Stream-flow forecasting is a crucial task for hydrological science. Throughout the literature, traditional and artificial intelligence models have been applied to this task. An attempt to explore and develop better expert models is an ongoing endeavor for this hydrological application. In addition, the accuracy of modeling, confidence and practicality of the model are the other significant problems that need to be considered. Accordingly, this study investigates modern non-tuned machine learning data-driven approach, namely extreme learning machine (ELM). This data-driven approach is containing single layer feedforward neural network that selects the input variables randomly and determine the output weights systematically. To demonstrate th...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Streamflow modeling is considered as an essential component for water resources planning and managem...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...
Monthly stream-flow forecasting can yield important information for hydrological applications includ...
© IWA Publishing 2016. Applying feed-forward neural networks has been limited due to the use of conv...
© 2018 Elsevier Ltd Prediction of hydrological flow series generated from a catchment is an importan...
Monthly stream flow forecasting can provide crucial information on hydrological applications includi...
A predictive model for streamflow has practical implications for understanding drought hydrology, en...
In machine learning (ML), the extreme learning machine (ELM), a feedforward neural network model whi...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
In this study, a nonparametric technique to set up a river stage forecasting model based on empirica...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Streamflow modeling is considered as an essential component for water resources planning and managem...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...
Monthly stream-flow forecasting can yield important information for hydrological applications includ...
© IWA Publishing 2016. Applying feed-forward neural networks has been limited due to the use of conv...
© 2018 Elsevier Ltd Prediction of hydrological flow series generated from a catchment is an importan...
Monthly stream flow forecasting can provide crucial information on hydrological applications includi...
A predictive model for streamflow has practical implications for understanding drought hydrology, en...
In machine learning (ML), the extreme learning machine (ELM), a feedforward neural network model whi...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
In this study, a nonparametric technique to set up a river stage forecasting model based on empirica...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
Forecasting a hydrologic time series has been one of the most complicated tasks owing to the wide ra...
Abstract:-Providing stream flow forecasting models is one of the most important problems in water re...
Streamflow modeling is considered as an essential component for water resources planning and managem...
Accurate streamflow forecasting can help minimizing the negative impacts of hydrological events such...