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Optimizing the flow adjustment of constituent concentrations via LOESS for trend analysis

机译:通过LOESS优化成分浓度的流量调节以进行趋势分析

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Trend analysis of stream constituent concentrations requires adjustment for exogenous variables like discharge because concentrations often have variable relations with flow. To remove the influence of flow on stream water quality data, an accurate characterization of the relationship between the constituent and streamflow is needed. One popular method, locally weighted regression (LOESS), provides an effective means for flow-adjusting concentrations. The LOESS fit can be tailored to the data via the smoothing parameter (f), so that the user can avoid overfitting or oversmoothing the data. However, it is a common practice to use a single f value when flow-adjusting water quality data for trend analysis. This study provides a robust, automated method for determining the optimal f value (f(opt) ) for each dataset via an iterative K-fold cross-validation procedure that minimizes prediction error in LOESS. The method is developed by analyzing &tacos of seven different constituents across 17 sites (119 datasets total) from a stream monitoring program in northwest Arkansas (USA). We recommend using 10 iterations of 10-fold cross-validation (10 x 10 CV) in order to select f(opt) when flow-adjusting water quality data with LOESS. The use of a default f value did not produce different trend interpretations for the data used here; however, the proposed approach may be helpful in other water quality studies which employ similar statistical fitting methods. Additionally, we provide an implementation of the method in the R statistical computing environment.
机译:对流成分浓度的趋势分析需要调整诸如排放之类的外在变量,因为浓度通常与流量具有可变关系。为了消除流量对溪流水质数据的影响,需要准确表征组分与溪流之间的关系。一种流行的方法是局部加权回归(LOESS),它提供了一种有效的流量调节浓度方法。可以通过平滑参数(f)为数据定制LOESS拟合,以便用户避免数据过度拟合或过度平滑。但是,通常的做法是在流量调节水质数据进行趋势分析时使用单个f值。这项研究提供了一种强大的自动化方法,可通过迭代K折交叉验证程序确定每个数据集的最佳f值(f(opt)),以使LOESS的预测误差最小。该方法是通过分析来自美国阿肯色州西北部河流监测程序的17个站点(总共119个数据集)中的七个不同成分的数据而开发的。我们建议使用10倍交叉验证(10 x 10 CV)的10次迭代,以便在用LOESS进行流量调节水质数据时选择f(opt)。使用默认的f值不会对此处使用的数据产生不同的趋势解释。但是,建议的方法可能对采用类似统计拟合方法的其他水质研究有所帮助。此外,我们在R统计计算环境中提供了该方法的实现。

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