Welkom op het expertplatform!
Dit platform verschaft informatie en kennis omtrent de WL expertisedomeinen 'hydraulica en sediment', 'havens en waterwegen', 'waterbouwkundige constructies', 'waterbeheer' en 'kustbescherming' - gaande van WL medewerkers met hun expertise, het curriculum van deze instelling, tot publicaties, projecten, data (op termijn) en evenementen waarin het WL betrokken is.
Het WL onderschrijft het belang van "open access" voor de ontsluiting van haar onderzoeksresultaten. Lees er meer over in ons openaccessbeleid.
Impact of measurement error and limited data frequency on parameter estimation and uncertainty quantification
Khorashadi Zadeh, F.; Nossent, J.; Taddesse Woldegiorgis, B.; Bauwens, W.; Van Griensven, A. (2019). Impact of measurement error and limited data frequency on parameter estimation and uncertainty quantification. Environ. Model. Softw. 118: 35-47. https://dx.doi.org/10.1016/j.envsoft.2019.03.022
In: Environmental Modelling & Software. Elsevier: Oxford. ISSN 1364-8152; e-ISSN 1873-6726
| |
Author keywords |
Measurement uncertainty; Measurement frequency; Parameter estimation; Parameter uncertainty; Simulation uncertainty; DREAM(ZS) |
Auteurs | | Top |
- Khorashadi Zadeh, F.
- Nossent, J., meer
- Taddesse Woldegiorgis, B.
|
- Bauwens, W.
- Van Griensven, A.
|
|
Abstract |
Parameter estimation, using historical observed data, is an important part of the environmental modeling. The uncertainty in the parameter estimation limits the applications of environmental models. In this paper, the influence of limited and uncertain calibrated data on the performance of the parameter estimation are systematically investigated. For this purpose, synthetic observations with a given uncertainty and frequency are used to estimate the model parameters of a conceptual water quality (WQ) model of the River Zenne, Belgium. Bayesian inference using Markov Chain Monte Carlo sampling is adopted to simultaneously perform the automatic calibration and the uncertainty analysis. The results highlight the critical roles of measurement frequency and uncertainty in the model calibration. We found that the effect of the measurement uncertainty on the parameter estimation is significant when the calibrated data points are limited (e.g. monthly data). The research findings can be used to support measurement prioritization and resource allocation. |
IMIS is ontwikkeld en wordt gehost door het VLIZ.