Application of Meteorological Element Combination-Driven SWAT Model
based on Meteorological Datasets in Alpine catchment: A case study in
the Yellow River Source Region (China)
Abstract
Reanalysis meteorological datasets have been widely used for
hydrological simulation research in areas where meteorological stations
are scarce. However, most of them focus on the applicability of datasets
to basin or hydrological model and pay little attention to the influence
of meteorological elements of dataset on hydrological modeling. In this
study, the precipitation, temperature and solar radiation from three
meteorological datasets, gauge dataset (GD), the China Meteorological
Assimilation Driving Datasets for the Soil and Water Assessment Tool
(SWAT) model (CMADS), and Climate Forecast System Reanalysis (CFSR),
were cross-combined with multiple scenarios to drive SWAT models in
Yellow River Source Region (YRSR). After a comprehensive comparison of
all the scenarios, the main conclusions are as follows: (1) replacing
precipitation data has a large impact on streamflow simulation of SWAT
model, and using observed precipitation from sparse stations
consistently yielded better performance than using precipitation from
CMADS and CFSR. (2) In the scenarios adopting observed precipitation as
input, using temperature from CMADS and CFSR datasets yielded better
performance than using observed temperature. (3) replacing solar
radiation has slight impact on the streamflow simulation, and the solar
radiation of CFSR is more suitable for hydrological simulation than that
of CMADS in YRSR. (4) the SWAT model driven by different meteorological
datasets shows that the runoff simulation of GD with CFSR solar
radiation data (S6) is optimal with “very good” performance, while the
simulation performance of CMADS and CFSR are poor with clearly
underestimation for CMADS and significantly overestimation for CFSR,
especially in the dry season. These result indicated that the element
combination method of the meteorological dataset has been proven to be
useful in YRSR, which provides a new insight for hydrological simulation
research in areas where meteorological stations are scarce.