Calibration of ECMWF SEAS5 based streamflow forecast in Seasonal hydrological forecasting for Citarum river basin, West Java, Indonesia

Journal of Hydrology: Regional Studies - Tập 45 - Trang 101305 - 2023
Dian Nur Ratri1,2,3, Albrecht Weerts1,4, Robi Muharsyah3, Kirien Whan2, Albert Klein Tank1,5, Edvin Aldrian6, Mugni Hadi Hariadi1,2,3
1Wageningen University and Research, the Netherlands
2Koninklijk Nederlands Meteorologisch, The Netherlands
3Meteorological, Climatological, and Geophysical, Indonesia
4Deltares, Delft, The Netherlands
5Met Office Hadley Centre, United Kingdom
6The National Research and Innovation Agency, Indonesia

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