2015
DOI: 10.5194/hess-19-3239-2015
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Flood and drought hydrologic monitoring: the role of model parameter uncertainty

Abstract: Abstract. Land surface modeling, in conjunction with numerical weather forecasting and satellite remote sensing, is playing an increasing role in global monitoring and prediction of extreme hydrologic events (i.e., floods and droughts). However, uncertainties in the meteorological forcings, model structure, and parameter identifiability limit the reliability of model predictions. This study focuses on the latter by assessing two potential weaknesses that emerge due to limitations in our global runoff observati… Show more

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Cited by 56 publications
(53 citation statements)
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“…For each model, a representative set of parameters that capture the essential hydro-climatological features was iden-tified. A large range of parameters was sampled using a Sobol-based Latin hypercube sample: 17 parameters for VIC (Demaria et al, 2007;Chaney et al, 2015;Melsen et al, 2016;Mendoza et al, 2015b), 18 parameters for SAC (Newman et al, 2015;Lhomme, 1997), and 15 for HBV (Parajka et al, 2007;Uhlenbrook et al, 1999;Abebe et al, 2010). Physically realistic parameter boundaries were determined, based on the literature: see Tables C1-C3.…”
Section: Hydrologiska Byråns Vattenbalansavdelning Model (Hbv)mentioning
confidence: 99%
“…For each model, a representative set of parameters that capture the essential hydro-climatological features was iden-tified. A large range of parameters was sampled using a Sobol-based Latin hypercube sample: 17 parameters for VIC (Demaria et al, 2007;Chaney et al, 2015;Melsen et al, 2016;Mendoza et al, 2015b), 18 parameters for SAC (Newman et al, 2015;Lhomme, 1997), and 15 for HBV (Parajka et al, 2007;Uhlenbrook et al, 1999;Abebe et al, 2010). Physically realistic parameter boundaries were determined, based on the literature: see Tables C1-C3.…”
Section: Hydrologiska Byråns Vattenbalansavdelning Model (Hbv)mentioning
confidence: 99%
“…", and the calibration problem: "I know the output I want, which parameters should I change and how much should I change them?") (Chaney et al, 2015;. While the user of a DPHM can do nothing about the complexity of the model's internal structure, the apparent complexity can be reduced by limiting the parameters and the affected output under consideration (as described by Jakeman and Hornberger, 1993;.…”
Section: Introductionmentioning
confidence: 99%
“…Identification and simulation of regional CONUS sub-watersheds are determined by the resolution of the available information and how the DPHM responds to geophysical (e.g., topography, vegetation and soils) and climatological variation. Specifically, we propose to identify the sensitive parameters and dominant hydrologic process(es), thereby reducing the amount of parameter input and number of output variables to consider (Chaney et al, 2015) and address the two aspects of complexity as described above.…”
Section: Introductionmentioning
confidence: 99%
“…Errors in these complex processes lead to uncertainty in the data (Chaney et al, 2015). Uncertainties in hydrology and NPS modelling are classified as either measurement uncertainty or prediction uncertainty Di Baldassarre and Montanari, 2009).…”
Section: Introductionmentioning
confidence: 99%