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A practical approach to improve the statistical performance of surface water monitoring networks

机译:一种改善地表水监测网络统计性能的实用方法

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The representativeness of aquatic ecosystem monitoring and the precision of the assessment results are of high importance when implementing the EU's Water Framework Directive that aims to secure a good status of waterbodies in Europe. However, adapting monitoring designs to answer the objectives and allocating the sampling resources effectively are seldom practiced. Here, we present a practical solution how the sampling effort could be re-allocated without decreasing the precision and confidence of status class assignment. For demonstrating this, we used a large data set of 272 intensively monitored Finnish lake, coastal, and river waterbodies utilizing an existing framework for quantifying the uncertainties in the status class estimation. We estimated the temporal and spatial variance components, as well as the effect of sampling allocation to the precision and confidence of chlorophyll-a and total phosphorus. Our results suggest that almost 70% of the lake and coastal waterbodies, and 27% of the river waterbodies, were classified without sufficient confidence in these variables. On the other hand, many of the waterbodies produced unnecessary precise metric means. Thus, reallocation of sampling effort is needed. Our results show that, even though the studied variables are among the most monitored status metrics, the unexplained variation is still high. Combining multiple data sets and using fixed covariates would improve the modeling performance. Our study highlights that ongoing monitoring programs should be evaluated more systematically, and the information from the statistical uncertainty analysis should be brought concretely to the decision-making process.
机译:在实施欧盟的水框架指令时,水生生态系统监测和评估结果的精度具有很高的重要性,该指令旨在确保欧洲的良好水平的水平。然而,调整监视设计以应对目标并有效地分配采样资源很少实践。在这里,我们提出了一种实用的解决方案,如何重新分配采样努力,而不会降低状态类分配的精度和置信度。为了展示这一点,我们使用了一个大型数据集,其中272份集中监测芬兰湖,沿海和河水平台,利用现有框架来量化状态类估计中的不确定性。我们估计了时间和空间方差分量,以及采样分配对叶绿素-A和总磷的精度和置信的影响。我们的结果表明,近70%的湖泊和沿海水上水平和27%的河流水平被分类,没有足够的信心这些变量。另一方面,许多Waterbodies产生了不必要的精确度量手段。因此,需要重新分配采样努力。我们的结果表明,即使研究的变量是最受监控的状态指标之一,也是未解释的变化仍然很高。组合多个数据集和使用固定协变量将提高建模性能。我们的研究强调,应更系统地评估正在进行的监测计划,以及统计不确定性分析中的信息应具体地提交决策过程。

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