Abstract Hydrological models are widely used as simplified, conceptual, mathematical representatives for water resource management. The performance of hydrological modeling is usually challenged by model calibration and uncertainty analysis during modeling exercises. In this study, a multicriteria sequential calibration and uncertainty analysis (MS-CUA) method was proposed to improve the efficiency and performance of hydrological modeling with high reliability. To evaluate the performance and feasibility of the proposed method, two case studies were conducted in comparison with two other methods, sequential uncertainty fitting algorithm (SUFI-2) and generalized likelihood uncertainty estimation (GLUE). The results indicated that the MS-CUA ...
Parameter uncertainty estimation is one of the major challenges in hydrological modeling. Here we pr...
The uncertainty in model output means that forecasts should be considered in aprobabilistic way or u...
Uncertainty in hydrological model prediction stems from different sources such as parameter uncertai...
The successful performance of a hydrological model is usually challenged by the quality of the sensi...
In recent years, predictive uncertainty analysis in hydrologic modeling has become an active area o...
The contemporary usage of hydrologic models has been to rely on a single model to perform the simula...
The regional hydrological system is extremely complex because it is affected not only by physical fa...
The generalized likelihood uncertainty estimation (GLUE) technique is an innovative uncertainty meth...
Computer-based modelling is widely used in hydrology for the purpose of prediction and forecast. For...
Hydrological models play vital roles in management of water resources. However, the calibration of t...
Hydrological models play vital roles in management of water resources. However, the calibration of t...
Abstract: Estimating the uncertainty of hydrological models remains a relevant challenge in applied ...
Despite various criticisms of GLUE (Generalized Likelihood Uncertainty Estimation), it is still a wi...
Manual calibration of distributed models with many unknown parameters can result in problems of equi...
Hydrologic modelling has benefited from significant developments over the past two decades, which ha...
Parameter uncertainty estimation is one of the major challenges in hydrological modeling. Here we pr...
The uncertainty in model output means that forecasts should be considered in aprobabilistic way or u...
Uncertainty in hydrological model prediction stems from different sources such as parameter uncertai...
The successful performance of a hydrological model is usually challenged by the quality of the sensi...
In recent years, predictive uncertainty analysis in hydrologic modeling has become an active area o...
The contemporary usage of hydrologic models has been to rely on a single model to perform the simula...
The regional hydrological system is extremely complex because it is affected not only by physical fa...
The generalized likelihood uncertainty estimation (GLUE) technique is an innovative uncertainty meth...
Computer-based modelling is widely used in hydrology for the purpose of prediction and forecast. For...
Hydrological models play vital roles in management of water resources. However, the calibration of t...
Hydrological models play vital roles in management of water resources. However, the calibration of t...
Abstract: Estimating the uncertainty of hydrological models remains a relevant challenge in applied ...
Despite various criticisms of GLUE (Generalized Likelihood Uncertainty Estimation), it is still a wi...
Manual calibration of distributed models with many unknown parameters can result in problems of equi...
Hydrologic modelling has benefited from significant developments over the past two decades, which ha...
Parameter uncertainty estimation is one of the major challenges in hydrological modeling. Here we pr...
The uncertainty in model output means that forecasts should be considered in aprobabilistic way or u...
Uncertainty in hydrological model prediction stems from different sources such as parameter uncertai...