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国际森林空气污染影响评估与监测合作计划(ICP-Forests):植物多样性监测中的质量保证程序

ICP-Forests (International Co-operative Programme on Assessment and Monitoring of Air Pollution Effects on Forests): Quality Assurance procedure in plant diversity monitoring.

作者信息

Allegrini Maria-Cristina, Canullo Roberto, Campetella Giandiego

机构信息

Univerity of Camerino, Dept. of Environmental Science, Sect. of Botany and Ecology, Camerino, MC, Italy.

出版信息

J Environ Monit. 2009 Apr;11(4):782-7. doi: 10.1039/b818170p. Epub 2009 Mar 3.

Abstract

Knowledge of accuracy and precision rates is particularly important for long-term studies. Vegetation assessments include many sources of error related to overlooking and misidentification, that are usually influenced by some factors, such as cover estimate subjectivity, observer biased species lists and experience of the botanist. The vegetation assessment protocol adopted in the Italian forest monitoring programme (CONECOFOR) contains a Quality Assurance programme. The paper presents the different phases of QA, separates the 5 main critical points of the whole protocol as sources of random or systematic errors. Examples of Measurement Quality Objectives (MQOs) expressed as Data Quality Limits (DQLs) are given for vascular plant cover estimates, in order to establish the reproducibility of the data. Quality control activities were used to determine the "distance" between the surveyor teams and the control team. Selected data were acquired during the training and inter-calibration courses. In particular, an index of average cover by species groups was used to evaluate the random error (CV 4%) as the dispersion around the "true values" of the control team. The systematic error in the evaluation of species composition, caused by overlooking or misidentification of species, was calculated following the pseudo-turnover rate; detailed species censuses on smaller sampling units were accepted as the pseudo-turnover which always fell below the 25% established threshold; species density scores recorded at community level (100 m(2) surface) rarely exceeded that limit.

摘要

对于长期研究而言,了解准确率和精密度尤为重要。植被评估包含许多与遗漏和误认相关的误差来源,这些误差通常受一些因素影响,如覆盖度估计的主观性、观察者有偏差的物种清单以及植物学家的经验。意大利森林监测计划(CONECOFOR)采用的植被评估方案包含一个质量保证计划。本文介绍了质量保证的不同阶段,将整个方案的5个主要关键点区分为随机误差或系统误差的来源。针对维管束植物覆盖度估计,给出了以数据质量限值(DQL)表示的测量质量目标(MQO)示例,以确定数据的可重复性。质量控制活动用于确定测量团队与控制团队之间的“距离”。在培训和相互校准课程期间获取选定的数据。特别是,使用按物种组划分的平均覆盖度指数来评估作为控制团队“真实值”周围离散度的随机误差(变异系数4%)。由物种遗漏或误认导致的物种组成评估中的系统误差,按照伪周转率计算;在较小采样单元上进行的详细物种普查被视为伪周转率,其始终低于设定的25%阈值;在群落水平(100平方米面积)记录的物种密度得分很少超过该限值。

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