Downscaling global weather prediction model outputs to individual locations or local scales is a common practice for operational weather forecast in order to correct the model outputs at subgrid scales. This paper presents an empirical-statistical downscaling method for precipitation prediction which uses a feed-forward multilayer perceptron (MLP) neural network. The MLP architecture was optimized by considering physical bases that determine the circulation of atmospheric variables. Downscaled precipitation was then used as inputs to the super tank model (runoff model) for flood prediction. The case study was conducted for the Thu Bon River Basin, located in Central Vietnam. Study results showed that the precipitation predicted by MLP outpe...
Interest in monitoring severe weather events is cautiously increasing because of the numerous disast...
Artificial Neural Networks (ANN) has been well studied for flood prediction. However, there is not e...
The Artificial Neural Network (ANN) is a method of computation inspired by studies of the brain and ...
Abstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability o...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
Hydrometeorological forecasts provide future flooding estimates to reduce damages. Despite the advan...
Choosing downscaling techniques is crucial in obtaining accurate and reliable climate change predict...
Global climate change is a major area of concern to public and climate researchers. It impacts flood...
The increase in global surface temperature in response to the changing composition of the atmosphere...
Study of Climate change effect on water resources is very important for its effective management. Pr...
This paper describes the development of a back-propagation Neural Network model for predicting flood...
This research is focused on the development of statistical downscaling model using neural network te...
The major purpose of this study is to effectively construct artificial neural networks-based multist...
This study develops a late spring-early summer rainfall forecasting model using an artificial neural...
Interest in monitoring severe weather events is cautiously increasing because of the numerous disast...
Artificial Neural Networks (ANN) has been well studied for flood prediction. However, there is not e...
The Artificial Neural Network (ANN) is a method of computation inspired by studies of the brain and ...
Abstract The hybrid dynamical-statistical downscaling approach is an effort to combine the ability o...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
Precipitation downscaling is widely employed for enhancing the resolution and accuracy of precipitat...
Hydrometeorological forecasts provide future flooding estimates to reduce damages. Despite the advan...
Choosing downscaling techniques is crucial in obtaining accurate and reliable climate change predict...
Global climate change is a major area of concern to public and climate researchers. It impacts flood...
The increase in global surface temperature in response to the changing composition of the atmosphere...
Study of Climate change effect on water resources is very important for its effective management. Pr...
This paper describes the development of a back-propagation Neural Network model for predicting flood...
This research is focused on the development of statistical downscaling model using neural network te...
The major purpose of this study is to effectively construct artificial neural networks-based multist...
This study develops a late spring-early summer rainfall forecasting model using an artificial neural...
Interest in monitoring severe weather events is cautiously increasing because of the numerous disast...
Artificial Neural Networks (ANN) has been well studied for flood prediction. However, there is not e...
The Artificial Neural Network (ANN) is a method of computation inspired by studies of the brain and ...