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Use of simulation-based statistical models to complement bioclimatic models in predicting continental scale invasion risks

机译:基于仿真的统计模型使用仿真统计模型来补充巨大模型预测大陆尺度入侵风险

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摘要

Invasive species represent one of the greatest risks to global biodiversity and economic productivity of agroecosystems. The development of certain novel cropse.g., herbaceous perennial biomass cropsmay create a risk of novel invasions by these crops. Therefore, potential benefits and risks need to be weighed in making decisions about their introduction and subsequent management. Ideally, such a weighing will be based on good estimates of invasion risks in realistic scenarios pertaining to actual landscapes of concern. Most previous large-scale analyses of invasion risk have used species distribution models and their established methods. Unfortunately, these approaches are unable to incorporate local scale biotic and spatial factors that influence invasion risk. Here we present a case study for how such factors can be efficiently incorporated in large-scale analyses of invasion risk, by extending simulation models with statistical modeling tools. By these means, we predict invasion risk at the scale of the entire United States for a major biomass crop, Miscanthusxgiganteus. We then combine invasion risk predictions for this method with those from bioclimatic methods, producing a map of aggregated invasion risk that can offer more nuanced predictions of invasion risk than either approach alone. Lastly, we evaluate potential risks for invasive crops that differ in invasiveness traits, to examine how geographic patterns of invasion risk vary among invaders as a result of their particular constellation of traits.
机译:侵入性物种代表了农业系统的全球生物多样性和经济生产力的最大风险之一。某些小说作物的发展,草本多年生生物量养殖庄稼形成了这些作物的新侵犯风险。因此,需要权衡潜在的福利和风险,以决定他们的引入和随后的管理层。理想情况下,这种称重将基于与令人关注的实际景观有关的现实情景中的入侵风险的良好估计。最先前的入侵风险的大规模分析使用了物种分布模型及其建立的方法。不幸的是,这些方法无法纳入当地规模的生物和空间因素,影响入侵风险。在这里,我们通过使用统计建模工具扩展模拟模型,提出了如何在大规模分析的大规模分析中有效地纳入这种因素的案例研究。通过这些手段,我们预测整个美国主要生物量作物,Miscanthusxgiganteus的整体规模的入侵风险。然后,我们将这种方法与来自生物融合方法​​的方法相结合的入侵风险预测,产生了可以提供比单独任何方法更细注的入侵风险预测的汇总的入侵风险的地图。最后,我们评估了侵入性作物的潜在风险,这些作物在侵袭性特征中不同,以检查由于其特定的特征的特定星座而在入侵者之间的入侵风险的地理模式如何变化。

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