Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the uncertainty in the observed forcing/response data and the structural error in the model. This study works towards the goal of developing a robust framework for dealing with these sources of error and focuses on model error. The characterisation of model error in CRR modelling has been thwarted by the convenient but indefensible treatment of CRR models as deterministic descriptions of catchment dynamics. This paper argues that the fluxes in CRR models should be treated as stochastic quantities because their estimation involves spatial and temporal averaging. Acceptance that CRR models are intrinsically stochastic paves the way for a more rational char...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
The Bayesian Total Error Analysis methodology (BATEA) provides the opportunity to directly address a...
It is a common approach to extend streamflow records using longer term rainfall data and a calibrate...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the uncertai...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by input, model...
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 lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptu...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the sampling...
The development of a robust framework for quantifying the parametric and predictive uncertainty of c...
The development of a robust framework for quantifying the parametric and predictive uncertainty of c...
The lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptu...
It is a common approach to extend streamflow records using longer term rainfall data and a calibrate...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
The Bayesian Total Error Analysis methodology (BATEA) provides the opportunity to directly address a...
It is a common approach to extend streamflow records using longer term rainfall data and a calibrate...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the uncertai...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by input, model...
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 lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptu...
Calibration and prediction in conceptual rainfall-runoff (CRR) modelling is affected by the sampling...
The development of a robust framework for quantifying the parametric and predictive uncertainty of c...
The development of a robust framework for quantifying the parametric and predictive uncertainty of c...
The lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptu...
It is a common approach to extend streamflow records using longer term rainfall data and a calibrate...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
The Bayesian Total Error Analysis methodology (BATEA) provides the opportunity to directly address a...
It is a common approach to extend streamflow records using longer term rainfall data and a calibrate...