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

机译:使用回归分析拟合沉积物等级曲线:以俄罗斯北极河为例

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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.
机译:已发布的北极河流悬浮泥沙数据很少。使用各种曲线拟合技术获得了俄罗斯北极地区三条中大型河流的悬浮泥沙定额曲线。由于抽样策略的偏误,原始数据集不显示对数正态分布,这限制了对数变换后的线性拟合的适用性。非线性(功率)模型系数是使用Levenberg-Marquardt,Nelder-Mead和Hooke-Jeeves算法估算的,所有这些算法通常都显示出密切的一致性。采用Levenberg-Marquardt参数评估算法的非线性功率模型被确定为该问题的最佳统计解决方案。通常,使用非线性功率模型估算的长期年度悬浮泥沙负荷与先前发表的结果一致。

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