Artificial Neural Networks (ANNs) and other data-driven methods are appearing with increasing frequency in the literature for the prediction of water discharge or stage. Unfortunately, many of these data-driven models are used as the forecasting tools only short lead times where unsurprisingly they perform very well. There have not been much documented attempts at predicting floods at longer and more useful lead times for flood warning. In this paper ANNs flood forecasting model are developed for the Upper Ping River, Chiang Mai, Thailand. Raw radar reflectively data are used as the primary inputs and water stage are used as the additional inputs, also four input determination techniques (Correlation, Stepwise regression, combination betwee...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
This thesis reports results from a systematic experimental approach to evaluating aspects of the neu...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Developing flood forecasting is necessity especially for east coast peninsular Malaysia that experie...
Flood event is among the most influential disaster in Malaysia .Therefore, the developing of flood f...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
This thesis reports results from a systematic experimental approach to evaluating aspects of the neu...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Many different Artificial Neural Networks (ANN) models of flood have been developed for forecast upd...
Developing flood forecasting is necessity especially for east coast peninsular Malaysia that experie...
Flood event is among the most influential disaster in Malaysia .Therefore, the developing of flood f...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Flood prediction methods play an important role in providing early warnings to government offices. T...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
The aim of this study is to develop the best forecast model using hybrid Gaussian-Nonlinear Autoregr...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...