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Bayesian estimation of uncertainty in runoff prediction and the value of data : an application of the GLUE approach.

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Bayesian estimation of uncertainty in runoff prediction and the value of data : an application of the GLUE approach. / Freer, Jim; Beven, Keith J.; Ambroise, Bruno.
In: Water Resources Research, Vol. 32, No. 7, 1996, p. 2161-2173.

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Freer, Jim ; Beven, Keith J. ; Ambroise, Bruno. / Bayesian estimation of uncertainty in runoff prediction and the value of data : an application of the GLUE approach. In: Water Resources Research. 1996 ; Vol. 32, No. 7. pp. 2161-2173.

Bibtex

@article{0636a8fa044c4fac9b70a5d872ac58a1,
title = "Bayesian estimation of uncertainty in runoff prediction and the value of data : an application of the GLUE approach.",
abstract = "This paper addresses the problem of evaluating the predictive uncertainty of TOPMODEL using the Bayesian Generalised Likelihood Uncertainty Estimation (GLUE) methodology in an application to the small Ringelbach research catchment in the Vosges, France. The wide range of parameter sets giving acceptable simulations is demonstrated, and uncertainty bands are presented based on different likelihood measures. It is shown how the distributions of predicted discharges are non-Gaussian and vary in shape through time and with discharge. Updating of the likelihood weights using Bayes equation is demonstrated after each year of record and it is shown how the additional data can be evaluated in terms of the way they constrain the uncertainty bands.",
author = "Jim Freer and Beven, {Keith J.} and Bruno Ambroise",
year = "1996",
language = "English",
volume = "32",
pages = "2161--2173",
journal = "Water Resources Research",
issn = "0043-1397",
publisher = "AMER GEOPHYSICAL UNION",
number = "7",

}

RIS

TY - JOUR

T1 - Bayesian estimation of uncertainty in runoff prediction and the value of data : an application of the GLUE approach.

AU - Freer, Jim

AU - Beven, Keith J.

AU - Ambroise, Bruno

PY - 1996

Y1 - 1996

N2 - This paper addresses the problem of evaluating the predictive uncertainty of TOPMODEL using the Bayesian Generalised Likelihood Uncertainty Estimation (GLUE) methodology in an application to the small Ringelbach research catchment in the Vosges, France. The wide range of parameter sets giving acceptable simulations is demonstrated, and uncertainty bands are presented based on different likelihood measures. It is shown how the distributions of predicted discharges are non-Gaussian and vary in shape through time and with discharge. Updating of the likelihood weights using Bayes equation is demonstrated after each year of record and it is shown how the additional data can be evaluated in terms of the way they constrain the uncertainty bands.

AB - This paper addresses the problem of evaluating the predictive uncertainty of TOPMODEL using the Bayesian Generalised Likelihood Uncertainty Estimation (GLUE) methodology in an application to the small Ringelbach research catchment in the Vosges, France. The wide range of parameter sets giving acceptable simulations is demonstrated, and uncertainty bands are presented based on different likelihood measures. It is shown how the distributions of predicted discharges are non-Gaussian and vary in shape through time and with discharge. Updating of the likelihood weights using Bayes equation is demonstrated after each year of record and it is shown how the additional data can be evaluated in terms of the way they constrain the uncertainty bands.

M3 - Journal article

VL - 32

SP - 2161

EP - 2173

JO - Water Resources Research

JF - Water Resources Research

SN - 0043-1397

IS - 7

ER -