We investigated the effectiveness of combining gauge observations and satellite-derived precipitation on flood forecasting. Two data merging processes were proposed: the first one assumes that the individual precipitation measurement is non-bias, while the second process assumes that each precipitation source is biased and both weighting factor and bias parameters are to be calculated. Best weighting factors as well as the bias parameters were calculated by minimizing the error of hourly runoff prediction over Wu-Tu watershed in Taiwan. To simulate the hydrologic response from various sources of rainfall sequences, in our experiment, a recurrent neural network (RNN) model was used. The results demonstrate that the merged method used in this...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
This study proposed a hybrid neural network model that combines a self-organizing map (SOM) and back...
We investigated the effectiveness of combining gauge observations and satellite-derived precipitatio...
The complex temporal heterogeneity of rainfall coupled with mountainous physiographic context makes ...
The major purpose of this study is to effectively construct artificial neural networks-based multist...
Satellite remote sensing precipitation is useful for many hydrological and meteorological applicatio...
Flood forecasting has been an effective way to reduce the potential flood hazards for a sustainable ...
AbstractThis study examined various regression-based techniques and an artificial neural network use...
Typhoon Morakot 2009, with significant southwest monsoon flow, produced a record-breaking rainfall o...
[[abstract]]Taiwan is located in themonsoon zone of the North Pacific Ocean and experiences an avera...
Hydrometeorological forecasts provide future flooding estimates to reduce damages. Despite the advan...
Satellite and reanalysis precipitation estimates of high quality are widely used for hydrological mo...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
Precipitation over the Tibetan Plateau (TP) known as Asia's water tower plays a critical role in reg...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
This study proposed a hybrid neural network model that combines a self-organizing map (SOM) and back...
We investigated the effectiveness of combining gauge observations and satellite-derived precipitatio...
The complex temporal heterogeneity of rainfall coupled with mountainous physiographic context makes ...
The major purpose of this study is to effectively construct artificial neural networks-based multist...
Satellite remote sensing precipitation is useful for many hydrological and meteorological applicatio...
Flood forecasting has been an effective way to reduce the potential flood hazards for a sustainable ...
AbstractThis study examined various regression-based techniques and an artificial neural network use...
Typhoon Morakot 2009, with significant southwest monsoon flow, produced a record-breaking rainfall o...
[[abstract]]Taiwan is located in themonsoon zone of the North Pacific Ocean and experiences an avera...
Hydrometeorological forecasts provide future flooding estimates to reduce damages. Despite the advan...
Satellite and reanalysis precipitation estimates of high quality are widely used for hydrological mo...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
Precipitation over the Tibetan Plateau (TP) known as Asia's water tower plays a critical role in reg...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
Under the background of demand for accurate and reliable flood forecasting, various methodologies ar...
This study proposed a hybrid neural network model that combines a self-organizing map (SOM) and back...