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Using digital soil maps to infer edaphic affinities of plant species in Amazonia: Problems and prospects

机译:使用数字土壤图推断亚马逊地区植物的前缘亲和力:问题和前景

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Abstract Amazonia combines semi-continental size with difficult access, so both current ranges of species and their ability to cope with environmental change have to be inferred from sparse field data. Although efficient techniques for modeling species distributions on the basis of a small number of species occurrences exist, their success depends on the availability of relevant environmental data layers. Soil data are important in this context, because soil properties have been found to determine plant occurrence patterns in Amazonian lowlands at all spatial scales. Here we evaluate the potential for this purpose of three digital soil maps that are freely available online: SOTERLAC, HWSD, and SoilGrids. We first tested how well they reflect local soil cation concentration as documented with 1,500 widely distributed soil samples. We found that measured soil cation concentration differed by up to two orders of magnitude between sites mapped into the same soil class. The best map-based predictor of local soil cation concentration was obtained with a regression model combining soil classes from HWSD with cation exchange capacity (CEC) from SoilGrids. Next, we evaluated to what degree the known edaphic affinities of thirteen plant species (as documented with field data from 1,200 of the soil sample sites) can be inferred from the soil maps. The species segregated clearly along the soil cation concentration gradient in the field, but only partially along the model-estimated cation concentration gradient, and hardly at all along the mapped CEC gradient. The main problems reducing the predictive ability of the soil maps were insufficient spatial resolution and/or georeferencing errors combined with thematic inaccuracy and absence of the most relevant edaphic variables. Addressing these problems would provide better models of the edaphic environment for ecological studies in Amazonia.
机译:摘要亚马孙河流域将半洲大小与难以接近相结合,因此必须从稀疏的野外数据中推断出当前物种的范围及其应对环境变化的能力。尽管存在基于少量物种出现对物种分布进行建模的有效技术,但其成功取决于相关环境数据层的可用性。在这种情况下,土壤数据很重要,因为已发现土壤特性决定了亚马逊低地所有空间尺度上的植物发生方式。在这里,我们评估了可在线免费获得的三个数字土壤图的潜在用途:SOTERLAC,HWSD和SoilGrids。我们首先测试了它们如何很好地反映出1500个广泛分布的土壤样本中反映的局部土壤阳离子浓度。我们发现测得的土壤阳离子浓度在映射到同一土壤类别的站点之间相差最多两个数量级。通过结合HWSD中的土壤类别和SoilGrids中的阳离子交换容量(CEC)的回归模型,可以获得基于地图的最佳局部土壤阳离子浓度预测因子。接下来,我们评估了可以从土壤图推断出13种植物的已知亲和力的程度(如从1200个土壤样品位点的田间数据记录的那样)。物种在田间沿着土壤阳离子浓度梯度清晰地分离,但仅部分沿着模型估计的阳离子浓度梯度分离,几乎没有沿着映射的CEC梯度分离。降低土壤图的预测能力的主要问题是空间分辨率和/或地理配准误差不足,再加上主题不准确以及缺少最相关的前锋变量。解决这些问题将为亚马逊地区的生态研究提供更好的土壤环境模型。

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