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Spatial Transferability of Vegetation Types in Distribution Models Based on Sample Surveys from an Alpine Region

机译:基于高寒地区抽样调查的分布模型中植被类型的空间转移性

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Vegetation mapping using field surveys is expensive. Distribution modelling, based on sample surveys, might overcome this challenge. We tested if models trained from sample surveys could be used to predict the distribution of vegetation types in neighbourhood areas, and how reliable the spatial transferability was. We also tested whether we should use ecological dissimilarity or spatial distance to foresee modelling performance. Maximum entropy models were run for three vegetation types based on a vegetation map within a mountain range. Environmental variables were selected backwards, model complexity was kept low. The models are based on points from a small part of each study site, transferred into the entire sites, and then tested for performance. Environmental distance was tested using principle component analysis. All models had high uncorrected AUC values. The ability to predict presences correctly was low. The ability to predict absences correctly was high. The ability to transfer the distribution model depended on environmental distance, not spatial distance.
机译:使用实地调查进行植被测绘是昂贵的。基于样本调查的分配模型可以克服这一挑战。我们测试了通过样本调查训练的模型是否可用于预测邻域内植被类型的分布以及空间转移性的可靠性。我们还测试了是否应该使用生态差异或空间距离来预测建模性能。基于山脉内的植被图,针对三种植被类型运行了最大熵模型。向后选择环境变量,模型复杂度保持较低。这些模型基于每个研究站点的一小部分的点,然后转移到整个站点,然后进行性能测试。使用主成分分析测试环境距离。所有模型均具有较高的未校正AUC值。正确预测存在的能力很低。正确预测缺勤的能力很高。传递分布模型的能力取决于环境距离,而不是空间距离。

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