2011
DOI: 10.1002/esp.2133
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Combining suspended sediment monitoring and fingerprinting to determine the spatial origin of fine sediment in a mountainous river catchment

Abstract: International audienceAn excess of fine sediment (grain size <2 mm) supply to rivers leads to reservoir siltation, water contamination and operational problems for hydroelectric power plants in many catchments of the world, such as in the French Alps. These problems are exacerbated in mountainous environments characterized by large sediment exports during very short periods. This study combined river flow records, sediment geochemistry and associated radionuclide concentrations as input properties to a Monte C… Show more

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Cited by 90 publications
(77 citation statements)
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“…Most procedures involve an optimisation procedure based on minimisation of an objective function reflecting the difference between the measured property values associated with the sample mixture and those predicted by the mixing model for a given set of relative source contributions. In other studies, the objective function is based on the sum of squares of the relative errors and several variants of this objective function have been proposed (e.g., Motha et al, 2003Motha et al, , 2004Hughes et al, 2009;Evrard et al, 2011;Navratil et al, 2012). In this study the predicted relative apportionments from each mass balance equation were solved minimising two objective functions and a goodness of fit (GOF) was obtained for each option.…”
Section: Estimation Of Source Contributionmentioning
confidence: 99%
“…Most procedures involve an optimisation procedure based on minimisation of an objective function reflecting the difference between the measured property values associated with the sample mixture and those predicted by the mixing model for a given set of relative source contributions. In other studies, the objective function is based on the sum of squares of the relative errors and several variants of this objective function have been proposed (e.g., Motha et al, 2003Motha et al, , 2004Hughes et al, 2009;Evrard et al, 2011;Navratil et al, 2012). In this study the predicted relative apportionments from each mass balance equation were solved minimising two objective functions and a goodness of fit (GOF) was obtained for each option.…”
Section: Estimation Of Source Contributionmentioning
confidence: 99%
“…Collins et al, 2010a;Evrard et al, 2011;Owens et al, 2000;Franz et al, 2013). The method has been used in a wide range of objectives, scales, types and number of sources, and tracer variables (Ben Slimane et al, 2013;Tiecher et al, 2015;Zebracki et al, 2015).…”
Section: The Contextmentioning
confidence: 99%
“…A detailed description of this procedure is provided by Evrard et al . (). To characterise the properties of both groups of sources, we assumed that their concentrations ( c i , j ) could be represented by a normal distribution (Equation .…”
Section: Methodsmentioning
confidence: 97%