WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE
The influence of climate change is crucial to ensure effective planning and management of water resources in the future. Researchers previously adopted conventional artificial neural network (ANN) models for solving optimization problems. However, conventional ANN models exhibited a tendency for loc...
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2024
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Online Access: | http://ir.unimas.my/id/eprint/46909/1/Whale%20Optimization.pdf http://ir.unimas.my/id/eprint/46909/ https://www.cambridgescholars.com/product/978-1-0364-0804-6 |
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my.unimas.ir-469092024-12-24T03:55:02Z http://ir.unimas.my/id/eprint/46909/ WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE Kuok, King Kuok Chiu, Po Chan Md. Rezaur, Rahman Teng, Yeow Haur T Technology (General) The influence of climate change is crucial to ensure effective planning and management of water resources in the future. Researchers previously adopted conventional artificial neural network (ANN) models for solving optimization problems. However, conventional ANN models exhibited a tendency for local optima trapping, rendering them ineffective as the complexity of optimization problems increased. This issue can be addressed using metaheuristic-based ANN models, such as Whale Optimization Neural Networks (WONN), for developing a water level model at the Batu Kitang Submersible Weir (BKSW). Hyper-parameter tuning was conducted to determine the optimal configuration of WONN using the GFDL-CM3 Global Circulation Model (GCM) under the RCP4.5 scenario. A total of 2,555 daily data points were used, with 70% allocated for training and 30% for testing. The models' performance was evaluated based on average mean absolute error, average root mean square error, and average correlation coefficient. Results revealed that the optimal configuration of WONN was determined to be 18 hidden nodes, 30 search agents, 250 maximum iterations, and 2,500 epochs, yielding an average mean absolute error of 0.1425, an average root mean square error of 0.1989, and an average correlation coefficient of 0.9097. The future long-term daily weir water level is forecasted to increase over the years, necessitating further efforts and measures to control water downstream for flood mitigation purposes. Cambridge Scholars Publishing King Kuok, Kuok Rezaur, Rahman 2024-08-30 Book Chapter PeerReviewed text en http://ir.unimas.my/id/eprint/46909/1/Whale%20Optimization.pdf Kuok, King Kuok and Chiu, Po Chan and Md. Rezaur, Rahman and Teng, Yeow Haur (2024) WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE. In: Metaheuristic Algorithms and Neural Networks in Hydrology. Cambridge Scholars Publishing, pp. 105-129. ISBN 978-1-0364-0804-6 https://www.cambridgescholars.com/product/978-1-0364-0804-6 |
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T Technology (General) Kuok, King Kuok Chiu, Po Chan Md. Rezaur, Rahman Teng, Yeow Haur WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE |
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The influence of climate change is crucial to ensure effective planning and management of water resources in the future. Researchers previously adopted conventional artificial neural network (ANN) models for solving optimization problems. However, conventional ANN models exhibited a tendency for local optima trapping, rendering them ineffective as the complexity of optimization problems increased. This issue can be addressed using metaheuristic-based ANN models, such as Whale Optimization Neural Networks (WONN), for developing a water level model at the Batu Kitang Submersible Weir (BKSW). Hyper-parameter tuning was conducted to determine the optimal configuration of WONN using the GFDL-CM3 Global Circulation Model (GCM) under the RCP4.5 scenario. A total of 2,555 daily data points were used, with 70% allocated for training and 30% for testing. The models' performance was evaluated based on average mean absolute error, average root mean square error, and average correlation coefficient. Results revealed that the optimal configuration of WONN was determined to be 18 hidden nodes, 30 search agents, 250 maximum iterations, and 2,500 epochs, yielding an average mean absolute error of 0.1425, an average root mean square error of 0.1989, and an average correlation coefficient of 0.9097. The future long-term daily weir water level is forecasted to increase over the years, necessitating further efforts and measures to control water downstream for flood mitigation purposes. |
author2 |
King Kuok, Kuok |
author_facet |
King Kuok, Kuok Kuok, King Kuok Chiu, Po Chan Md. Rezaur, Rahman Teng, Yeow Haur |
format |
Book Chapter |
author |
Kuok, King Kuok Chiu, Po Chan Md. Rezaur, Rahman Teng, Yeow Haur |
author_sort |
Kuok, King Kuok |
title |
WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE |
title_short |
WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE |
title_full |
WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE |
title_fullStr |
WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE |
title_full_unstemmed |
WHALE OPTIMIZATION NEURAL NETWORK FOR DAILY WATER LEVEL FORECASTING CONSIDERING THE CHANGING CLIMATE |
title_sort |
whale optimization neural network for daily water level forecasting considering the changing climate |
publisher |
Cambridge Scholars Publishing |
publishDate |
2024 |
url |
http://ir.unimas.my/id/eprint/46909/1/Whale%20Optimization.pdf http://ir.unimas.my/id/eprint/46909/ https://www.cambridgescholars.com/product/978-1-0364-0804-6 |
_version_ |
1819914972426141696 |
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13.223943 |