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Data-driven model uncertainty estimation in hydrologic data assimilation

  • The increasing availability of earth observations necessitates mathematical methods to optimally combine such data with hydrologic models. Several algorithms exist for such purposes, under the umbrella of data assimilation (DA). However, DA methods are often applied in a suboptimal fashion for complex real-world problems, due largely to several practical implementation issues. One such issue is error characterization, which is known to be critical for a successful assimilation. Mischaracterized errors lead to suboptimal forecasts, and in the worst case, to degraded estimates even compared to the no assimilation case. Model uncertainty characterization has received little attention relative to other aspects of DA science. Traditional methods rely on subjective, ad hoc tuning factors or parametric distribution assumptions that may not always be applicable. We propose a novel data-driven approach (named SDMU) to model uncertainty characterization for DA studies where (1) the system states are partially observed and (2) minimal priorThe increasing availability of earth observations necessitates mathematical methods to optimally combine such data with hydrologic models. Several algorithms exist for such purposes, under the umbrella of data assimilation (DA). However, DA methods are often applied in a suboptimal fashion for complex real-world problems, due largely to several practical implementation issues. One such issue is error characterization, which is known to be critical for a successful assimilation. Mischaracterized errors lead to suboptimal forecasts, and in the worst case, to degraded estimates even compared to the no assimilation case. Model uncertainty characterization has received little attention relative to other aspects of DA science. Traditional methods rely on subjective, ad hoc tuning factors or parametric distribution assumptions that may not always be applicable. We propose a novel data-driven approach (named SDMU) to model uncertainty characterization for DA studies where (1) the system states are partially observed and (2) minimal prior knowledge of the model error processes is available, except that the errors display state dependence. It includes an approach for estimating the uncertainty in hidden model states, with the end goal of improving predictions of observed variables. The SDMU is therefore suited to DA studies where the observed variables are of primary interest. Its efficacy is demonstrated through a synthetic case study with low-dimensional chaotic dynamics and a real hydrologic experiment for one-day-ahead streamflow forecasting. In both experiments, the proposed method leads to substantial improvements in the hidden states and observed system outputs over a standard method involving perturbation with Gaussian noise.zeige mehrzeige weniger

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Metadaten
Verfasserangaben:Sahani Darschika PathirajaORCiD, H. Moradkhani, L. Marshall, Ashish SharmaORCiD, G. Geenens
DOI:https://doi.org/10.1002/2018WR022627
ISSN:0043-1397
ISSN:1944-7973
Titel des übergeordneten Werks (Englisch):Water resources research : WRR / American Geophysical Union
Verlag:American Geophysical Union
Verlagsort:Washington
Publikationstyp:Wissenschaftlicher Artikel
Sprache:Englisch
Datum der Erstveröffentlichung:26.02.2018
Erscheinungsjahr:2018
Datum der Freischaltung:02.02.2022
Freies Schlagwort / Tag:data assimilation; model error; nonparametric statistics; particle filter; uncertainty quantification
Band:54
Ausgabe:2
Seitenanzahl:29
Erste Seite:1252
Letzte Seite:1280
Fördernde Institution:Australian Research Council Australian Research Council [DP140102394]; Deutsche Forschungsgemeinschaft (DFG)German Research Foundation (DFG) [CRC 1294]; [FT120100269]
Organisationseinheiten:Mathematisch-Naturwissenschaftliche Fakultät / Institut für Mathematik
DDC-Klassifikation:5 Naturwissenschaften und Mathematik / 51 Mathematik / 510 Mathematik
Peer Review:Referiert
Publikationsweg:Open Access / Bronze Open-Access
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