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Monte-Carlo methods to assess the uncertainty related to the use of predictive multimetric indices

机译:蒙特卡洛方法,用于评估与使用预测性多指标指标相关的不确定性

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摘要

The publication of the Water Framework Directive by the European commission in 2000 has promoted the development of many multimetric biological indices to assess the ecological status of European waterbodies. These ecological assessments are based on the measurement of deviations between a metric’s (characteristic of assemblages) observed values (obtained by sampling) and a metric’s expected values in the absence of anthropogenic stressors (reference conditions). In addition, the confidence in the ecological status evaluation provided by the different biological indices is required. Numerous sources of uncertainty due to sampling variability or operator bias, for example, are often considered on observed metric values, whereas uncertainty associated with expected metric values are seldom discussed. In this study, we developed a methodology based on Monte-Carlo methods to assess the uncertainty associated with the establishment of reference values for multimetric predictive indices. This was done by randomly generating reference values and propagating the uncertainty throughout the computation of the index. This methodology can be applied to a wide variety of indices as long as it is possible to make assumptions about the statistical distributions of some of the index’s numerical components (e.g. coefficients of the statistical models, metric values). The European Lake Fish Index was used to illustrate the methodology and show how this method can provide valuable information on the confidence in the ecological status defined by the index. These results also revealed that the degree of uncertainty varied between the ecological classes, which were highest for the “Moderate” class and lowest for the “Poor” and “High” classes for the ELFI.
机译:欧洲委员会于2000年发布的《水框架指令》促进了许多用于评估欧洲水体生态状况的多指标生物指标的发展。这些生态评估的依据是在没有人为压力源(参考条件)的情况下,度量(集合特征)的观测值(通过采样获得)与度量的期望值之间的偏差。此外,还需要对不同生物指标提供的生态状况评估的信心。例如,通常在观察到的度量值上考虑由于采样变异性或操作者偏见而导致的许多不确定性来源,而很少讨论与预期度量值相关的不确定性。在这项研究中,我们开发了一种基于蒙特卡洛方法的方法,以评估与建立多指标预测指标参考值相关的不确定性。这是通过随机生成参考值并在整个索引计算过程中传播不确定性来完成的。只要可以对某些指数的数字成分(例如统计模型的系数,度量值)的统计分布做出假设,则该方法可以应用于各种指数。欧洲湖鱼指数用于说明该方法,并说明该方法如何提供有关该指数定义的生态状况可信度的有价值的信息。这些结果还表明,不确定性程度在生态类别之间有所不同,对于ELFI,“中等”类别最高,而“弱”和“高”类别最低。

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