A review of deep learning and machine learning techniques for hydrological inflow forecasting
Conventional machine learning models have been widely used for reservoir inflow and rainfall prediction. Nowadays, researchers focus on a new computing architecture in the area of AI, namely, deep learning for hydrological forecasting parameters. This review paper tends to broadcast more of the intr...
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2024
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my.uniten.dspace-339552024-10-14T11:17:30Z A review of deep learning and machine learning techniques for hydrological inflow forecasting Latif S.D. Ahmed A.N. 57216081524 57214837520 Deep learning Long short-term memory (LSTM) Machine learning Streamflow prediction algorithm forecasting method inflow literature review machine learning prediction rainfall reservoir streamflow Conventional machine learning models have been widely used for reservoir inflow and rainfall prediction. Nowadays, researchers focus on a new computing architecture in the area of AI, namely, deep learning for hydrological forecasting parameters. This review paper tends to broadcast more of the intriguing interest in reservoir inflow prediction utilizing deep learning and machine learning algorithms. The AI models utilized for different hydrology sectors, as well as the most prevalent machine learning techniques, will be explored in this thorough study, which divides AI techniques into two primary categories: deep learning and machine learning. In this study, we look at the long short-term memory deep learning method as well as three traditional machine learning algorithms: support vector machine, random forest, and boosted regression tree. Under each part, a summary of the findings is provided. For convenience of reference, some of the benefits and drawbacks discovered through literature reviews have been listed. Finally, future recommendations and overall conclusions based on research findings are given. This review focuses on papers from high-impact factor periodicals published over a 4�years period beginning in 2018 onwards. � 2023, The Author(s), under exclusive licence to Springer Nature B.V. Final 2024-10-14T03:17:30Z 2024-10-14T03:17:30Z 2023 Review 10.1007/s10668-023-03131-1 2-s2.0-85150172679 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85150172679&doi=10.1007%2fs10668-023-03131-1&partnerID=40&md5=03c6fb3c45ace3d5e5a5adc73d3e9646 https://irepository.uniten.edu.my/handle/123456789/33955 25 11 12189 12216 Springer Science and Business Media B.V. Scopus |
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Deep learning Long short-term memory (LSTM) Machine learning Streamflow prediction algorithm forecasting method inflow literature review machine learning prediction rainfall reservoir streamflow Latif S.D. Ahmed A.N. A review of deep learning and machine learning techniques for hydrological inflow forecasting |
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Conventional machine learning models have been widely used for reservoir inflow and rainfall prediction. Nowadays, researchers focus on a new computing architecture in the area of AI, namely, deep learning for hydrological forecasting parameters. This review paper tends to broadcast more of the intriguing interest in reservoir inflow prediction utilizing deep learning and machine learning algorithms. The AI models utilized for different hydrology sectors, as well as the most prevalent machine learning techniques, will be explored in this thorough study, which divides AI techniques into two primary categories: deep learning and machine learning. In this study, we look at the long short-term memory deep learning method as well as three traditional machine learning algorithms: support vector machine, random forest, and boosted regression tree. Under each part, a summary of the findings is provided. For convenience of reference, some of the benefits and drawbacks discovered through literature reviews have been listed. Finally, future recommendations and overall conclusions based on research findings are given. This review focuses on papers from high-impact factor periodicals published over a 4�years period beginning in 2018 onwards. � 2023, The Author(s), under exclusive licence to Springer Nature B.V. |
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57216081524 |
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57216081524 Latif S.D. Ahmed A.N. |
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Review |
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Latif S.D. Ahmed A.N. |
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Latif S.D. |
title |
A review of deep learning and machine learning techniques for hydrological inflow forecasting |
title_short |
A review of deep learning and machine learning techniques for hydrological inflow forecasting |
title_full |
A review of deep learning and machine learning techniques for hydrological inflow forecasting |
title_fullStr |
A review of deep learning and machine learning techniques for hydrological inflow forecasting |
title_full_unstemmed |
A review of deep learning and machine learning techniques for hydrological inflow forecasting |
title_sort |
review of deep learning and machine learning techniques for hydrological inflow forecasting |
publisher |
Springer Science and Business Media B.V. |
publishDate |
2024 |
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1814061159440973824 |
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13.214268 |