A'/> Modeling the potential natural vegetation of Minnesota, USA
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Modeling the potential natural vegetation of Minnesota, USA

机译:建模美国明尼苏达州的潜在自然植被

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Abstract Assessing the effects of human land use and management decisions requires an understanding of how temporal changes in biodiversity influence the rate of ecosystem functions and subsequent delivery of ecosystem services. In highly modified anthromes, the spatial distribution of natural vegetation types is often unknown or coarsely represented challenging comparative analyses seeking to assess changes in biodiversity and potential downstream effects on ecosystem processes and functions. In this context, the objectives of this study were to construct a multi-resolution representation of potential natural vegetation at four hierarchical classification levels of increasing floristic and physiognomic detail for the state of Minnesota, USA. Using a collection of natural/near-natural vegetation relevés, a series of Random Forest classification models were used to project the potential distribution of natural vegetation types based on their association with a variety of environmental variables. Model performance varied within and between classification levels with overall accuracy ranging between 64–99% (kappa 0.44–0.99). Model performance tended to decrease and become more variable with increasing floristic complexity at finer classification levels. Classwise performance metrics including precision and sensitivity were also reported. A method for exploring potential class confusion resulting from niche overlap using Random Forest proximities and Nonmetric Multidimensional Scaling is demonstrated. Collectively, th
机译:<![cdata [ 抽象 评估人体土地利用和管理决策的影响需要了解生物多样性的时间变化如何影响速度生态系统功能和随后交付生态系统服务。在高度改性的人体中,天然植被类型的空间分布往往是未知的或粗略地代表着挑战的比较分析,寻求评估生物多样性变化和对生态系统过程和功能的潜在下游影响。在这种情况下,本研究的目标是在美国明尼苏达州的植物和地貌细节增加四个层次分类水平下构建潜在的自然植被的多分辨率表示。使用一系列自然/近乎天然植被相关性,一系列随机森林分类模型用于基于与各种环境变量的关联来投射天然植被类型的潜在分布。 < CE:简单 - 段ID =“SP0030”视图=“全部”>型号性能在分类水平范围内,整体精度之间的介于64-99%(Kappa 0.44-0.99)。模型性能趋于减少,变得更加变化,随着更细的分类水平的增加。还报道了包括精度和灵敏度的同类性能度量。演示了使用随机森林邻近地区的利基重叠产生的潜在类混淆的方法。

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