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Calibrating hourly rainfall-runoff models with daily forcings for streamflow forecasting applications in meso-scale catchments
Affiliation:1. CSIRO Land & Water Flagship, Highett, Victoria, Australia;2. Monash University, Clayton, Victoria, Australia;3. Bureau of Meteorology, Melbourne, Victoria, Australia
Abstract:The absence of long sub-daily rainfall records can hamper development of continuous streamflow forecasting systems run at sub-daily time steps. We test the hypothesis that simple disaggregation of daily rainfall data to hourly data, combined with hourly streamflow data, can be used to establish efficient hourly rainfall-runoff models. The approach is tested on four rainfall-runoff models and a range of meso-scale catchments (150–3500 km2). We also compare our disaggregation approach to a method of parameter scaling that attains an hourly parameter-set from daily data.Simple disaggregation of daily rainfall produces hourly streamflow models that perform almost as well as those developed from hourly rainfall data. Rainfall disaggregation performs at least as well as parameter scaling, and often better. For the catchments and models we test, simple disaggregation is a very straightforward and effective way to establish hydrological models for continuous sub-daily streamflow forecasting systems when sub-daily rainfall data are unavailable.
Keywords:Rainfall-runoff calibration  Hourly data  Rainfall disaggregation  Streamflow forecasting  AWBM  GR4J  PDM  Sacramento
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