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Introductory overview of identifiability analysis: A guide to evaluating whether you have the right type of data for your modeling purpose
Auteur(s)
Guillaume, Joseph H.A.
Jakeman, John D.
Marsili-Libelli, Stefano
Asher, Michael
Croke, Barry
Hill, Mary C.
Jakeman, Anthony J.
Keesman, Karel J.
Razavi, Saman
Stigter, Johannes D.
Date de parution
2019-7
In
Environmental Modelling & Software
No
119
De la page
418
A la page
432
Revu par les pairs
1
Résumé
Identifiability is a fundamental concept in parameter estimation, and therefore key to the large majority of
environmental modeling applications. Parameter identifiability analysis assesses whether it is theoretically
possible to estimate unique parameter values from data, given the quantities measured, conditions present in the
forcing data, model structure (and objective function), and properties of errors in the model and observations. In
other words, it tackles the problem of whether the right type of data is available to estimate the desired parameter
values. Identifiability analysis is therefore an essential technique that should be adopted more routinely in
practice, alongside complementary methods such as uncertainty analysis and evaluation of model performance.
This article provides an introductory overview to the topic. We recommend that any modeling study should
document whether a model is non-identifiable, the source of potential non-identifiability, and how this affects
intended project outcomes.
environmental modeling applications. Parameter identifiability analysis assesses whether it is theoretically
possible to estimate unique parameter values from data, given the quantities measured, conditions present in the
forcing data, model structure (and objective function), and properties of errors in the model and observations. In
other words, it tackles the problem of whether the right type of data is available to estimate the desired parameter
values. Identifiability analysis is therefore an essential technique that should be adopted more routinely in
practice, alongside complementary methods such as uncertainty analysis and evaluation of model performance.
This article provides an introductory overview to the topic. We recommend that any modeling study should
document whether a model is non-identifiable, the source of potential non-identifiability, and how this affects
intended project outcomes.
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Type de publication
journal article
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