River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network

One of the largest hydropower facilities currently in operation in Malaysia is the Terengganu hydroelectric facility. As a result, for hydropower generation to be sustainable, future water availability in hydropower plants must be known. Therefore, it is necessary to precisely estimate how the river...

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Main Authors: Zanial, Wan Norsyuhada Che Wan, Malek, Marlinda Binti Abdul, Reba, Mohd Nadzri Md, Zaini, Nuratiah, Ahmed, Ali Najah, Sherif, Mohsen, Ahmed ElShafie, Ahmed Hussein Kamel
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Published: Springer Heidelberg 2023
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Online Access:http://eprints.um.edu.my/39148/
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Institution: Universiti Malaya
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spelling my.um.eprints.391482023-11-29T08:55:18Z http://eprints.um.edu.my/39148/ River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network Zanial, Wan Norsyuhada Che Wan Malek, Marlinda Binti Abdul Reba, Mohd Nadzri Md Zaini, Nuratiah Ahmed, Ali Najah Sherif, Mohsen Ahmed ElShafie, Ahmed Hussein Kamel TA Engineering (General). Civil engineering (General) One of the largest hydropower facilities currently in operation in Malaysia is the Terengganu hydroelectric facility. As a result, for hydropower generation to be sustainable, future water availability in hydropower plants must be known. Therefore, it is necessary to precisely estimate how the river flow will alter as a result of changing rainfall patterns. Finding the best value for the hyper-parameters is one of the problems with machine learning algorithms, which have lately been adopted by many academics. In this research, Artificial Neural Network (ANN) is integrated with a nature-inspired optimizer, namely Cuckoo search algorithm (CS-ANN). The performance of the proposed algorithm then will be examined based on statistical indices namely Root-Mean-Square Error (RSME) and Determination Coefficient (R-2). Then, the accuracy of the proposed model will be then examined with the stand-alone Artificial Neural Network (ANN). The statistical indices results indicate that the proposed Hybrid CS-ANN model showed an improvement based on R-2 value as compared to ANN model with R-2 of 0.900 at training stage and R-2 of 0.935 at testing stage. RMSE value, for ANN model, is 127.79 m(3)/s for training stage and 12.7 m(3)/s at testing stage. While for the proposed Hybrid CS-ANN model, RMSE value is equal to 121.7 m(3)/s for training stage and 10.95 m(3)/s for testing stage. The results revealed that the proposed model outperformed the stand-alone model in predicting the river flow with high level of accuracy. Although the proposed model could be applied in different case study, there is a need to tune the model internal parameters when applied in different case study. Springer Heidelberg 2023-01 Article PeerReviewed Zanial, Wan Norsyuhada Che Wan and Malek, Marlinda Binti Abdul and Reba, Mohd Nadzri Md and Zaini, Nuratiah and Ahmed, Ali Najah and Sherif, Mohsen and Ahmed ElShafie, Ahmed Hussein Kamel (2023) River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network. Applied Water Science, 13 (1). ISSN 2190-5487, DOI https://doi.org/10.1007/s13201-022-01830-0 <https://doi.org/10.1007/s13201-022-01830-0>. 10.1007/s13201-022-01830-0
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic TA Engineering (General). Civil engineering (General)
spellingShingle TA Engineering (General). Civil engineering (General)
Zanial, Wan Norsyuhada Che Wan
Malek, Marlinda Binti Abdul
Reba, Mohd Nadzri Md
Zaini, Nuratiah
Ahmed, Ali Najah
Sherif, Mohsen
Ahmed ElShafie, Ahmed Hussein Kamel
River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network
description One of the largest hydropower facilities currently in operation in Malaysia is the Terengganu hydroelectric facility. As a result, for hydropower generation to be sustainable, future water availability in hydropower plants must be known. Therefore, it is necessary to precisely estimate how the river flow will alter as a result of changing rainfall patterns. Finding the best value for the hyper-parameters is one of the problems with machine learning algorithms, which have lately been adopted by many academics. In this research, Artificial Neural Network (ANN) is integrated with a nature-inspired optimizer, namely Cuckoo search algorithm (CS-ANN). The performance of the proposed algorithm then will be examined based on statistical indices namely Root-Mean-Square Error (RSME) and Determination Coefficient (R-2). Then, the accuracy of the proposed model will be then examined with the stand-alone Artificial Neural Network (ANN). The statistical indices results indicate that the proposed Hybrid CS-ANN model showed an improvement based on R-2 value as compared to ANN model with R-2 of 0.900 at training stage and R-2 of 0.935 at testing stage. RMSE value, for ANN model, is 127.79 m(3)/s for training stage and 12.7 m(3)/s at testing stage. While for the proposed Hybrid CS-ANN model, RMSE value is equal to 121.7 m(3)/s for training stage and 10.95 m(3)/s for testing stage. The results revealed that the proposed model outperformed the stand-alone model in predicting the river flow with high level of accuracy. Although the proposed model could be applied in different case study, there is a need to tune the model internal parameters when applied in different case study.
format Article
author Zanial, Wan Norsyuhada Che Wan
Malek, Marlinda Binti Abdul
Reba, Mohd Nadzri Md
Zaini, Nuratiah
Ahmed, Ali Najah
Sherif, Mohsen
Ahmed ElShafie, Ahmed Hussein Kamel
author_facet Zanial, Wan Norsyuhada Che Wan
Malek, Marlinda Binti Abdul
Reba, Mohd Nadzri Md
Zaini, Nuratiah
Ahmed, Ali Najah
Sherif, Mohsen
Ahmed ElShafie, Ahmed Hussein Kamel
author_sort Zanial, Wan Norsyuhada Che Wan
title River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network
title_short River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network
title_full River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network
title_fullStr River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network
title_full_unstemmed River flow prediction based on improved machine learning method: Cuckoo Search-Artificial Neural Network
title_sort river flow prediction based on improved machine learning method: cuckoo search-artificial neural network
publisher Springer Heidelberg
publishDate 2023
url http://eprints.um.edu.my/39148/
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