Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/output data (typically, rainfall and runoff, respectively), as well as model error. Despite advances in data collection and model construction, we expect input uncertainty to be particularly significant (because of the high spatial and temporal variability of precipitation) and to remain considerable in the foreseeable future. Ignoring this uncertainty compromises hydrological modeling, potentially yielding biased and misleading results. This paper develops a Bayesian total error analysis methodology for hydrological models that allows (indeed, requires) the modeler to directly and transparently incorporate, test, and refine existing understand...
Conceptual models are indispensable tools for hydrology. In order to use them for making probabilist...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the uncertai...
Meaningful quantification of data and structural uncertainties in conceptual rainfall-runoff modelin...
The lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptu...
Rigorous quantification of the various sources of uncertainty arising during the calibration of conc...
Rigorous quantification of the various sources of uncertainty arising during the calibration of conc...
The lack of a robust framework for quantifying the uncertainty in the parameters and predictions of ...
The conventional treatment of uncertainty in rainfall-runoff modeling primarily attributes uncertain...
Meaningful quantification of data and structural uncertainties in conceptual rainfall-runoff modelin...
This paper has developed an input error model to account for input uncertainty, and applied the rain...
This paper has developed an input error model to account for input uncertainty, and applied the rain...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
Bayesian methods are finding increasing application and use in environmental modeling. Bayes law sta...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Conceptual models are indispensable tools for hydrology. In order to use them for making probabilist...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the uncertai...
Meaningful quantification of data and structural uncertainties in conceptual rainfall-runoff modelin...
The lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptu...
Rigorous quantification of the various sources of uncertainty arising during the calibration of conc...
Rigorous quantification of the various sources of uncertainty arising during the calibration of conc...
The lack of a robust framework for quantifying the uncertainty in the parameters and predictions of ...
The conventional treatment of uncertainty in rainfall-runoff modeling primarily attributes uncertain...
Meaningful quantification of data and structural uncertainties in conceptual rainfall-runoff modelin...
This paper has developed an input error model to account for input uncertainty, and applied the rain...
This paper has developed an input error model to account for input uncertainty, and applied the rain...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
Bayesian methods are finding increasing application and use in environmental modeling. Bayes law sta...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Conceptual models are indispensable tools for hydrology. In order to use them for making probabilist...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the uncertai...