Floods, one of the most significant natural hazards, often result in loss of life and property. Accurate hourly streamflow forecasting is always a key issue in hydrology for flood hazard mitigation. To improve the performance of hourly streamflow forecasting, a methodology concerning the development of neural network (NN) based models with an enforced learning strategy is proposed in this paper. Firstly, four different NNs, namely back propagation network (BPN), radial basis function network (RBFN), self-organizing map (SOM), and support vector machine (SVM), are used to construct streamflow forecasting models. Through the cross-validation test, NN-based models with superior performance in streamflow forecasting are detected. Then, an enf...
Self-organizing maps (SOMs) have been successfully accepted widely in science and engineering proble...
[[abstract]]Self-organizing maps (SOMs) have been successfully accepted widely in science and engine...
Time series forecasting is the use of a model to forecast future events based on known past\ud event...
Floods, one of the most significant natural hazards, often result in loss of life and property. Acc...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...
Artificial Neural Networks (ANNs) provide a quick and flexible way to create models for streamflow ...
WOS: 000441994400049Streamflow forecasting based on past records is an important issue in both hydro...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Streamflow forecasting has always been a challenging task for water resources engineers and managers...
Rainfall-runoff relationships are among the most complex hydrologic phenomena. The conceptual models...
Monthly stream-flow forecasting can yield important information for hydrological applications includ...
PolyU Library Call No.: [THS] LG51 .H577P CEE 2016 Taorminaxi, 169 pages :illustrationsNeural Networ...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Time series forecasting is the use of a model to forecast future events based on known past events....
Streamflow simulation and forecasting is an important approach for water resources management and fl...
Self-organizing maps (SOMs) have been successfully accepted widely in science and engineering proble...
[[abstract]]Self-organizing maps (SOMs) have been successfully accepted widely in science and engine...
Time series forecasting is the use of a model to forecast future events based on known past\ud event...
Floods, one of the most significant natural hazards, often result in loss of life and property. Acc...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...
Artificial Neural Networks (ANNs) provide a quick and flexible way to create models for streamflow ...
WOS: 000441994400049Streamflow forecasting based on past records is an important issue in both hydro...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Streamflow forecasting has always been a challenging task for water resources engineers and managers...
Rainfall-runoff relationships are among the most complex hydrologic phenomena. The conceptual models...
Monthly stream-flow forecasting can yield important information for hydrological applications includ...
PolyU Library Call No.: [THS] LG51 .H577P CEE 2016 Taorminaxi, 169 pages :illustrationsNeural Networ...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Time series forecasting is the use of a model to forecast future events based on known past events....
Streamflow simulation and forecasting is an important approach for water resources management and fl...
Self-organizing maps (SOMs) have been successfully accepted widely in science and engineering proble...
[[abstract]]Self-organizing maps (SOMs) have been successfully accepted widely in science and engine...
Time series forecasting is the use of a model to forecast future events based on known past\ud event...