A precise forecast of streamflow in intermittent rivers is of major difficulties and challenges in watershed management, particularly in arid and semiarid regions. The present research study introduces an ensemble gene expression programming (EGEP) modeling approach to 1- and 2-day ahead streamflow forecasts that meet both accuracy and simplicity criteria of an applied model. Three main components of the proposed EGEP approach which are capable of producing a parsimonious model include (i) creating a population of suitable solutions using classic genetic programming (GP) instead of a single solution, (ii) combining the solutions throughout gene expression programming, and (iii) parsimony selection based upon trade-off analysis between the c...
Modelling the hydrologic processes is an essential tool for the efficient management of water resour...
Daily flow and suspended sediment discharge are two major hydrological variables that affect rivers’...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
A precise forecast of streamflow in intermittent rivers is of major difficulties and challenges in w...
Abstract: River flow forecasting models provide an essential tool to manage water resources, address...
Skilful forecasting of monthly streamflow in intermittent rivers is a challenging task in stochastic...
This paper presents the development and verification of a new multi-stage genetic programming (MSGP)...
WOS: 000340695000008In recent decades, artificial intelligence (AI) techniques have been pronounced ...
This study focused on employing Linear Genetic Programming (LGP), Ensemble Empirical Mode Decomposit...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
In this study, five hydrological models, including the soil and water assessment tool (SWAT), identi...
Sustainable water resources management is a critically important priority across the globe. While wa...
This paper deals with the application of an innovative method for combining estimated outputs from a...
Sustainable water resources management is a critically important priority across the globe. While wa...
Modelling the hydrologic processes is an essential tool for the efficient management of water resour...
Daily flow and suspended sediment discharge are two major hydrological variables that affect rivers’...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
A precise forecast of streamflow in intermittent rivers is of major difficulties and challenges in w...
Abstract: River flow forecasting models provide an essential tool to manage water resources, address...
Skilful forecasting of monthly streamflow in intermittent rivers is a challenging task in stochastic...
This paper presents the development and verification of a new multi-stage genetic programming (MSGP)...
WOS: 000340695000008In recent decades, artificial intelligence (AI) techniques have been pronounced ...
This study focused on employing Linear Genetic Programming (LGP), Ensemble Empirical Mode Decomposit...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
Accurate prediction of daily streamflow plays an essential role in various applications of water res...
In this study, five hydrological models, including the soil and water assessment tool (SWAT), identi...
Sustainable water resources management is a critically important priority across the globe. While wa...
This paper deals with the application of an innovative method for combining estimated outputs from a...
Sustainable water resources management is a critically important priority across the globe. While wa...
Modelling the hydrologic processes is an essential tool for the efficient management of water resour...
Daily flow and suspended sediment discharge are two major hydrological variables that affect rivers’...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...