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Background sampling and transferability of species distribution model ensembles under climate change

机译:气候变化下物种分布模型集合的背景采样和可传递性

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Species Distribution Models (SDMs) constitute an important tool to assist decision-making in environmental conservation and planning. A popular application of these models is the projection of species distributions under climate change conditions. Yet there are still a range of methodological SDM factors which limit the transferability of these models, contributing significantly to the overall uncertainty of the resulting projections. An important source of uncertainty often neglected in climate change studies comes from the use of background data (a.k.a. pseudo-absences) for model calibration. Here, we study the sensitivity to pseudo-absence sampling as a determinant factor for SDM stability and transferability under climate change conditions, focusing on European wide projections of Quercus robur as an illustrative case study. We explore the uncertainty in future projections derived from ten pseudo-absence realizations and three popular SDMs (GLM, Random Forest and MARS). The contribution of the pseudo-absence realization to the uncertainty was higher in peripheral regions and clearly differed among the tested SDMs in the whole study domain, being MARS the most sensitive with projections differing up to a 40% for different realizations and GLM the most stable. As a result we conclude that parsimonious SDMs are preferable in this context, avoiding complex methods (such as MARS) which may exhibit poor model transferability. Accounting for this new source of SDM-dependent uncertainty is crucial when forming multi-model ensembles to undertake climate change projections.
机译:物种分布模型(SDM)是协助环境保护和规划决策的重要工具。这些模型的流行应用是在气候变化条件下对物种分布的预测。然而,仍然存在一系列方法论上的SDM因素,这些因素限制了这些模型的可传递性,从而极大地影响了所得预测的总体不确定性。在气候变化研究中经常被忽略的不确定性的重要来源来自使用背景数据(又称伪缺失)进行模型校准。在这里,我们研究伪假采样的敏感性,作为在气候变化条件下SDM稳定性和可转移性的决定因素,重点是欧洲阔叶栎的预测作为一个案例研究。我们探索了未来预测中的不确定性,这些不确定性来自十个伪缺席实现和三个流行的SDM(GLM,Random Forest和MARS)。在整个研究领域,伪缺失实现对不确定性的贡献较高,并且在整个研究领域中,被测试的SDM之间显然存在差异,MARS最敏感,对于不同实现的预测相差高达40%,GLM最稳定。结果,我们得出结论,在这种情况下,最好使用简约的SDM,从而避免了可能表现出较差的模型可传递性的复杂方法(例如MARS)。当形成多模型集合来进行气候变化预测时,解释这种依赖于SDM的不确定性的新来源至关重要。

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