Model parameter estimation with imprecise information

Model parameter estimation is a well-known inverse problem, as long as single-value point data are available as observations of system performance measurement. However, classical statistical methods, such as the minimization of an objective function or maximum likelihood, are no longer straightforwa...

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Veröffentlicht in:Water science and technology 2024-07, Vol.90 (1), p.156-167
Hauptverfasser: Rauch, Wolfgang, Rauch, Nikolaus, Kleidorfer, Manfred
Format: Artikel
Sprache:eng
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Zusammenfassung:Model parameter estimation is a well-known inverse problem, as long as single-value point data are available as observations of system performance measurement. However, classical statistical methods, such as the minimization of an objective function or maximum likelihood, are no longer straightforward, when measurements are imprecise in nature. Typical examples of the latter include censored data and binary information. Here, we explore Approximate Bayesian Computation as a simple method to perform model parameter estimation with such imprecise information. We demonstrate the method for the example of a plain rainfall-runoff model and illustrate the advantages and shortcomings. Last, we outline the value of Shapley values to determine which type of observation contributes to the parameter estimation and which are of minor importance.
ISSN:0273-1223
1996-9732
DOI:10.2166/wst.2024.197