Accurate prediction of daily streamflow plays an essential role in various applications of water resources engineering, such as flood mitigation and urban and agricultural planning. This study investigated a hybrid ensemble decomposition technique based on ensemble empirical mode decomposition (EEMD) and variational mode decomposition (VMD) with gene expression programming (GEP) and random forest regression (RFR) algorithms for daily streamflow simulation across three mountainous stations, Siira, Bilghan, and Gachsar, in Karaj, Iran. To determine the appropriate corresponding input variables with optimal lag time the partial auto-correlation function (PACF) and auto-correlation function (ACF) were used for streamflow prediction purpose. Cal...
Accurate forecasting of streamflow data over daily timescales is a critical problem for the long-ter...
Consistent streamflow forecasts play a fundamental part in flood risk mitigation. Population increas...
Modeling stream flows is vital for water resource planning and flood and drought management. In this...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
The accuracy and consistency of streamflow prediction play a significant role in several application...
Sustainable water resources management is facing a rigorous challenge due to global climate change. ...
Data-driven methods are very useful for streamflow forecasting when the underlying physical relation...
This study focused on employing Linear Genetic Programming (LGP), Ensemble Empirical Mode Decomposit...
This is the author accepted manuscript. the final version is available from Elsevier via the DOI in ...
Reliable river streamflow (RSF) forecasting is an important issue due to its impact on planning and ...
A precise forecast of streamflow in intermittent rivers is of major difficulties and challenges in w...
In the current paper, the efficiency of three new standalone data-mining algorithms [M5 Prime (M5P),...
The potential of the most recent pre-processing tool, namely, complete ensemble empirical mode decom...
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
Streamflow forecasting at short horizons is vital for the management of water resources. However, th...
Accurate forecasting of streamflow data over daily timescales is a critical problem for the long-ter...
Consistent streamflow forecasts play a fundamental part in flood risk mitigation. Population increas...
Modeling stream flows is vital for water resource planning and flood and drought management. In this...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
The accuracy and consistency of streamflow prediction play a significant role in several application...
Sustainable water resources management is facing a rigorous challenge due to global climate change. ...
Data-driven methods are very useful for streamflow forecasting when the underlying physical relation...
This study focused on employing Linear Genetic Programming (LGP), Ensemble Empirical Mode Decomposit...
This is the author accepted manuscript. the final version is available from Elsevier via the DOI in ...
Reliable river streamflow (RSF) forecasting is an important issue due to its impact on planning and ...
A precise forecast of streamflow in intermittent rivers is of major difficulties and challenges in w...
In the current paper, the efficiency of three new standalone data-mining algorithms [M5 Prime (M5P),...
The potential of the most recent pre-processing tool, namely, complete ensemble empirical mode decom...
This paper introduces three artificial neural network (ANN) architectures for monthly streamflow for...
Streamflow forecasting at short horizons is vital for the management of water resources. However, th...
Accurate forecasting of streamflow data over daily timescales is a critical problem for the long-ter...
Consistent streamflow forecasts play a fundamental part in flood risk mitigation. Population increas...
Modeling stream flows is vital for water resource planning and flood and drought management. In this...