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Using species richness and functional traits predictions to constrain assemblage predictions from stacked species distribution models

机译:使用物种丰富度和功能特征预测来约束堆叠物种分布模型中的组合预测

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摘要

Aim: Modelling species at the assemblage level is required to make effective forecast of global change impacts on diversity and ecosystem functioning. Community predictions may be achieved using macroecological properties of communities (MEM), or by stacking of individual species distribution models (S-SDMs). To obtain more realistic predictions of species assemblages, the SESAM framework suggests applying successive filters to the initial species source pool, by combining different modelling approaches and rules. Here we provide a first test of this framework in mountain grassland communities.Location: The western Swiss Alps.Methods: Two implementations of the SESAM framework were tested: a "Probability ranking" rule based on species richness predictions and rough probabilities from SDMs, and a "Trait range" rule that uses the predicted upper and lower bound of community-level distribution of three different functional traits (vegetative height, specific leaf area and seed mass) to constraint a pool of environmentally filtered species from binary SDMs predictions.Results: We showed that all independent constraints expectedly contributed to reduce species richness overprediction. Only the "Probability ranking" rule allowed slightly but significantly improving predictions of community composition.Main conclusion: We tested various ways to implement the SESAM framework by integrating macroecological constraints into S-SDM predictions, and report one that is able to improve compositional predictions. We discuss possible improvements, such as further improving the causality and precision of environmental predictors, using other assembly rules and testing other types of ecological or functional constraints.
机译:目的:需要在集合水平上对物种进行建模,以有效预测全球变化对多样性和生态系统功能的影响。可以使用社区的宏观生态特性(MEM)或通过堆叠单个物种分布模型(S-SDM)来实现社区预测。为了获得对物种组合的更现实的预测,SESAM框架建议通过组合不同的建模方法和规则,将连续的过滤器应用于初始物种源库。在这里,我们提供了在高山草原社区对该框架进行的首次测试。位置:瑞士西部的阿尔卑斯山。方法:测试了SESAM框架的两种实现:基于物种丰富度预测和SDM的大致概率的“概率排名”规则,以及一个“特质范围”规则,该规则使用三种不同功能性状(营养高度,特定叶面积和种子质量)的社区水平分布的预测上限和下限来限制来自二进制SDM预测的经过环境过滤的物种库。结果:我们表明,所有独立的约束条件有望减少物种丰富度的过度预测。主要结论:我们测试了通过将宏观生态约束整合到S-SDM预测中来实现SESAM框架的各种方法,并报告了一种能够改善组成预测的方法,该方法略微但显着改善了社区组成的预测。我们讨论了可能的改进,例如进一步提高环境预测变量的因果关系和精度,使用其他组装规则并测试其他类型的生态或功能约束。

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