Uncertainty analysis (UA) has received substantial attention in water resources during the last decade. Bayesian approaches are often preferred for UA. This study describes a formal Bayesian approach for the assessment of parameter uncertainty and predictive uncertainty using a spatially distributed hydrologic model and will demonstrate its application using data from a well monitored experimental watershed. A Markov-Chain Monte Carlo (MCMC) scheme has been used to sample posterior parameter distributions. A formal, flexible likelihood function that explicitly accounts for heteroscedasticity, temporal correlation and non-normality of simulation residuals has been used to describe closeness of the simulated and observed streamflow. Performan...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
In recent years, predictive uncertainty analysis in hydrologic modeling has become an active area o...
Bayesian methods, and particularly Markov chain Monte Carlo (MCMC) techniques, are extremely useful ...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
The significance of uncertainty analysis (UA) to quantify reliability of model simulations is being ...
The significance of uncertainty analysis (UA) to quantify reliability of model simulations is being ...
In recent years, a strong debate has emerged in the hydrologic literature regarding what constitutes...
In recent years, a strong debate has emerged in the hydrologic literature regarding what constitutes...
Importance of uncertainty analysis (UA) to estimate the degree of reliability associated with model ...
Importance of uncertainty analysis (UA) to estimate the degree of reliability associated with model ...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
In recent years, predictive uncertainty analysis in hydrologic modeling has become an active area o...
Bayesian methods, and particularly Markov chain Monte Carlo (MCMC) techniques, are extremely useful ...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
The significance of uncertainty analysis (UA) to quantify reliability of model simulations is being ...
The significance of uncertainty analysis (UA) to quantify reliability of model simulations is being ...
In recent years, a strong debate has emerged in the hydrologic literature regarding what constitutes...
In recent years, a strong debate has emerged in the hydrologic literature regarding what constitutes...
Importance of uncertainty analysis (UA) to estimate the degree of reliability associated with model ...
Importance of uncertainty analysis (UA) to estimate the degree of reliability associated with model ...
ABSTRACT Uncertainty estimation analysis has emerged as a fundamental study to understand the effect...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
2014 S.C. Water Resources Conference - Informing Strategic Water Planning to Address Natural Resourc...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
In recent years, predictive uncertainty analysis in hydrologic modeling has become an active area o...
Bayesian methods, and particularly Markov chain Monte Carlo (MCMC) techniques, are extremely useful ...