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首页> 外文期刊>European journal of entomology >How fine is fine-scale? Questioning the use of fine-scale bioclimatic data in species distribution models used for forecasting abundance patterns in butterflies
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How fine is fine-scale? Questioning the use of fine-scale bioclimatic data in species distribution models used for forecasting abundance patterns in butterflies

机译:精细程度如何?质疑精细生物气候数据在用于预测蝴蝶丰度模式的物种分布模型中的用途

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The use of species distribution models (SDMs) to predict the spatial occurrence and abundance of species in relation to environmental predictors has been debated in terms of species’ ecology and biogeography. The predictive power of these models is well recognized for vertebrates, but has not yet been tested for invertebrates. In this study, we aim to assess the use of SDMs for predicting local abundances of invertebrates at a macroscale level. A maximum entropy algorithm was used to build SDMs based on occurrence records of 61 species of butterflies and bioclimatic information with a 30 arc second resolution. Predictions of habitat suitability were correlated with butterfly abundance data derived from independently conducted field surveys in order to check for a relationship between the predictions of the model and local abundances. Even though the model accurately described the current distributions of the species in the study area at a macroscale, the observed occurrences of the species (i.e. presence/absence) recorded by the field surveys differed significantly from the model’s predictions for the corresponding grid cells. Moreover, there was no correlation between observed abundance and the model’s predictions for most species of butterflies. We conclude that the spatial abundance of butterflies cannot be predicted from environmental suitability modelled at a resolution as large as in this study. Using the finest scale bioclimatic information currently available (i.e. 30 arc seconds) it is not adequate to predict species abundances as structural and ecological factors as well as climatic patterns acting at a smaller scale are key determinants of the occurrence and abundance of invertebrates. Therefore, future studies have to account for the role of the resolution in environmental predictors when assessments of spatial abundances via SDMs will be conducted.
机译:就物种的生态学和生物地理学而言,使用物种分布模型(SDM)来预测与环境预测因子相关的物种的空间发生和丰度一直存在争议。这些模型的预测能力已为脊椎动物所公认,但尚未对无脊椎动物进行测试。在这项研究中,我们旨在评估SDM在宏观水平上预测无脊椎动物局部丰度的用途。基于61种蝴蝶的发生记录和30角秒分辨率的生物气候信息,使用最大熵算法构建SDM。为了检查模型的预测与局部丰度之间的关系,将栖息地适宜性的预测与从独立进行的田野调查中获得的蝴蝶丰度数据相关联。即使该模型以宏观尺度准确地描述了研究区域中物种的当前分布,但实地调查记录的观察到的物种发生(即存在/不存在)与模型对相应网格单元的预测也存在显着差异。此外,对于大多数种类的蝴蝶,观察到的丰度与模型的预测之间没有关联。我们得出的结论是,蝴蝶的空间丰度无法通过以与本研究一样大的分辨率建模的环境适应性来预测。使用目前可获得的最佳规模的生物气候信息(即30弧秒),不足以预测物种的丰度,因为结构和生态因素以及较小规模的气候模式是无脊椎动物的发生和丰度的关键决定因素。因此,当通过SDM进行空间丰度评估时,未来的研究必须考虑分辨率在环境预测因素中的作用。

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