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Weekly flow prediction of Ergene river using an artificial neural network based solution approach
Date
2018-07-01
Author
Ayvaz, Mustafa Tamer
Tezel, Ulaş
Kentel Erdoğan, Elçin
Göktaş, Recep Kaya
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https://hdl.handle.net/11511/82741
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Weekly Flow Prediction of Ergene River Using an Artificial Neural Network Based Solution Approach
Ayvaz, Mustafa Tamer; Tezel, Ulaş; Kentel Erdoğan, Elçin; Göktaş, Recep Kaya (null; 2018-06-06)
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M. T. Ayvaz, U. Tezel, E. Kentel Erdoğan, and R. K. Göktaş, “Weekly flow prediction of Ergene river using an artificial neural network based solution approach,” 2018, Accessed: 00, 2021. [Online]. Available: https://hdl.handle.net/11511/82741.