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An effective assessment protocol for continuous geospatial datasets of forest characteristics using USFS Forest Inventory and Analysis (FIA) data

机译:使用USFS森林清单和分析(FIA)数据的森林特征连续地理空间数据集的有效评估协议

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摘要

Geospatial datasets of forest characteristics are modeled representations of real populations on the ground. The continuous spatial character of such datasets provides an incredible source of information at the landscape level for ecosystem research, policy analysis, and planning applications, all of which are critical for addressing current challenges related to climate change, urbanization pressures, and data requirements for monitoring carbon sequestration. However, the effectiveness of these applications is dependent upon the accuracy of the geospatial input datasets. A comprehensive set of robust measures is necessary to provide sufficient information to effectively assess the accuracy of these modeled geospatial datasets being produced. Yet challenges in the availability of reference data, in the appropriateness of assessment methods to dataset use, and in the completeness of assessment methods available have continued to hamper the timely and consistent application of map assessments. In this study we present a suite of assessments that can be used to characterize the accuracy of geospatial datasets of modeled continuous variables-an increasingly common format for modeling such attributes as proportion or probability of forestland as well as more traditionally continuous attributes such as leaf area index and forest biomass. It is a comparative accuracy assessment, in which each modeled dataset is compared to a set of reference data, recognizing both the potential for error in reference data, and probable differences in spatial support between the datasets. When used together, this proposed suite of assessments provides essential information on the type, magnitude, frequency and location of errors in each dataset. The assessments presented depend upon reference data with large sample sizes. The U.S. Forest Service (USFS) Forest Inventory and Analysis (FIA) database is introduced as an available reference dataset of sufficient sampling intensity to take full advantage of these assessments and facilitate their prompt application after modeled datasets are developed. We illustrate the application of this suite of assessments with two modeled datasets of forest biomass, in Minnesota and New York. The information provided by this suite of assessments substantially improves a user's ability to apply modeled geospatial datasets effectively and to assess the relative strengths and weaknesses of multiple datasets depicting the same forest characteristic.
机译:森林特征的地理空间数据集是地面上实际种群的模型表示。这样的数据集的连续空间特征为生态系统研究,政策分析和规划应用提供了令人难以置信的景观信息来源,所有这些信息对于应对当前与气候变化,城市化压力和监测数据要求有关的挑战至关重要碳汇。但是,这些应用程序的有效性取决于地理空间输入数据集的准确性。为了提供足够的信息以有效评估所生成的这些建模地理空间数据集的准确性,必须采取一套全面的鲁棒性措施。然而,参考数据的可用性,评估方法对数据集使用的适合性以及可用评估方法的完整性方面的挑战,仍在阻碍及时,一致地应用地图评估。在这项研究中,我们提出了一套评估,可用于表征建模的连续变量的地理空间数据集的准确性-一种越来越普遍的格式,用于对诸如林地的比例或概率等属性以及更传统的诸如叶面积之类的连续属性进行建模指数和森林生物量。这是一个比较精度评估,其中将每个建模数据集与一组参考数据进行比较,同时识别参考数据中潜在的错误以及数据集之间空间支持的可能差异。当一起使用时,此提议的评估套件可提供有关每个数据集中错误的类型,大小,频率和位置的基本信息。提出的评估取决于样本量较大的参考数据。引入美国森林服务局(USFS)森林清单和分析(FIA)数据库作为具有足够采样强度的可用参考数据集,以充分利用这些评估并在模型化数据集开发后促进其迅速应用。我们用明尼苏达州和纽约州的两个森林生物量建模数据集说明了这套评估的应用。此评估套件提供的信息极大地提高了用户有效地应用建模的地理空间数据集以及评估描述相同森林特征的多个数据集的相对优势和劣势的能力。

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