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The Scale Matcher: a procedure for assessing scale compatibility of spatial data and models

机译:比例尺匹配器:一种评估空间数据和模型的比例尺兼容性的过程

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It is becoming easier to combine environmental data and models to provide information for problem-solving by environmental policy analysts, decision-makers, and land managers. However, the scale dependencies of each of these (data, model, and problem) can mean that the resulting information is misleading or even invalid. This paper describes the development of a systematic framework (dubbed the 'Scale Matcher') for identifying and matching the scale requirements of a problem with the scale limitations of spatial data and models. The Scale Matcher framework partitions the complex array of scale issues into more manageable components that can be individually quantified. First, the scale characteristics of data, model, and problem are separated into their scale components of extent, accuracy, and precision, and each is associated with suitable metrics. Second, a comprehensive set of pairwise matches between these components is defined. Third, a procedure is devised to lead the user through a process of systematically comparing or matching each scale component. In some cases, the matches are simple comparisons of the relevant metrics. Others require the combination of data variability and model sensitivity to be investigated by randomly simulating data and model imprecision and inaccuracy. Finally, a conclusion is drawn as to the scale compatibility of the Data-Model-Problem trio based on the overall procedure result. Listing the individual match results as a set of scale assumptions helps to draw attention to them, making users more aware of the limitations of spatial modelling. Application of the Scale Matcher is briefly illustrated with a case study, in which the scale suitability of two sources of soil map data for identifying areas of vulnerability to groundwater pollution was tested. The Scale Matcher showed that one source of soil map data had unacceptable scale characteristics, and the other was marginal for addressing the problem of nitrate leaching vulnerability. The scale-matching framework successfully partitioned the scale issue into a series of more manageable comparisons and gave the user more confidence in the scale validity of the model output.
机译:合并环境数据和模型以提供信息以解决环境政策分析师,决策者和土地经理的问题变得越来越容易。但是,每个这些因素(数据,模型和问题)的规模依存关系可能意味着所得到的信息具有误导性,甚至是无效的。本文描述了系统框架(称为“尺度匹配器”)的开发,该框架用于识别和匹配具有空间数据和模型的尺度限制的问题的尺度要求。规模匹配器框架将规模问题的复杂阵列划分为可以单独量化的更易于管理的组件。首先,将数据,模型和问题的规模特征分为范围,准确性和精度的规模分量,并将每个分量与适当的度量标准关联。其次,定义了这些组件之间的全面的成对匹配集。第三,设计一种程序来引导用户完成系统地比较或匹配每个比例尺组件的过程。在某些情况下,匹配是相关指标的简单比较。其他要求通过随机模拟数据和模型的不精确性和不准确性来研究数据可变性和模型敏感性的结合。最后,根据总体过程结果,得出了数据模型问题三重奏的规模兼容性的结论。将单个匹配结果列出为一组比例假设有助于吸引他们的注意,使用户更加意识到空间建模的局限性。案例研究简要说明了比例尺匹配器的应用,在该案例中,测试了两种土壤图数据源的比例尺适用性,以识别易受地下水污染的区域。比例尺匹配器显示,土壤地图数据的一种来源具有不可接受的比例尺特征,而另一种对于解决硝酸盐浸出脆弱性的问题是微不足道的。比例尺匹配框架成功地将比例尺问题划分为一系列更易于管理的比较,并使用户对模型输出的比例尺有效性更有信心。

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