Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast updating. However, the model performance, and error prediction in which forecast outputs are adjusted directly based on models calibrated to the time series of differences between observed and forecast values, are very interesting and challenging task. This paper presents an improved lead time flood forecasting using Non-linear Auto Regressive Exogenous Neural Network (NARXNN), which shows better performance in term of forecast precision and produces minimum error compared to neural network method using Radial Basis Function (RBF) in examined 12-hour ahead of time. First, RBF forecasting model was employed to predict the flood water level of Kel...
This report deals with flood problem which is eventually happened in Malaysia when it coincides with...
Flood forecasting models are a necessity, as they help in planning for flood events, and thus help p...
Flood disasters continue to occur In many countries around the world and cause tremendous casualtles...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Flood is the most common natural hazard in Malaysia. Flood hazard brings damage to life and property...
Flood event is among the most influential disaster in Malaysia .Therefore, the developing of flood f...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
Artificial Neural Networks (ANNs) and other data-driven methods are appearing with increasing freque...
Developing flood forecasting is necessity especially for east coast peninsular Malaysia that experie...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
Flood is a major disaster that happens around the world. It has caused the loss of many precious liv...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Maran is located at district of the same name between Temerloh and Kuantan, Pahang which is surround...
Natural flood disaster frequently happens in Malaysia especially during monsoon season and Kuala Kan...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
This report deals with flood problem which is eventually happened in Malaysia when it coincides with...
Flood forecasting models are a necessity, as they help in planning for flood events, and thus help p...
Flood disasters continue to occur In many countries around the world and cause tremendous casualtles...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Flood is the most common natural hazard in Malaysia. Flood hazard brings damage to life and property...
Flood event is among the most influential disaster in Malaysia .Therefore, the developing of flood f...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
Artificial Neural Networks (ANNs) and other data-driven methods are appearing with increasing freque...
Developing flood forecasting is necessity especially for east coast peninsular Malaysia that experie...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
Flood is a major disaster that happens around the world. It has caused the loss of many precious liv...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Maran is located at district of the same name between Temerloh and Kuantan, Pahang which is surround...
Natural flood disaster frequently happens in Malaysia especially during monsoon season and Kuala Kan...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
This report deals with flood problem which is eventually happened in Malaysia when it coincides with...
Flood forecasting models are a necessity, as they help in planning for flood events, and thus help p...
Flood disasters continue to occur In many countries around the world and cause tremendous casualtles...