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首页> 外文期刊>Quality Assurance >QUANTIFYING UNCERTAINTY: CALCULATING INTERVAL ESTIMATES USING QUALITY CONTROL RESULTS
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QUANTIFYING UNCERTAINTY: CALCULATING INTERVAL ESTIMATES USING QUALITY CONTROL RESULTS

机译:量化不确定性:使用质量控制结果计算间隔估计值

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摘要

EPA's Great Lakes National Program Office (GLNPO) is leading one of the most extensive studies of a lake ecosystem ever undertaken. The Lake Michigan Mass Balance Study (LMMB Study) is a coordinated effort among state, federal, and academic scientists to monitor tributary and atmospheric pollutant loads, develop source inventories of toxic substances, and evaluate the fate and effects of these pollutants in Lake Michigan. A key objective of the LMMB Study is to construct a mass balance model for several important contaminants in the environment: PCBs, atrazine, mercury, and trans-nonachlor. The mathematical mass balance models will provide a state-of-the-art tool for evaluating management scenarios and options for control of toxics in Lake Michigan. At the outset of the LMMB Study, managers recognized that the data gathered and the model developed from the study would be used extensively by data users responsible for making environmental, economic, and policy decisions. Environmental measurements are never true values and always contain some level of uncertainty. Decision makers, therefore, must recognize and be sufficiently comfortable with the uncertainty associated with data on which their decisions are based. The quality of data gathered in the LMMB was defined, controlled, and assessed through a variety of quality assurance (QA) activities, including QA program planning, development of QA project plans, implementation of a QA workgroup, training, data verification, and implementation of a standardized data reporting format. As part of this QA program, GLNPO has been developing quantitative assessments that define data quality at the data set level. GLNPO also is developing approaches to derive estimated concentration ranges (interval estimates) for specific field sample results (single study results) based on uncertainty. The interval estimates must be used with consideration to their derivation and the types of variability that are and are not included in the interval.
机译:EPA的大湖国家计划办公室(GLNPO)领导了有史以来对湖泊生态系统进行的最广泛的研究之一。密歇根湖的物质平衡研究(LMMB研究)是州,联邦和学术科学家之间的一项协调工作,旨在监测支流和大气污染物的负荷,建立有毒物质的源清单以及评估这些污染物在密歇根湖的命运和影响。 LMMB研究的主要目标是为环境中的几种重要污染物建立质量平衡模型:PCBs,at去津,汞和反式六氯。数学质量平衡模型将提供最先进的工具,用于评估密歇根湖的管理方案和控制毒物的选择。在LMMB研究开始之初,管理人员意识到,负责进行环境,经济和政策决策的数据用户将广泛使用从该研究中收集的数据和开发的模型。环境测量值永远不是真实值,并且始终包含一定程度的不确定性。因此,决策者必须认识到决策所依据的数据所带来的不确定性,并对其感到足够满意。通过各种质量保证(QA)活动来定义,控制和评估LMMB中收集的数据的质量,这些活动包括QA计划规划,QA项目计划的制定,QA工作组的实施,培训,数据验证和实施标准化的数据报告格式。作为此质量检查计划的一部分,GLNPO一直在开发定量评估,以定义数据集级别的数据质量。 GLNPO还正在开发基于不确定性得出特定田间样品结果(单个研究结果)的估计浓度范围(区间估计)的方法。在使用区间估计值时,必须考虑其推导以及区间中是否包括的可变性类型。

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