Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine

Marine renewable energy has made significant progress in the last few decades. Even after making substantial progress, the cost of electricity produced by tidal turbines is high. Therefore, the current paper concentrated on reducing the cost of transportation and installation of the turbine by perfo...

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Main Authors: Band, S.S., Taherei Ghazvinei, P., bin Wan Yusof, K., Hossein Ahmadi, M., Nabipour, N., Chau, K.-W.
Format: Article
Published: John Wiley and Sons Ltd 2021
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098177046&doi=10.1002%2fese3.849&partnerID=40&md5=7c5b0b1f8008f5d623c8241e46d3cd8b
http://eprints.utp.edu.my/23942/
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spelling my.utp.eprints.239422022-03-31T11:55:23Z Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine Band, S.S. Taherei Ghazvinei, P. bin Wan Yusof, K. Hossein Ahmadi, M. Nabipour, N. Chau, K.-W. Marine renewable energy has made significant progress in the last few decades. Even after making substantial progress, the cost of electricity produced by tidal turbines is high. Therefore, the current paper concentrated on reducing the cost of transportation and installation of the turbine by performing a model. Extreme Learning Machine and Support Vector Machines as well as Genetic Programming were applied to predict the performance of the turbine model by creating short-term, multistep-ahead prediction models to compute the performance of the H-rotor vertical axis Folding Tidal turbine. The performance of the turbine was verified by a numerical study using the three-dimensional approach for the viscous model with the unsteady flow. Statistical evaluation of the outcomes pointed out that advanced Extreme Learning Machine simulation made the assurance in formulating an innovative forecasting strategy for investigating the performances of the tidal turbine. This study shows that the application of the new procedure resulted in confident generality performance and learns faster than orthodox learning algorithms. In conclusion, the assessment indicated that the advanced Extreme Learning Machine simulation was capable as a promising alternative to existing numerical methods for computing the coefficient of performance for turbines. © 2020 The Authors. Energy Science & Engineering published by the Society of Chemical Industry and John Wiley & Sons Ltd. John Wiley and Sons Ltd 2021 Article NonPeerReviewed https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098177046&doi=10.1002%2fese3.849&partnerID=40&md5=7c5b0b1f8008f5d623c8241e46d3cd8b Band, S.S. and Taherei Ghazvinei, P. and bin Wan Yusof, K. and Hossein Ahmadi, M. and Nabipour, N. and Chau, K.-W. (2021) Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine. Energy Science and Engineering, 9 (5). pp. 633-644. http://eprints.utp.edu.my/23942/
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
description Marine renewable energy has made significant progress in the last few decades. Even after making substantial progress, the cost of electricity produced by tidal turbines is high. Therefore, the current paper concentrated on reducing the cost of transportation and installation of the turbine by performing a model. Extreme Learning Machine and Support Vector Machines as well as Genetic Programming were applied to predict the performance of the turbine model by creating short-term, multistep-ahead prediction models to compute the performance of the H-rotor vertical axis Folding Tidal turbine. The performance of the turbine was verified by a numerical study using the three-dimensional approach for the viscous model with the unsteady flow. Statistical evaluation of the outcomes pointed out that advanced Extreme Learning Machine simulation made the assurance in formulating an innovative forecasting strategy for investigating the performances of the tidal turbine. This study shows that the application of the new procedure resulted in confident generality performance and learns faster than orthodox learning algorithms. In conclusion, the assessment indicated that the advanced Extreme Learning Machine simulation was capable as a promising alternative to existing numerical methods for computing the coefficient of performance for turbines. © 2020 The Authors. Energy Science & Engineering published by the Society of Chemical Industry and John Wiley & Sons Ltd.
format Article
author Band, S.S.
Taherei Ghazvinei, P.
bin Wan Yusof, K.
Hossein Ahmadi, M.
Nabipour, N.
Chau, K.-W.
spellingShingle Band, S.S.
Taherei Ghazvinei, P.
bin Wan Yusof, K.
Hossein Ahmadi, M.
Nabipour, N.
Chau, K.-W.
Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
author_facet Band, S.S.
Taherei Ghazvinei, P.
bin Wan Yusof, K.
Hossein Ahmadi, M.
Nabipour, N.
Chau, K.-W.
author_sort Band, S.S.
title Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
title_short Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
title_full Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
title_fullStr Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
title_full_unstemmed Evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
title_sort evaluation of the accuracy of soft computing learning algorithms in performance prediction of tidal turbine
publisher John Wiley and Sons Ltd
publishDate 2021
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098177046&doi=10.1002%2fese3.849&partnerID=40&md5=7c5b0b1f8008f5d623c8241e46d3cd8b
http://eprints.utp.edu.my/23942/
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score 13.209306