2014
DOI: 10.1016/j.jhydrol.2013.11.016
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Combining hydraulic knowledge and uncertain gaugings in the estimation of hydrometric rating curves: A Bayesian approach

Abstract: Discharge time series in rivers and streams are usually based on simple stage-discharge relations calibrated using a set of direct stage-discharge measurements called gaugings. Bayesian inference recently emerged as a most promising framework to build such hydrometric rating curves accurately and to estimate the associated uncertainty. In addition to providing the rigorous statistical framework necessary to uncertainty analysis, the main advantage of the Bayesian analysis of rating curves arises from the quant… Show more

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Cited by 160 publications
(151 citation statements)
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“…The respective metering data are included in the database. Associated measurement uncertainties were estimated based on recommendations from multiple sources (Le Coz et al, 2014;Pelletier, 1988;Westerberg et al, 2011; see the Supplement for details). Table 2 lists the number of discharge meterings available for each river gauge.…”
Section: Discharge Meteringmentioning
confidence: 99%
See 1 more Smart Citation
“…The respective metering data are included in the database. Associated measurement uncertainties were estimated based on recommendations from multiple sources (Le Coz et al, 2014;Pelletier, 1988;Westerberg et al, 2011; see the Supplement for details). Table 2 lists the number of discharge meterings available for each river gauge.…”
Section: Discharge Meteringmentioning
confidence: 99%
“…For the catchment outlet, water level is converted into discharge by means of the water stage-discharge rating curve developed by the authors (for more information, see López-Tarazón et al, 2010), which included the effect of the high suspended sediment concentrations that usually flow through the cross section (hence likely decreasing turbulence, thus providing a higher discharge at the same water level in comparison to clean water). For the sub-catchments, these meterings were used to construct rating curves using Bayesian curve fitting (BaratinAGE, version 2.1, Le Coz et al, 2014) and to derive the time series of discharge from the water stage series (see Sect. 3.2.1).…”
Section: Discharge Meteringmentioning
confidence: 99%
“…The respective metering data are included in the database. Associated measurement uncertainties were estimated based on recommendations from multiple sources (Le Coz et al, 2014;Pelletier, 1988;Westerberg et al, 2011).…”
Section: Discharge Meteringmentioning
confidence: 99%
“…For the sub-catchments, these meterings were used to construct rating curves using the Bayesian curve fitting (BaratinAGE, vers. 2.1, Le Coz et al, 2014) and to derive the time series of discharge from 10 the water stage series (see 3.2.1). This procedure additionally yielded the associated 95%-confidence interval CI (for water stage and the parametric uncertainty).…”
mentioning
confidence: 99%
“…For all other analyzed stations (except from the station of Clog-y-Fran, UK), a segmented rating curve with two segments is used (e.g., Reitan and Petersen-Øverleir, 2008;Le Coz et al, 2014;McMillan and Westerberg, 2015):…”
mentioning
confidence: 99%