This study focuses on a technique to improve runoff modeling based on radar-derived rainfall and hydrological model for the whole watershed. GIS tools were used to provide the model parameters for the Upper Bernam River Basin (1090 km2), Malaysia. Virtual rainfall stations are created throughout the UBRB watershed. The rainfall data for these stations are estimated from raw weather radar data using newly developed program called RaDeR ver1.0. For this study, estimated radar rainfall data from Subang weather radar stations were compared and calibrated with actual rain gauge data. Radar-derived rainfall calibration model developed for Subang radar station was y=0.8772x. According to the model developed, the radar rainfall calibration factor ...
The purpose of this study was to evaluate variations of the Natural Resources Conservation Service (...
The occurrence of unprecedented flood events has increased in Malaysia recently. To mitigate the imp...
Good quality rainfall data are essential in hydrological modelling and flood forecasting. Classicall...
In traditional hydrologic and water resource applications, rain gauges are the commonly used rainfal...
Radar rainfall is an alternative input data to a rainfall-runoff model and potentially can improve t...
Radar raingauges can instantaneously measure precipitation over the broad area.To make good use of t...
This case study evaluates the suitability of radar-based quantitative precipitation estimates (QPEs)...
Flooding is a natural disaster that often occurs in Malaysia due to its heavy rainfall distribution....
The use of radar in Quantitative Precipitation Estimation (QPE) for radar-rainfall measurement is si...
Weather radar has an advantage in estimating rainfall, because it has a high spatial resolution (up ...
Since raingauges give pointwise measurements the small scale variability of rainfall fields leads to...
Accurate rainfall estimation from radar reflectivity is crucial in hydrological modeling and quantit...
Weather radar can offer synoptic measurement at a higher temporal and spatial resolution to extract ...
(QPE) in radar-rainfall measurement for hydrological purposes is significantly important. For more t...
ABSTRACT: Weather radar can potentially provide high-resolution spatial and temporal rainfall estim...
The purpose of this study was to evaluate variations of the Natural Resources Conservation Service (...
The occurrence of unprecedented flood events has increased in Malaysia recently. To mitigate the imp...
Good quality rainfall data are essential in hydrological modelling and flood forecasting. Classicall...
In traditional hydrologic and water resource applications, rain gauges are the commonly used rainfal...
Radar rainfall is an alternative input data to a rainfall-runoff model and potentially can improve t...
Radar raingauges can instantaneously measure precipitation over the broad area.To make good use of t...
This case study evaluates the suitability of radar-based quantitative precipitation estimates (QPEs)...
Flooding is a natural disaster that often occurs in Malaysia due to its heavy rainfall distribution....
The use of radar in Quantitative Precipitation Estimation (QPE) for radar-rainfall measurement is si...
Weather radar has an advantage in estimating rainfall, because it has a high spatial resolution (up ...
Since raingauges give pointwise measurements the small scale variability of rainfall fields leads to...
Accurate rainfall estimation from radar reflectivity is crucial in hydrological modeling and quantit...
Weather radar can offer synoptic measurement at a higher temporal and spatial resolution to extract ...
(QPE) in radar-rainfall measurement for hydrological purposes is significantly important. For more t...
ABSTRACT: Weather radar can potentially provide high-resolution spatial and temporal rainfall estim...
The purpose of this study was to evaluate variations of the Natural Resources Conservation Service (...
The occurrence of unprecedented flood events has increased in Malaysia recently. To mitigate the imp...
Good quality rainfall data are essential in hydrological modelling and flood forecasting. Classicall...