Fitting sediment rating curves using regression analysis: A case study of Russian Arctic rivers

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Abstract

Published suspended sediment data for Arctic rivers is scarce. Suspended sediment rating curves for three medium to large rivers of the Russian Arctic were obtained using various curve-fitting techniques. Due to the biased sampling strategy, the raw datasets do not exhibit log-normal distribution, which restricts the applicability of a log-transformed linear fit. Non-linear (power) model coefficients were estimated using the Levenberg-Marquardt, Nelder-Mead and Hooke-Jeeves algorithms, all of which generally showed close agreement. A non-linear power model employing the Levenberg-Marquardt parameter evaluation algorithm was identified as an optimal statistical solution of the problem. Long-term annual suspended sediment loads estimated using the non-linear power model are, in general, consistent with previously published results.

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APA

Tananaev, N. I. (2014). Fitting sediment rating curves using regression analysis: A case study of Russian Arctic rivers. In IAHS-AISH Proceedings and Reports (Vol. 367, pp. 193–198). Copernicus GmbH. https://doi.org/10.5194/piahs-367-193-2015

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