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Influence of positional accuracy, sample size and scale on modelling species distributions: a review

机译:位置精度,样本量和规模对物种分布建模的影响:综述

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Species distribution models (SDMs) are an important tool in biogeography and ecology and are widely used for both fundamental and applied research purposes. SDMs require spatially explicit information about species occurrence and environmental covariates to produce a set of rules that identify and scale the environmental space where the species was observed and that can further be used to predict the suitability of a site for the species. More spatially accurate data are increasingly available, and the number of publications, on the influence of spatial inaccuracies on the performance of modelling procedures is growing exponentially. Three main sources of uncertainty are associated with the three elements of a predictive function: the dependent variable, the explanatory variables and the algorithm or function used to relate these two variables. In this study, we review how spatial uncertainties influence model accuracy and we propose some methodological issues in the application of SDMs with regard to the modelling of fundamental and realized niches of species. We distinguish two cases suitable for different types of spatial data accuracy. For modelling the realized distribution of a species, particularly for management and conservation purposes, we suggest using only accurate species occurrence data and large sample sizes. Appropriate data filtering and examination of the spatial autocorrelation in predictors should be a routine procedure to minimize the possible influence of positional uncertainty in species occurrence data. However, if the data are sparse, models of the potential distribution of species can be created using a relatively small sample size, and this can provide a generalized indication of the main regional drivers of the distribution patterns. By this means, field surveys can be targeted to discover unknown populations and species in poorly surveyed regions in order to improve the robustness of the data for later modelling of the realized distributions. Based on this review, we conclude that (1) with data that are currently available, studies performed at a resolution of 1-100 km~2 are useful for hypothesizing about the environmental conditions that limit the distribution of a species and (2) incorporating coarse resolution species occurrence data in a model, despite an increase in sample size, lowers model performance.
机译:物种分布模型(SDM)是生物地理学和生态学中的重要工具,被广泛用于基础研究和应用研究。 SDM需要有关物种发生和环境协变量的空间上明确的信息,以产生一组规则,这些规则可以识别和缩放观察物种的环境空间,并且可以进一步用于预测该场所对物种的适合性。空间精度越来越高的数据越来越多,关于空间误差对建模过程性能的影响的出版物数量也呈指数增长。不确定性的三个主要来源与预测函数的三个元素相关:因变量,解释变量以及用于关联这两个变量的算法或函数。在这项研究中,我们回顾了空间不确定性如何影响模型的准确性,并就SDM的应用提出了一些方法论问题,涉及物种基本和已实现生态位的建模。我们区分两种情况,分别适用于不同类型的空间数据精度。为了模拟物种的已实现分布,特别是出于管理和保护目的,我们建议仅使用准确的物种发生数据和大样本量。适当的数据过滤和检查预测变量中的空间自相关应成为一种常规程序,以最大程度地减少物种发生数据中位置不确定性的可能影响。但是,如果数据稀疏,则可以使用相对较小的样本量来建立物种潜在分布的模型,这可以为分布模式的主要区域驱动因素提供一般性指示。通过这种方式,可以将田野调查作为目标,以发现调查欠佳的地区中的未知种群和物种,从而提高数据的健壮性,以便以后对已实现的分布进行建模。根据此评论,我们得出结论,(1)利用当前可用的数据,以1-100 km〜2的分辨率进行的研究对于假设限制物种分布的环境条件是有用的,并且(2)尽管样本量增加,但模型中的粗分辨率物种发生数据却降低了模型性能。

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