Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregressive Neural Network to forecast the water level with multiple hour ahead for Melaka River. The development of flood forecast models is crucial and has led to risk control, policy recommendations, a...
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my.utem.eprints.267592023-03-28T10:46:21Z http://eprints.utem.edu.my/id/eprint/26759/ Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network Wei, Ming Wong Subramaniam, Siva Kumar Feroz, Farah Shahnaz Lew, Rose Ai Fen The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregressive Neural Network to forecast the water level with multiple hour ahead for Melaka River. The development of flood forecast models is crucial and has led to risk control, policy recommendations, a reduction in human life loss, and a reduction in flood-related property destruction. In this research, Artificial Neural Network (ANN) approach was used to forecast flood by modeling and forecasting water level time series . ANN approach was selected due to its high reputation abilities to learn from the time-series data pattern. A total of 2782 data for the period of one month was used in ANN training, validation, and testing to forecast the flash flood. In this study , Hybrid Gaussian Nonlinear Autoregressive Neural Network (Gaussian-NAR) was used as the ANN approach to forecasting the water level time series. This study's primary focus is to find the most appropriate forecast model to forecast the water level in multiple time steps ahead, which are 1 hour, 3 hours, 5 hours, and 7 hours. The forecast accuracy measures are measured using the Pearson R and R-squared to find the most accurate model for this multiple time-step ahead. The result indicates that with 7 hours forecast ahead, the R squared is 86.7%. The best model in the Gaussian-NAR forecast is a 3-hour water level forecast with the R squared of 99.8 percent and had the best model performance result. Penerbit UTHM 2022-06-21 Article PeerReviewed text en http://eprints.utem.edu.my/id/eprint/26759/2/425-437-033%20%281%29.PDF Wei, Ming Wong and Subramaniam, Siva Kumar and Feroz, Farah Shahnaz and Lew, Rose Ai Fen (2022) Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network. International Journal of Integrated Engineering, 14 (4). pp. 425-437. ISSN 2229-838X https://penerbit.uthm.edu.my/ojs/index.php/ijie/article/view/8693/5019 10.30880/ijie.2022.14.04.033 |
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The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregressive Neural Network to forecast the water level with multiple hour ahead for Melaka River. The development of flood forecast models is crucial and has led to risk control, policy recommendations, a reduction in human life loss, and a reduction in flood-related property destruction. In this research, Artificial Neural Network (ANN) approach was used to forecast flood by modeling and forecasting water level time series . ANN approach was selected due to its high reputation abilities to learn from the time-series data pattern. A total of 2782 data for the period of one month was used in ANN training, validation, and testing to forecast the flash flood. In this study , Hybrid Gaussian Nonlinear Autoregressive Neural Network (Gaussian-NAR) was used as the ANN approach to forecasting the water level time series. This study's primary focus is to find the most appropriate forecast model to forecast the water level in multiple time steps ahead, which are 1 hour, 3 hours, 5 hours, and 7 hours. The forecast accuracy measures are measured using the Pearson R and R-squared to find the most accurate model for this multiple time-step ahead. The result indicates that with 7 hours forecast ahead, the R squared is 86.7%. The best model in the Gaussian-NAR forecast is a 3-hour water level forecast with the R squared of 99.8 percent and had the best model performance result. |
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Article |
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Wei, Ming Wong Subramaniam, Siva Kumar Feroz, Farah Shahnaz Lew, Rose Ai Fen |
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Wei, Ming Wong Subramaniam, Siva Kumar Feroz, Farah Shahnaz Lew, Rose Ai Fen Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network |
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Wei, Ming Wong Subramaniam, Siva Kumar Feroz, Farah Shahnaz Lew, Rose Ai Fen |
author_sort |
Wei, Ming Wong |
title |
Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network |
title_short |
Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network |
title_full |
Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network |
title_fullStr |
Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network |
title_full_unstemmed |
Short-term water level forecast using ANN hybrid Gaussian-nonlinear autoregressive neural network |
title_sort |
short-term water level forecast using ann hybrid gaussian-nonlinear autoregressive neural network |
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Penerbit UTHM |
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2022 |
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http://eprints.utem.edu.my/id/eprint/26759/2/425-437-033%20%281%29.PDF http://eprints.utem.edu.my/id/eprint/26759/ https://penerbit.uthm.edu.my/ojs/index.php/ijie/article/view/8693/5019 |
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