Individually, ground-based, in situ observations, remote sensing, and regional climate modeling cannot provide the high-quality precipitation data required for hydrological prediction, especially over complex terrains. Data assimilation techniques can be used to bridge the gap between observations and models by assimilating ground observations and remote sensing products into models to improve precipitation simulation and forecasting. However, only a small portion of satellite-retrieved precipitation products assimilation research has been implemented over complex terrains in an arid region. Here, we used the weather research and forecasting (WRF) model to assimilate two satellite precipitation products (The Tropical Rainfall Measuring Miss...
The objective of this study is to develop a framework for dynamically downscaling spaceborne precipi...
In this study, the impact of rainfall assimilation on the forecasts of convective rainfall over the ...
Estimating the spatial distribution of precipitation is important for understanding ecohydrological ...
Individually, ground-based, in situ observations, remote sensing, and regional climate modeling cann...
To obtain independent, consecutive, and high-resolution precipitation data, the four-dimensional var...
To obtain independent, consecutive, and high-resolution precipitation data, the four-dimensional var...
In this study, the China Hourly Merged Precipitation Analysis (CHMPA) data which combines the satell...
Precipitation data assimilation has been developed in the Weather Research and Forecasting model dat...
This study examines the impact of three-dimensional variational data assimilation (3DVAR) on the pre...
Weather Research and Forecasting (WRF) is a mesoscale numerical weather prediction model that can pr...
In this study, the regional Weather Research and Forecasting model (WRF)-based quantitative precipit...
The impact of assimilating rainfall derived from radar and satellites on rainstorm forecasts over th...
Environmental monitoring of Earth from space has provided invaluable information for understanding t...
The impact of assimilating rainfall derived from radar and satellites on rainstorm forecasts over th...
Four-dimensional variation data assimilation (4D-VAR) is a logical and rigorous mathematical method ...
The objective of this study is to develop a framework for dynamically downscaling spaceborne precipi...
In this study, the impact of rainfall assimilation on the forecasts of convective rainfall over the ...
Estimating the spatial distribution of precipitation is important for understanding ecohydrological ...
Individually, ground-based, in situ observations, remote sensing, and regional climate modeling cann...
To obtain independent, consecutive, and high-resolution precipitation data, the four-dimensional var...
To obtain independent, consecutive, and high-resolution precipitation data, the four-dimensional var...
In this study, the China Hourly Merged Precipitation Analysis (CHMPA) data which combines the satell...
Precipitation data assimilation has been developed in the Weather Research and Forecasting model dat...
This study examines the impact of three-dimensional variational data assimilation (3DVAR) on the pre...
Weather Research and Forecasting (WRF) is a mesoscale numerical weather prediction model that can pr...
In this study, the regional Weather Research and Forecasting model (WRF)-based quantitative precipit...
The impact of assimilating rainfall derived from radar and satellites on rainstorm forecasts over th...
Environmental monitoring of Earth from space has provided invaluable information for understanding t...
The impact of assimilating rainfall derived from radar and satellites on rainstorm forecasts over th...
Four-dimensional variation data assimilation (4D-VAR) is a logical and rigorous mathematical method ...
The objective of this study is to develop a framework for dynamically downscaling spaceborne precipi...
In this study, the impact of rainfall assimilation on the forecasts of convective rainfall over the ...
Estimating the spatial distribution of precipitation is important for understanding ecohydrological ...