pdf |
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2023-09-18T20:36:45Z |
last_indexed |
2023-09-18T20:36:45Z |
_version_ |
1777409096975122432 |