Prediction of the monthly river water level by using ensemble decomposition modeling
Abstract The decomposition, artificial intelligence (AI) and machine learning (ML) modeling have been important role in hydrological and river basin related prediction and forecasting to help the flood management and sustainable water resources development. In this paper, developed the hybrid modeli...
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Nature Portfolio
2025-07-01
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| Online Access: | https://doi.org/10.1038/s41598-025-10893-3 |
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| author | Chaitanya Baliram Pande Lariyah Mohd Sidek Bijay Halder Okan Mert Katipoğlu Jitendra Rajput Fahad Alshehri Rabin Chakrabortty Subodh Chandra Pal Norlida Mohd Dom Miklas Scholz |
| author_facet | Chaitanya Baliram Pande Lariyah Mohd Sidek Bijay Halder Okan Mert Katipoğlu Jitendra Rajput Fahad Alshehri Rabin Chakrabortty Subodh Chandra Pal Norlida Mohd Dom Miklas Scholz |
| author_sort | Chaitanya Baliram Pande |
| collection | DOAJ |
| description | Abstract The decomposition, artificial intelligence (AI) and machine learning (ML) modeling have been important role in hydrological and river basin related prediction and forecasting to help the flood management and sustainable water resources development. In this paper, developed the hybrid modeling combined with complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN), along with standalone models support vector machine (SVM-linear), and Random Forest (RF), Random Subspace (RS) for accurate prediction of monthly river water level in Sg Muar at Buloh Kasap, Johor station during 2014 to 2023. In this paper, two combinations of variables such as Lags and IMFS are used for development of different models for river water level prediction. Hence, these models are compared and measured the performance of models based on the various statistics metrics. Therefore hybrid models performance is measured based on the coefficient of determination (R2), hence all models results are shown the CEEMDAN-SVM-LINEAR (R2 = 0.87), CEEMDAN-SVM-RBF (R2 = 0.91), CEEMDAN-RF (R2 = 0.98), and CEEMDAN-RS (R2 = 0.88) in the second combination variables, while standalone models performance are shown SVM-Linear (R2 = 0.84), SVM-RBF (R2 = 0.87), RF (R2 = 0.97), and RS (R2 = 0.86) during the training phase stage in the first combination variables. Similarly, in the testing phase, the best two models performances are very well as a CEEMDAN-RF (R2:0.94) and CEEMDAN-RS (R2:0.90) in second combination variables, and the first combination variables based SVM- Linear (R2:0.93) and RF (R2:0.89) models are performance higher compared with other models. Finally, the CEEMDAN-RF hybrid model is best model based on the lowest observed errors of Root mean square error (RMSE): 0.13, Mean square error (MSE): 0.02 and high R2: 0.94, hence this model is appropriate for prediction of river water level. Hence, the best hybrid model has been concluded that the CEEMDAN data decomposition technique is very useful for improve performance of the prediction model, the complex river water level predictions by separating the data sets into various sub-frequencies, allowing a better understanding of trends, seasonality and fluctuations in the data. Therefore, the CEEMDAN based novel hybrid modeling is effective decomposition modeling for complex field utilized in the sustainable and optimized utilization of the water resources for sustainable development goal (SDG). |
| format | Article |
| id | doaj-art-ae0ec460d37d471e969f753cff214d5b |
| institution | Kabale University |
| issn | 2045-2322 |
| language | English |
| publishDate | 2025-07-01 |
| publisher | Nature Portfolio |
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| spelling | doaj-art-ae0ec460d37d471e969f753cff214d5b2025-08-20T03:42:25ZengNature PortfolioScientific Reports2045-23222025-07-0115112510.1038/s41598-025-10893-3Prediction of the monthly river water level by using ensemble decomposition modelingChaitanya Baliram Pande0Lariyah Mohd Sidek1Bijay Halder2Okan Mert Katipoğlu3Jitendra Rajput4Fahad Alshehri5Rabin Chakrabortty6Subodh Chandra Pal7Norlida Mohd Dom8Miklas Scholz9Institute of Energy Infrastructure, Universiti Tenaga NasionalInstitute of Energy Infrastructure, Universiti Tenaga NasionalDepartment of Earth Sciences and Environment, Faculty of Science and Technology, Universiti Kebangsaan MalaysiaFaculty of Engineering and Architecture, Department of Civil Engineering, Erzincan Binali Yıldırım UniversityDivision of Agricultural Engineering, ICAR-Indian Agricultural Research InstituteAbdullah Alrushaid Chair for Earth Science Remote Sensing Research, Geology and Geophysics Department, King Saud UniversityDepartment of Civil Engineering, American University of SharjahDepartment of Geography, The University of BurdwanDrainage & Irrigation DepartmentDepartment of Civil Engineering Science, School of Civil Engineering and the Built Environment, Faculty of Engineering and the Built Environment, University of JohannesburgAbstract The decomposition, artificial intelligence (AI) and machine learning (ML) modeling have been important role in hydrological and river basin related prediction and forecasting to help the flood management and sustainable water resources development. In this paper, developed the hybrid modeling combined with complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN), along with standalone models support vector machine (SVM-linear), and Random Forest (RF), Random Subspace (RS) for accurate prediction of monthly river water level in Sg Muar at Buloh Kasap, Johor station during 2014 to 2023. In this paper, two combinations of variables such as Lags and IMFS are used for development of different models for river water level prediction. Hence, these models are compared and measured the performance of models based on the various statistics metrics. Therefore hybrid models performance is measured based on the coefficient of determination (R2), hence all models results are shown the CEEMDAN-SVM-LINEAR (R2 = 0.87), CEEMDAN-SVM-RBF (R2 = 0.91), CEEMDAN-RF (R2 = 0.98), and CEEMDAN-RS (R2 = 0.88) in the second combination variables, while standalone models performance are shown SVM-Linear (R2 = 0.84), SVM-RBF (R2 = 0.87), RF (R2 = 0.97), and RS (R2 = 0.86) during the training phase stage in the first combination variables. Similarly, in the testing phase, the best two models performances are very well as a CEEMDAN-RF (R2:0.94) and CEEMDAN-RS (R2:0.90) in second combination variables, and the first combination variables based SVM- Linear (R2:0.93) and RF (R2:0.89) models are performance higher compared with other models. Finally, the CEEMDAN-RF hybrid model is best model based on the lowest observed errors of Root mean square error (RMSE): 0.13, Mean square error (MSE): 0.02 and high R2: 0.94, hence this model is appropriate for prediction of river water level. Hence, the best hybrid model has been concluded that the CEEMDAN data decomposition technique is very useful for improve performance of the prediction model, the complex river water level predictions by separating the data sets into various sub-frequencies, allowing a better understanding of trends, seasonality and fluctuations in the data. Therefore, the CEEMDAN based novel hybrid modeling is effective decomposition modeling for complex field utilized in the sustainable and optimized utilization of the water resources for sustainable development goal (SDG).https://doi.org/10.1038/s41598-025-10893-3Artificial intelligenceData decompositionMuar riverPerformance assessmentRiver water levelEnergy |
| spellingShingle | Chaitanya Baliram Pande Lariyah Mohd Sidek Bijay Halder Okan Mert Katipoğlu Jitendra Rajput Fahad Alshehri Rabin Chakrabortty Subodh Chandra Pal Norlida Mohd Dom Miklas Scholz Prediction of the monthly river water level by using ensemble decomposition modeling Scientific Reports Artificial intelligence Data decomposition Muar river Performance assessment River water level Energy |
| title | Prediction of the monthly river water level by using ensemble decomposition modeling |
| title_full | Prediction of the monthly river water level by using ensemble decomposition modeling |
| title_fullStr | Prediction of the monthly river water level by using ensemble decomposition modeling |
| title_full_unstemmed | Prediction of the monthly river water level by using ensemble decomposition modeling |
| title_short | Prediction of the monthly river water level by using ensemble decomposition modeling |
| title_sort | prediction of the monthly river water level by using ensemble decomposition modeling |
| topic | Artificial intelligence Data decomposition Muar river Performance assessment River water level Energy |
| url | https://doi.org/10.1038/s41598-025-10893-3 |
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