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Unpacking the mechanisms captured by a correlative species distribution model to improve predictions of climate refugia

机译:解开相关物种分布模型捕获的机制以改善对气候避难所的预测

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摘要

Climate refugia are regions that animals can retreat to, persist in and potentially then expand from under changing environmental conditions. Most forecasts of climate change refugia for species are based on correlative species distribution models (SDMs) using long-term climate averages, projected to future climate scenarios. Limitations of such methods include the need to extrapolate into novel environments and uncertainty regarding the extent to which proximate variables included in the model capture processes driving distribution limits (and thus can be assumed to provide reliable predictions under new conditions). These limitations are well documented; however, their impact on the quality of climate refugia predictions is difficult to quantify. Here, we develop a detailed bioenergetics model for the koala. It indicates that range limits are driven by heat-induced water stress, with the timing of rainfall and heat waves limiting the koala in the warmer parts of its range. We compare refugia predictions from the bioenergetics model with predictions from a suite of competing correlative SDMs under a range of future climate scenarios. SDMs were fitted using combinations of long-term climate and weather extremes variables, to test how well each set of predictions captures the knowledge embedded in the bioenergetics model. Correlative models produced broadly similar predictions to the bioenergetics model across much of the species' current range - with SDMs that included weather extremes showing highest congruence. However, predictions in some regions diverged significantly when projecting to future climates due to the breakdown in correlation between climate variables. We provide unique insight into the mechanisms driving koala distribution and illustrate the importance of subtle relationships between the timing of weather events, particularly rain relative to hot-spells, in driving species-climate relationships and distributions. By unpacking the mechanisms captured by correlative SDMs, we can increase our certainty in forecasts of climate change impacts on species.
机译:气候避难所是动物可以在不断变化的环境条件下撤退,生存并可能从那里扩展的区域。对物种的气候变化避难所的大多数预测是基于使用长期气候平均值的相关物种分布模型(SDM),并预测未来的气候情景。这种方法的局限性包括需要外推到新的环境中,以及有关模型捕获过程中分布变量驱动范围极限的程度的不确定性(因此可以假定在新条件下可以提供可靠的预测)。这些限制有据可查;但是,它们对气候避难所预测质量的影响很难量化。在这里,我们为考拉开发了详细的生物能学模型。这表明,范围限制是由热诱导的水分胁迫驱动的,降雨和热浪的时间限制了考拉在其范围较温暖部分的时间。我们将生物能学模型中的避难所预测与一系列竞争性SDM在一系列未来气候情景下的预测进行比较。使用长期气候和极端天气变量的组合拟合SDM,以测试每组预测如何很好地捕获生物能学模型中嵌入的知识。在该物种目前的大部分范围内,相关模型产生的预测与生物能学模型大致相似-SDM包括极端天气下的最高一致性。然而,由于气候变量之间相关性的分解,在预测未来的气候时,某些地区的预测差异很大。我们对驱动考拉分布的机制提供了独特的见解,并说明了天气事件的时间之间的细微关系的重要性,尤其是降雨相对于热风雨,对驱动物种-气候关系和分布的重要性。通过解开相关SDM捕获的机制,我们可以提高对气候变化对物种影响的预测的确定性。

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