[[abstract]]This study proposes a hybrid SOM–R-NARX methodology for nowcasting multi-step-ahead regional flood inundation maps during typhoon events. The core idea is to form a meaningful topology of inundation maps and then real-time update the selected inundation map according to a forecasted total inundated volume. The methodology includes three major schemes: (1) configuring the self-organizing map (SOM) to categorize a large number of regional inundation maps into a meaningful topology; (2) building a recurrent configuration of nonlinear autoregressive with exogenous inputs (R-NARX) to forecast the total inundated volume; and (3) adjusting the weights of the selected neuron in the constructed SOM based on the forecasted total inundated...
This study describes the development of a reservoir inflow forecasting model for typhoon events to i...
[[abstract]]Taiwan is located in themonsoon zone of the North Pacific Ocean and experiences an avera...
This study attempts to achieve real-time rainfall-inundation forecasting in lowland regions, based o...
[[abstract]]In recent years, the increasing frequency and severity of floods caused by climate chang...
[[abstract]]A regional inundation early warning system is crucial to alleviating flood risks and red...
A regional inundation early warning system is crucial to alleviating flood risks and reducing loss o...
This study proposed a hybrid neural network model that combines a self-organizing map (SOM) and back...
Accurate real-time forecasts of inundation depth and area during typhoon flooding is crucial to disa...
[[abstract]]Floods are one of the most dangerous natural hazards and the greatest challenge for hydr...
[[abstract]]Various types of artificial neural networks (ANNs) have been successfully applied in hyd...
[[abstract]]Self-organizing maps (SOMs) have been successfully accepted widely in science and engine...
[[abstract]]We present a two-stage procedure underlying CHIM (clustering-based hybrid inundation mod...
Self-organizing maps (SOMs) have been successfully accepted widely in science and engineering proble...
Accurate real-time forecasts of inundation depth and extent during typhoon flooding are crucial to d...
Accurate forecasts of hourly inundation depths are essential for inundation warning and mitigation d...
This study describes the development of a reservoir inflow forecasting model for typhoon events to i...
[[abstract]]Taiwan is located in themonsoon zone of the North Pacific Ocean and experiences an avera...
This study attempts to achieve real-time rainfall-inundation forecasting in lowland regions, based o...
[[abstract]]In recent years, the increasing frequency and severity of floods caused by climate chang...
[[abstract]]A regional inundation early warning system is crucial to alleviating flood risks and red...
A regional inundation early warning system is crucial to alleviating flood risks and reducing loss o...
This study proposed a hybrid neural network model that combines a self-organizing map (SOM) and back...
Accurate real-time forecasts of inundation depth and area during typhoon flooding is crucial to disa...
[[abstract]]Floods are one of the most dangerous natural hazards and the greatest challenge for hydr...
[[abstract]]Various types of artificial neural networks (ANNs) have been successfully applied in hyd...
[[abstract]]Self-organizing maps (SOMs) have been successfully accepted widely in science and engine...
[[abstract]]We present a two-stage procedure underlying CHIM (clustering-based hybrid inundation mod...
Self-organizing maps (SOMs) have been successfully accepted widely in science and engineering proble...
Accurate real-time forecasts of inundation depth and extent during typhoon flooding are crucial to d...
Accurate forecasts of hourly inundation depths are essential for inundation warning and mitigation d...
This study describes the development of a reservoir inflow forecasting model for typhoon events to i...
[[abstract]]Taiwan is located in themonsoon zone of the North Pacific Ocean and experiences an avera...
This study attempts to achieve real-time rainfall-inundation forecasting in lowland regions, based o...