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CUMULATIVE UNCERTAINTY IN MEASURED STREAMFLOW AND WATER QUALITY DATA FOR SMALL WATERSHEDS

机译:小流域测得的径流和水质数据的累积不确定性

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摘要

The scientific community has not established an adequate understanding of the uncertainty inherent in measured water quality data, which is introduced by four procedural categories: streamflow measurement, sample collection, sample preservation/storage, and laboratory analysis. Although previous research has produced valuable information on relative differences in procedures within these categories, little information is available that compares the procedural categories or presents the cumulative uncertainty in resulting water quality data. As a result, quality control emphasis is often misdirected, and data uncertainty is typically either ignored or accounted for with an arbitrary margin of safety. Faced with the need for scientifically defensible estimates of data uncertainty to support water resource management, the objectives of this research were to: (1) compile selected published information on uncertainty related to measured streamflow and water quality data for small watersheds, (2) use a root mean square error propagation method to compare the uncertainty introduced by each procedural category, and (3) use the error propagation method to determine the cumulative probable uncertainty in measured streamflow, sediment, and nutrient data. Best case, typical, and worst case "data quality" scenarios were examined. Averaged across all constituents, the calculated cumulative probable uncertainty (± %) contributed under typical scenarios ranged from 6% to 19% for streamflow measurement, from 4% to 48% for sample collection, from 2% to 16% for sample preservation/storage, and from 5% to 21% for laboratory analysis. Under typical conditions, errors in storm loads ranged from 8% to 104% for dissolved nutrients, from 8% to 110% for total N and P, and from 7% to 53% for TSS. Results indicated that uncertainty can increase substantially under poor measurement conditions and limited quality control effort. This research provides introductory scientific estimates of uncertainty in measured water quality data. The results and procedures presented should also assist modelers in quantifying the "quality" of calibration and evaluation data sets, determining model accuracy goals, and evaluating model performance.
机译:科学界对水质测量数据固有的不确定性还没有足够的了解,这由四个程序类别引入:流量测量,样品收集,样品保存/存储和实验室分析。尽管先前的研究已经产生了有关这些类别中程序相对差异的有价值的信息,但是几乎没有可用的信息来比较程序类别或呈现出最终水质数据中的累积不确定性。结果,质量控制的重点常常被误导,并且数据不确定性通常被忽略或以任意的安全裕度来考虑。面对需要科学合理的数据不确定性估算来支持水资源管理的需求,本研究的目标是:(1)汇编有关与小流域测得的流量和水质数据相关的不确定性的选定公开信息,(2)使用均方根误差传播方法用于比较每种程序类别引入的不确定性,并且(3)使用误差传播方法来确定测得的流量,沉积物和养分数据中的累积可能不确定性。研究了最佳情况,典型情况和最坏情况的“数据质量”方案。对所有成分取平均值,在典型情况下,计算出的累积概率不确定性(±%)对流量测量的影响范围为6%到19%,对于样品收集为4%到48%,对于样品保存/存储为2%到16% ,从5%到21%用于实验室分析。在典型条件下,风暴负荷中溶解性养分的误差范围为8%至104%,总氮和磷的范围为8%至110%,TSS的范围为7%至53%。结果表明,在不良的测量条件和有限的质量控制努力下,不确定性会大大增加。这项研究提供了测量水质数据不确定性的入门科学估算。提出的结果和程序还应该帮助建模人员量化校准和评估数据集的“质量”,确定模型精度目标以及评估模型性能。

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