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Predicting the future of species diversity: macroecological theory, climate change, and direct tests of alternative forecasting methods

机译:预测物种多样性的未来:宏观生态学理论,气候变化以及其他预测方法的直接检验

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摘要

Accurate predictions of future shifts in species diversity in response to global change are critical if useful conservation strategies are to be developed. The most widely used prediction method is to model individual species niches from point observations and project these models forward using future climate scenarios. The resulting changes in individual ranges are then summed to predict diversity changes; multiple models can be combined to produce ensemble forecasts. Predictions based on environment-richness regressions are rarer. However, richness regression models, based on macroecological diversity theory, have a long track record of making reliable spatial predictions of diversity patterns. If these empirical theories capture true functional relationships between environment and diversity, then they should make consistent predictions through time as well as space and could complement individual species-based predictions. Here, we use climate change throughout the 20th century to directly test the ability of these different approaches to predict shifts of Canadian butterfly diversity. We found that all approaches performed reasonably well, but the most accurate predictions were made using the single best richness-environment regression model, after accounting for the effects of spatial autocorrelation. Spatially trained regression models based on macroecological theory accurately predict diversity shifts for large species assemblages. Global changes provide pseudo-experimental tests of those macroecological theories that can then generate robust predictions of future conditions.
机译:如果要开发有用的保护策略,准确预测物种多样性随全球变化而发生的变化至关重要。最广泛使用的预测方法是通过点观测对单个物种生态位建模,并使用未来的气候情景将这些模型向前投影。然后将各个范围内产生的变化相加,以预测多样性变化。可以组合使用多个模型来生成整体预测。基于环境丰富度回归的预测很少见。但是,基于宏观生态多样性理论的丰富度回归模型在做出可靠的多样性模式空间预测方面有着悠久的记录。如果这些经验理论抓住了环境与多样性之间真正的功能关系,那么它们应该在时间和空间上做出一致的预测,并可以补充基于个体物种的预测。在这里,我们使用整个20世纪的气候变化来直接测试这些不同方法预测加拿大蝴蝶多样性变化的能力。我们发现,所有方法均表现合理,但考虑到空间自相关的影响后,使用单个最佳的丰富度-环境回归模型进行了最准确的预测。基于宏观生态学理论的空间训练回归模型可准确预测大型物种集合的多样性变化。全球变化为那些宏观生态学理论提供了伪实验测试,然后可以生成对未来状况的可靠预测。

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