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Machine Learning and the GR2M Model for Monthly Runoff Forecasting

Publish Year: 1404
Type: Journal paper
Language: English
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JR_CEJ-11-1_022

Index date: 5 March 2025

Machine Learning and the GR2M Model for Monthly Runoff Forecasting abstract

This article presents the results of an analysis of monthly rainfall into monthly runoff using Machine Learning algorithms, including Multiple Linear Regression, Multilayer Perceptron, and Support Vector Machine, which were compared with the GR2M hydrologic model to identify the most suitable approach for rainfall-runoff analysis in watersheds in the lower southern region of Thailand. This region is characterized by its unique geographic location at the border between Thailand and Malaysia. It faces challenges due to uncertainty in rainfall data, measured only on the Thai side, leading to a lack of corresponding data from Malaysia. The analysis found that the Machine Learning Support Vector Machine algorithm consistently provided the most accurate results across all sub-basins. Sub-basin TU02 achieved an MAE of 2.63 mm/month, while sub-basin X.119A had an MAE of 68.10 mm/month, sub-basin X.184 had an MAE of 145.05 mm/month, and sub-basin X.274 had an MAE of 66.08 mm/month. This research demonstrated the utility of advanced algorithms in rainfall-runoff analysis for areas with partial or incomplete data coverage. The findings confirm that the Machine Learning Support Vector Machine algorithm outperformed the Hydrologic Model (GR2M) in terms of accuracy and reliability. Therefore, this study concludes that applying the Machine Learning Support Vector Machine algorithm is an optimal approach for runoff prediction in the southern region of Thailand and provides a framework for potential applications in other areas with similar data and geographic challenges. Doi: 10.28991/CEJ-2025-011-01-022 Full Text: PDF

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Perrin, C., Oudin, L., Andreassian, V., Rojas-Serna, C., Michel, C., ...
Song, S., Ye, Z., Zhou, Z., Chuai, X., Zhou, R., ...
Alshammari, E., Abdul Rahman, A., Rainis, R., Abu Seri, N., ...
Zope, P. E., Eldho, T. I., & Jothiprakash, V. (2016). ...
Mekonnen, Y. A., & Manderso, T. M. (2023). Land use/land ...
Chaves, M. T. R., Farias, T. R. L., & Eloi, ...
Chen, H.-E., Chiu, Y.-Y., Tsai, T.-L., & Yang, J.-C. (2020). ...
Love, D., Uhlenbrook, S., Corzo-Perez, G., Twomlow, S., & van ...
Wang, D., & Alimohammadi, N. (2012). Responses of annual runoff, ...
Wang, Y., Xu, H.-M., Li, Y.-H., Liu, L.-L., Hu, Z.-H., ...
Waheed, A., Jamal, M. H., Javed, M. F., & Idlan ...
Lan, H., Zhao, Z., Li, L., Li, J., Fu, B., ...
Zhang, H., Wang, B., Liu, D. L., Zhang, M., Leslie, ...
Janicka, E., Kanclerz, J., Agaj, T., & Gizińska, K. (2023). ...
Souley Tangam, I., Yonaba, R., Niang, D., Adamou, M. M., ...
Busico, G., Colombani, N., Fronzi, D., Pellegrini, M., Tazioli, A., ...
Tasdighi, A., Arabi, M., & Harmel, D. (2018). A probabilistic ...
Ghosh, A., Roy, M. B., & Roy, P. K. (2022). ...
Nannawo, A. S., Lohani, T. K., Eshete, A. A., & ...
Fathi, M. M., Awadallah, A. G., & Aldahshoory, W. (2023). ...
Mendez, M., Calvo-Valverde, L.-A., Imbach, P., Maathuis, B., Hein-Grigg, D., ...
Sadio, C. A. A. S., Faye, C., Pande, C. B., ...
Chekole, A. G., Belete, M. A., Fikadie, F. T., & ...
Fanta, S. S., & Sime, C. H. (2021). Performance assessment ...
Kate Flores Zuñiga, S., Junior Santos de la Cruz, E., ...
Gichamo, T., Nourani, V., Gökçekuş, H., & Gelete, G. (2023). ...
Mohammadi, B. (2021). A review on the applications of machine ...
Singh, A. K., Kumar, P., Ali, R., Al-Ansari, N., Vishwakarma, ...
Ditthakit, P., Pinthong, S., Salaeh, N., Binnui, F., Khwanchum, L., ...
Ditthakit, P., Pinthong, S., Salaeh, N., Binnui, F., Khwanchum, L., ...
Ditthakit, P., Pinthong, S., Salaeh, N., Weekaew, J., Thanh Tran, ...
Iamampai, S., Talaluxmana, Y., Kanasut, J., & Rangsiwanichpong, P. (2024). ...
Aedasong, A., Roongtawanreongsri, S., Hajisamae, S., & James, D. (2019). ...
Benharoon, S. Y. (2013). Building a Culture of Peace in ...
Anuar, A. R., & Harun, A. (2018). Malaysia-Thailand Cross Border ...
Uyanık, G. K., & Güler, N. (2013). A Study on ...
Ahmed, A. A. M. (2022). Development of deep learning hybrid ...
Patle, G. T., Chettri, M., & Jhajharia, D. (2020). Monthly ...
Kassem, Y., Gökçekuş, H., Çamur, H., & Esenel, E. (2021). ...
Prins, N. W., Sanchez, J. C., & Prasad, A. (2014). ...
Vapnik, V. N. (2000). The Nature of Statistical Learning Theory. ...
Kabouya, M. (1990). Rainfall-runoff modeling at monthly and annual time ...
Makhlouf, Z., & Michel, C. (1994). A two-parameter monthly water ...
Mouelhi, S., Michel, C., Perrin, C., & Andréassian, V. (2006). ...
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