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An approach for decomposing river water-quality trends into different flow classes

机译:一种分解河水水质趋势的方法,进入不同流量等级

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A number of statistical approaches have been developed to quantify the overall trend in river water quality, but most approaches are not intended for reporting separate trends for different flow conditions. We propose an approach called FN_(2Q), which is an extension of the flow-normalization (FN) procedure of the well-established WRTDS ("Weighted Regressions on Time, Discharge, and Season") method. The FN_(2Q) approach provides a daily time series of low-flow and high-flow FN flux estimates that represent the lower and upper half of daily riverflow observations that occurred on each calendar day across the period of record. These daily estimates can be summarized into any time period of interest (e.g., monthly, seasonal, or annual) for quantifying trends. The proposed approach is illustrated with an application to a record of total nitrogen concentration (632 samples) collected between 1985 and 2018 from the South Fork Shenandoah River at Front Royal, Virginia (USA). Results show that the overall FN flux of total nitrogen has declined in the period of 1985-2018, which is mainly attributable to FN flux decline in the low-flow class. Furthermore, the decline in the low-flow class was highly correlated with wastewa-ter effluent loads, indicating that the upgrades of treatment technology at wastewater treatment facilities have likely led to water-quality improvement under low-flow conditions. The high-flow FN flux showed a spike around 2007, which was likely caused by increased delivery of paniculate nitrogen associated with sediment transport. The case study demonstrates the utility of the FN_(2Q) approach toward not only characterizing the changes in river water quality but also guiding the direction of additional analysis for capturing the underlying drivers. The FN_(2Q) approach (and the published code) can easily be applied to widely available river monitoring records to quantify water-quality trends under different flow conditions to enhance understanding of river water-quality dynamics.
机译:已经制定了许多统计方法来量化河水质量的整体趋势,但大多数方法都不用于报告不同流动条件的单独趋势。我们提出了一种称为FN_(2Q)的方法,该方法是良好建立的WRTD的流正常化(FN)程序的扩展(“对时,放电和季节”的加权回归)方法。 FN_(2Q)方法提供了日常时间序列的低流量和高流量FN通量估计,其代表每日恶流观测的下半年和上半部分在记录期间每个日历日发生。这些日常估计可以概括为量化趋势的任何时间(例如,每月,季节性或年度)。所提出的方法被应用于1985年至2018年间从弗吉尼亚州前皇家(美国)的南叉雪南河至2018年间收集的总氮浓度(632个样品)的记录。结果表明,1985 - 2018年,总氮的总体FN通量下降,主要是由于低流量级别的FN通量下降。此外,低流量阶级的下降与废气流出载荷高度相关,表明废水处理设施的治疗技术升级可能导致水质改善在低流量条件下。高流量FN通量显示2007年峰值,这可能是由于增加与沉积物传输相关的含有氮的递送而导致的。案例研究表明,FN_(2Q)方法不仅表征河水质量的变化,而且指导捕捉潜在司机的额外分析方向的效用。 FN_(2Q)方法(和已发布的代码)可以很容易地应用于广泛可用的河流监测记录,以在不同的流动条件下量化水质趋势,以提高河流水质动态的理解。

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