This study compares mean areal precipitation (MAP) estimates derived from three sources: an operational rain gauge network (MAPG), a radar/gauge multisensor product (MAPX), and the Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks (PERSIANN) satellite-based system (MAPS) for the time period from March 2000 to November 2003. The study area includes seven operational basins of varying size and location in the southeastern United States. The analysis indicates that agreements between the datasets vary considerably from basin to basin and also temporally within the basins. The analysis also includes evaluation of MAPS in comparison with MAPG for use in flow forecasting with a lumped hydrologic model [Sac...
The lack of dense ground networks of meteorological stations in many parts of the developing world i...
Robust validation of the space-time structure of remotely sensed precipitation estimates is critical...
It is evident that reliable hydrologic prediction and water resource management are still a challeng...
This study compares mean areal precipitation (MAP) estimates derived from three sources: an operatio...
This study evaluates rainfall estimates from the Next GenerationWeather Radar (NEXRAD), operational ...
Remotely sensed data from satellites has the potential to provide spatially and temporally relevant ...
Rainfall products from radar, satellite, rain gauges, and combinations have been evaluated for a sea...
Reliable precipitation measurement is a crucial component in hydrologic studies. Although satellite-...
Precipitation is a crucial input variable for hydrological and climate studies. Rain gauges can prov...
Increased availability of global satellite-based precipitation estimates makes them potentially suit...
Accurate mean areal precipitation (MAP) estimates are essential input forcings for hydrologic models...
In this study, seven precipitation products (rain gauges, NEXRAD MPE, PERSIANN 0.25 degree, PERSIANN...
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Netwo...
Using hydrological simulation to evaluate the accuracy of satellite-based and reanalysis precipitati...
The accuracy and sufficiency of precipitation data play a key role in environmental research and hyd...
The lack of dense ground networks of meteorological stations in many parts of the developing world i...
Robust validation of the space-time structure of remotely sensed precipitation estimates is critical...
It is evident that reliable hydrologic prediction and water resource management are still a challeng...
This study compares mean areal precipitation (MAP) estimates derived from three sources: an operatio...
This study evaluates rainfall estimates from the Next GenerationWeather Radar (NEXRAD), operational ...
Remotely sensed data from satellites has the potential to provide spatially and temporally relevant ...
Rainfall products from radar, satellite, rain gauges, and combinations have been evaluated for a sea...
Reliable precipitation measurement is a crucial component in hydrologic studies. Although satellite-...
Precipitation is a crucial input variable for hydrological and climate studies. Rain gauges can prov...
Increased availability of global satellite-based precipitation estimates makes them potentially suit...
Accurate mean areal precipitation (MAP) estimates are essential input forcings for hydrologic models...
In this study, seven precipitation products (rain gauges, NEXRAD MPE, PERSIANN 0.25 degree, PERSIANN...
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Netwo...
Using hydrological simulation to evaluate the accuracy of satellite-based and reanalysis precipitati...
The accuracy and sufficiency of precipitation data play a key role in environmental research and hyd...
The lack of dense ground networks of meteorological stations in many parts of the developing world i...
Robust validation of the space-time structure of remotely sensed precipitation estimates is critical...
It is evident that reliable hydrologic prediction and water resource management are still a challeng...