© 2018 Elsevier Ltd Prediction of hydrological flow series generated from a catchment is an important aspect of water resources management and decision making. The underlying process underpinning catchment flow generation is complex and depends on many parameters. Determination of these parameters using a trial and error method or optimization algorithm is time consuming. Application of Artificial Intelligence (AI) based machine learning techniques including Artificial Neural Network, Genetic Programming (GP) and Support Vector Machine (SVM) replaced the complex modeling process and at the same time improved the prediction accuracy of hydrological time-series. However, they still require numerous iterations and computational time to generat...
Despite of diverse progressions in hydrological modeling techniques, the necessity of a robust, accu...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Study region: Kaidu River catchment in the Tianshan Mountain, northwestern China. Study focus: This ...
© IWA Publishing 2016. Applying feed-forward neural networks has been limited due to the use of conv...
Monthly stream-flow forecasting can yield important information for hydrological applications includ...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
Stream-flow forecasting is a crucial task for hydrological science. Throughout the literature, tradi...
Fluctuation of groundwater levels around the world is an important theme in hydrological research. R...
Rainfall-runoff (R-R) modelling is used to study the runoff generation of a catchment. The quantity ...
Streamflow modeling is considered as an essential component for water resources planning and managem...
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...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
Artificial intelligence (AI) models have been successfully applied in modeling engineering problems,...
Despite of diverse progressions in hydrological modeling techniques, the necessity of a robust, accu...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Study region: Kaidu River catchment in the Tianshan Mountain, northwestern China. Study focus: This ...
© IWA Publishing 2016. Applying feed-forward neural networks has been limited due to the use of conv...
Monthly stream-flow forecasting can yield important information for hydrological applications includ...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
The capability of the extreme learning machine (ELM) model in modeling stochastic, nonlinear, and co...
Stream-flow forecasting is a crucial task for hydrological science. Throughout the literature, tradi...
Fluctuation of groundwater levels around the world is an important theme in hydrological research. R...
Rainfall-runoff (R-R) modelling is used to study the runoff generation of a catchment. The quantity ...
Streamflow modeling is considered as an essential component for water resources planning and managem...
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...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
Artificial intelligence (AI) models have been successfully applied in modeling engineering problems,...
Despite of diverse progressions in hydrological modeling techniques, the necessity of a robust, accu...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Study region: Kaidu River catchment in the Tianshan Mountain, northwestern China. Study focus: This ...