A new technique, Bayesian Monte Carlo (BMC), is used to quantify errors in water quality models caused by uncertain parameters. BMC also provides estimates of parameter uncertainty as a function of observed data on model state variables. The use of Bayesian inference generates uncertainty estimates that combine prior information on parameter uncertainty with observed variation in water quality data to provide an improved estimate of model parameter and output uncertainty. It also combines Monte Carlo analysis with Bayesian inference to determine the ability of random selected parameter sets to simulate observed data. BMC expands upon previous studies by providing a quantitative estimate of parameter acceptability using the statistical likel...
In urban drainage modelling, uncertainty analysis is of undoubted necessity; however, several method...
This book brings together a number of critical discussions on the role of uncertainty in the develop...
In urban drainage modelling, uncertainty analysis is of undoubted necessity. However, uncertainty an...
This research focused upon finding a technique that can be widely and easily applied for quantifying...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Water quality models are essential to the development of least-cost water quality control strategies...
Watershed-scale water quality (WWQ) models are now widely used to support management decision-making...
Uncertainty in information used to make decisions is unavoidable; however it can be reduced by integ...
Mathematical models are of common use in urban drainage, and they are increasingly being applied to ...
Water quality affects our lifestyles in several ways. As such, water quality modeling becomes essent...
Increasing concern about the accuracy of hydrologic and water quality models has prompted interest i...
We present a case study for Bayesian analysis and proper representation of distributions and depende...
A Bayesian-Monte Carlo approach was carried out to assess uncertainties in process-based, continuous...
This report demonstrates the feasibility of applying stochastic techniques to linear...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
In urban drainage modelling, uncertainty analysis is of undoubted necessity; however, several method...
This book brings together a number of critical discussions on the role of uncertainty in the develop...
In urban drainage modelling, uncertainty analysis is of undoubted necessity. However, uncertainty an...
This research focused upon finding a technique that can be widely and easily applied for quantifying...
Uncertainty analysis (UA) has received substantial attention in water resources during the last deca...
Water quality models are essential to the development of least-cost water quality control strategies...
Watershed-scale water quality (WWQ) models are now widely used to support management decision-making...
Uncertainty in information used to make decisions is unavoidable; however it can be reduced by integ...
Mathematical models are of common use in urban drainage, and they are increasingly being applied to ...
Water quality affects our lifestyles in several ways. As such, water quality modeling becomes essent...
Increasing concern about the accuracy of hydrologic and water quality models has prompted interest i...
We present a case study for Bayesian analysis and proper representation of distributions and depende...
A Bayesian-Monte Carlo approach was carried out to assess uncertainties in process-based, continuous...
This report demonstrates the feasibility of applying stochastic techniques to linear...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
In urban drainage modelling, uncertainty analysis is of undoubted necessity; however, several method...
This book brings together a number of critical discussions on the role of uncertainty in the develop...
In urban drainage modelling, uncertainty analysis is of undoubted necessity. However, uncertainty an...