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首页> 外文期刊>International Journal of Geographical Information Science >Incorporating movement in species distribution models: how do simulations of dispersal affect the accuracy and uncertainty of projections?
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Incorporating movement in species distribution models: how do simulations of dispersal affect the accuracy and uncertainty of projections?

机译:将运动纳入物种分布模型中:扩散模拟如何影响投影的准确性和不确定性?

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Species distribution models (SDMs) are one of the most important GIScience research areas in biogeography and are the primary means by which the potential effects of climate change on species' distributions and ranges are investigated. Dispersal is an important ecological process for species responding to changing climates, however, SDMs and their subsequent spatial products rarely reflect accessibility to any future suitable environment. Dispersal-related movement can be confounded by factors that vary across landscapes and climates, as well as within and among species, and it has therefore remained difficult to parametrise in SDMs. Here we compared 20 models that have previously been used (or have the potential to be used) to represent dispersal processes in SDM to predict future range shifts in response to climate change. We assessed the different dispersal models in terms of their accuracy at predicting future distributions, as well as the uncertainty associated with their predictions. Atlas data for 50 bird species from 1988 to 1991 in Great Britain were treated as base distributions (t(1)), with the species-environment relationships extrapolated (using three commonly used statistical methods) to 2008-2011 (t(2)). Dispersal (in the form of the 20 different models) was simulated from the base distribution (t(1)) to 2008-2011 (t(2)). The results were then combined and used to identify locations that were both abiotically suitable (obtained from the statistical methods) and accessible (obtained from the dispersal models). The accuracy of these coupled projections was assessed with the 2008-2011 atlas data (the observed t(2) distribution). There was substantial variation in the accuracy of the different dispersal models, and in general, the more restrictive dispersal models (e.g. fixed rate dispersal) resulted in lower accuracy for the metrics which reward correct prediction of presences. Ensemble models of the dispersal methods (generated by combining multiple projection outcomes) were created for each species, and a new Ensemble Agreement Index (EAI), which ranges from 0 (no agreement among models) to 1 (full agreement among models) was developed to quantify uncertainty among the projections. EAI values ranged from 0.634 (some areas of disagreement and therefore medium uncertainty among dispersal models) to 0.999 (large areas of agreement and low uncertainty among dispersal models). The results of this research highlight the importance of incorporating dispersal and also illustrate that the method with which dispersal is simulated greatly impacts the projected future distribution. This has important implications for studies aimed at predicting the effects of changing environmental conditions on species' distributions.
机译:物种分布模型(SDM)是生物地理学中最重要的GIS科学研究领域之一,并且是研究气候变化对物种分布和范围的潜在影响的主要手段。对于物种响应气候变化而言,分散是重要的生态过程,但是,SDM及其后续空间产品很少反映出对任何未来合适环境的可及性。与散布相关的运动可能会因景观和气候以及物种内部和物种之间变化的因素而混淆,因此在SDM中仍然很难进行参数化。在这里,我们比较了20个先前已使用(或有可能被使用)的模型来表示SDM中的扩散过程,以预测响应气候变化的未来范围变化。我们根据预测未来分布的准确性以及与它们的预测相关的不确定性评估了不同的分散模型。将1988年至1991年英国50种鸟类的Atlas数据视为基本分布(t(1)),并将物种与环境的关系推断(使用三种常用的统计方法)到2008-2011年(t(2))。 。从基础分布(t(1))到2008-2011(t(2))模拟了分散(以20种不同模型的形式)。然后将结果合并,并用于确定既非生物适合的位置(从统计方法中获得)又可访问的位置(从分散模型中获得)。这些耦合的投影的准确性通过2008-2011年地图集数据(观察到的t(2)分布)进行了评估。不同散布模型的准确性存在很大差异,通常,限制性更强的散布模型(例如固定比率散布)导致度量标准的准确性较低,从而奖励正确的存在预测。为每个物种创建了散布方法的集合模型(通过组合多个投影结果生成),并开发了新的集合协议指数(EAI),其范围从0(模型之间没有一致)到1(模型之间完全一致)。量化预测之间的不确定性。 EAI值的范围从0.634(某些分歧区域,因此弥散模型之间的不确定性中等)到0.999(协定区域大而分散模型之间的不确定性低)。这项研究的结果凸显了引入扩散的重要性,并说明了模拟扩散的方法极大地影响了预期的未来分布。这对旨在预测环境条件变化对物种分布的影响的研究具有重要意义。

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