Estimating the reliability of potential prediction is very crucial as our life depended heavily on it. Thus, a simulation that concerned hydrological factors such as streamflow must be enhanced. In this study, Autoregressive (AR) and Artificial Neural Networks (ANN) were used. The forecasting result for each model was assessed by using various performance measurements such as Mean Absolute Error (MAE), Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE), Mean Forecast Error (MFE) and Nash-Sutcliffe Model Efficiency Coefficient (CE). The experimental results showed the forecast performance of Durian Tunggal reservoir datasets by using ANN Model 7 with 7 hidden neurons has better forecast performance compared to AR (4). The A...
International audienceThis paper compares the performance of two artificial neural network (ANN) mod...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
Time series forecasting is the use of a model to forecast future events based on known past\ud event...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
Estimating the reliability of potential prediction is very crucial as our life depended heavily on i...
Monthly stream flow forecasting can provide crucial information on hydrological applications includi...
The Blue Nile River is utilized in Sudan as the main source of irrigation water. However, the river ...
The planning and management of water resources are affected by streamflow. The analysis of the susta...
This study reports on the performance of two medium-range streamflow forecast models: 1 a multilayer...
The goal of the present research is forecasting the inflow of Dez dam reservoir by using Auto Regres...
Estimating the flows of rivers can have a signicant economic impact, as this can help in agricultura...
Three updating schemes using artificial neural network (ANN) in flow forecasting are compared in ter...
International audienceThis paper compares the performance of two artificial neural network (ANN) mod...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
Time series forecasting is the use of a model to forecast future events based on known past\ud event...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...
Forecasting future behaviour of process, by using the key process variables, enables effective decis...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
Estimating the reliability of potential prediction is very crucial as our life depended heavily on i...
Monthly stream flow forecasting can provide crucial information on hydrological applications includi...
The Blue Nile River is utilized in Sudan as the main source of irrigation water. However, the river ...
The planning and management of water resources are affected by streamflow. The analysis of the susta...
This study reports on the performance of two medium-range streamflow forecast models: 1 a multilayer...
The goal of the present research is forecasting the inflow of Dez dam reservoir by using Auto Regres...
Estimating the flows of rivers can have a signicant economic impact, as this can help in agricultura...
Three updating schemes using artificial neural network (ANN) in flow forecasting are compared in ter...
International audienceThis paper compares the performance of two artificial neural network (ANN) mod...
Industrial countries which are rapidly developing had to faced environmental disaster. Flood occurs ...
Time series forecasting is the use of a model to forecast future events based on known past\ud event...