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首页> 外文期刊>Ecological indicators >Robustness of the biotic indicators used for classification of ecological status of lotic water bodies: A testing method when the data series are short
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Robustness of the biotic indicators used for classification of ecological status of lotic water bodies: A testing method when the data series are short

机译:用于水质水体生态状态分类的生物指标的稳健性:数据序列短时的一种测试方法

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摘要

Successful implementation of the Water Framework Directive and achieving its objective of good ecological status of all water bodies depend on the power of the set of monitoring indicators to capture the change in the ecological status of aquatic systems. In this context, testing the robustness and sensitivity of ecological indicators currently used for assessing the status of lotic water bodies is instrumental for the adaptation and further development of assessment methods. This is also a prerequisite for an effective, context-based monitoring system and for improving the quality of the decision making for water bodies. This is particularly challenging in regions where the sets of indicators are under development, the data series are relatively short and data which addresses the individual error sources are lacking. Here we show that hierarchical clusters and ordination analysis provide appropriate tools with which the validity of the ecological status of water bodies set up based on biological multimetric monitoring indices in a small water basin could be tested. We hypothesize that robust and informative monitoring methods classify all water bodies belonging to a single ordination grouping in the same quality class (high, good, moderate, poor or bad). In our case study multimetric biological indicators failed to discriminate between the good and moderate ecological status. Community structure as well as water conductivity and nitrate load were primarily responsible for the observed difference between ordination groupings. Inconsistencies shown in our case study are likely to be induced by insufficient refinement of monitoring schemes and by the constraints existing in the data series and available metadata. We show that multiplication of indicators leads to discrepant interpretation and problematic application. Proposed ordination analysis proves to be a simple and useful tool to detect such discrepancies and support further progress in indicator development. Integrated and longer data and metadata series are needed to refine context-based monitoring methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:成功实施《水框架指令》并实现其所有水体良好生态状况的目标,取决于一套监测指标的力量来捕捉水生系统生态状况的变化。在这种情况下,测试目前用于评估水域水体状况的生态指标的鲁棒性和敏感性,对适应和进一步发展评估方法至关重要。这也是建立有效的,基于情境的监测系统以及提高水体决策质量的前提。这在一些指标集正在开发,数据系列相对较短且缺乏处理单个错误源的数据的地区尤其具有挑战性。在这里,我们表明,层次聚类和排序分析提供了适当的工具,利用这些工具可以检验基于生物多指标监测指标的小流域建立的水体生态状况的有效性。我们假设健壮且信息丰富的监测方法将属于同一等级分组的所有水体归类为同一质量等级(高,好,中,差或差)。在我们的案例研究中,多指标生物学指标未能区分良好和中等生态状况。群落结构以及水的电导率和硝酸盐负荷是造成排序组之间差异的主要原因。我们的案例研究中显示的不一致很可能是由于监控方案的改进不够充分以及数据系列和可用元数据中存在的限制所致。我们表明,指标的相乘会导致差异解释和有问题的应用。拟议的协调分析证明是检测此类差异并支持指标开发进一步进展的简单有效工具。需要集成且更长的数据和元数据系列来完善基于上下文的监视方法。 (C)2016 Elsevier Ltd.保留所有权利。

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