Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq
Accuracy of reservoir inflow forecasting is an important issue for the reservoir operation and water resources management. The main aim of the current study is to develop reliable models to forecast monthly inflow data. The present research proposed a robust model called co-active neuro-fuzzy infere...
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my.um.eprints.265752022-03-21T03:13:01Z http://eprints.um.edu.my/26575/ Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq Allawi, Mohammed Falah Hussain, Intesar Razaq Salman, Majid Ibrahim El-Shafie, Ahmed Q Science (General) TA Engineering (General). Civil engineering (General) Accuracy of reservoir inflow forecasting is an important issue for the reservoir operation and water resources management. The main aim of the current study is to develop reliable models to forecast monthly inflow data. The present research proposed a robust model called co-active neuro-fuzzy inference system (CANFIS) to improve the forecasting accuracy. The reliability of the CANFIS model was evaluated by comparing with two different AI-based models, ANN and ANFIS model. To obtain the best forecasting result, the proposed models were trained utilizing four different Training Procedures. This study was conducted to forecast the inflow data for Haditha Dam on Euphrates River, Iraq. The comparison of models reveals that the CANFIS model is better than ANN and ANFIS model. The results showed that the second training procedure is more suitable for the forecasting models. The CANFIS model yielded a relative error of less than (15%), a low MAE (69.66 m(3)/s), a RMSE (78.10 m(3)/s) and a high correlation between the actual and forecasted data (R-2 = 0.97). Springer 2021-11 Article PeerReviewed Allawi, Mohammed Falah and Hussain, Intesar Razaq and Salman, Majid Ibrahim and El-Shafie, Ahmed (2021) Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq. Stochastic Environmental Research and Risk Assessment, 35 (11). pp. 2391-2410. ISSN 1436-3240, DOI https://doi.org/10.1007/s00477-021-02052-7 <https://doi.org/10.1007/s00477-021-02052-7>. 10.1007/s00477-021-02052-7 |
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Q Science (General) TA Engineering (General). Civil engineering (General) Allawi, Mohammed Falah Hussain, Intesar Razaq Salman, Majid Ibrahim El-Shafie, Ahmed Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq |
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Accuracy of reservoir inflow forecasting is an important issue for the reservoir operation and water resources management. The main aim of the current study is to develop reliable models to forecast monthly inflow data. The present research proposed a robust model called co-active neuro-fuzzy inference system (CANFIS) to improve the forecasting accuracy. The reliability of the CANFIS model was evaluated by comparing with two different AI-based models, ANN and ANFIS model. To obtain the best forecasting result, the proposed models were trained utilizing four different Training Procedures. This study was conducted to forecast the inflow data for Haditha Dam on Euphrates River, Iraq. The comparison of models reveals that the CANFIS model is better than ANN and ANFIS model. The results showed that the second training procedure is more suitable for the forecasting models. The CANFIS model yielded a relative error of less than (15%), a low MAE (69.66 m(3)/s), a RMSE (78.10 m(3)/s) and a high correlation between the actual and forecasted data (R-2 = 0.97). |
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Article |
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Allawi, Mohammed Falah Hussain, Intesar Razaq Salman, Majid Ibrahim El-Shafie, Ahmed |
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Allawi, Mohammed Falah Hussain, Intesar Razaq Salman, Majid Ibrahim El-Shafie, Ahmed |
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Allawi, Mohammed Falah |
title |
Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq |
title_short |
Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq |
title_full |
Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq |
title_fullStr |
Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq |
title_full_unstemmed |
Monthly inflow forecasting utilizing advanced artificial intelligence methods: A case study of Haditha Dam in Iraq |
title_sort |
monthly inflow forecasting utilizing advanced artificial intelligence methods: a case study of haditha dam in iraq |
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Springer |
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2021 |
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http://eprints.um.edu.my/26575/ |
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13.209306 |