A platform for research: civil engineering, architecture and urbanism
Predictive modelling of the stage–discharge relationship using Gene-Expression Programming
Modelling the hydrologic processes is an essential tool for the efficient management of water resource systems. Therefore, researchers are consistently developing and improving various predictive/forecasting techniques to accurately represent a river's attributes, even though traditional methods are available. This paper presents the Gene-Expression Programming (GEP) modelling technique to accurately model the stage–discharge relationship for the Arouca River in Trinidad and Tobago using only low flow data. The proposed method uses the stage and associated discharge measurements at one cross-section of the Arouca River. These measurements were used to train the GEP model. The results of the GEP model were also compared to the traditional method of the Stage–Discharge Rating Curve (SRC). Four statistical paraments namely the Pearson's Correlation Coefficient (R), Root Mean Square Error (RMSE), Mean Absolute Relative Error (MARE) and Nash–Sutcliffe Efficiency (NSE) were used to evaluate the performance of the GEP model and the SRC method. Overall, the GEP model performed exceptionally well with an R2 of 0.990, RMSE of 0.104, MARE of 0.076 and NSE of 0.957. HIGHLIGHTS The stage–discharge relationship for the Arouca River in Trinidad and Tobago was modelled using GEP via the GeneXPro software, using only low flow data.; The stage–discharge relationship for the Arouca River in Trinidad and Tobago was modelled with the SRC method using only low flow data.; The performance GEP and SRC techniques were analysed using previous research and statistical parameters such as R2, RSME, MARE and NSE.;
Predictive modelling of the stage–discharge relationship using Gene-Expression Programming
Modelling the hydrologic processes is an essential tool for the efficient management of water resource systems. Therefore, researchers are consistently developing and improving various predictive/forecasting techniques to accurately represent a river's attributes, even though traditional methods are available. This paper presents the Gene-Expression Programming (GEP) modelling technique to accurately model the stage–discharge relationship for the Arouca River in Trinidad and Tobago using only low flow data. The proposed method uses the stage and associated discharge measurements at one cross-section of the Arouca River. These measurements were used to train the GEP model. The results of the GEP model were also compared to the traditional method of the Stage–Discharge Rating Curve (SRC). Four statistical paraments namely the Pearson's Correlation Coefficient (R), Root Mean Square Error (RMSE), Mean Absolute Relative Error (MARE) and Nash–Sutcliffe Efficiency (NSE) were used to evaluate the performance of the GEP model and the SRC method. Overall, the GEP model performed exceptionally well with an R2 of 0.990, RMSE of 0.104, MARE of 0.076 and NSE of 0.957. HIGHLIGHTS The stage–discharge relationship for the Arouca River in Trinidad and Tobago was modelled using GEP via the GeneXPro software, using only low flow data.; The stage–discharge relationship for the Arouca River in Trinidad and Tobago was modelled with the SRC method using only low flow data.; The performance GEP and SRC techniques were analysed using previous research and statistical parameters such as R2, RSME, MARE and NSE.;
Predictive modelling of the stage–discharge relationship using Gene-Expression Programming
Prashant Birbal (author) / Hazi Azamathulla (author) / Lee Leon (author) / Vikram Kumar (author) / Jerome Hosein (author)
2021
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
New Approach for Stage-Discharge Relationship: Gene-Expression Programming
Online Contents | 2009
|New Approach for Stage-Discharge Relationship: Gene-Expression Programming
British Library Online Contents | 2009
|Modelling Stage–Discharge Relationship using Data-Driven Techniques
Taylor & Francis Verlag | 2015
|Discharge Coefficient Estimation of Arched Labyrinth Weir Using Gene Expression Programming
Springer Verlag | 2023
|