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首页> 外文期刊>Ecological Modelling >Modeling potential future individual tree-species distributions in the eastern United States under a climate change scenario: a case study with Pinus virginiana
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Modeling potential future individual tree-species distributions in the eastern United States under a climate change scenario: a case study with Pinus virginiana

机译:在气候变化情景下对美国东部潜在的未来个人树种分布进行建模:以松木为例的案例研究

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We are using a deterministic regression tree analysis model (DISTRIB) and a stochastic migration model (SHIFT) to examine potential distributions of similar to 66 individual species of eastern US trees under a 2 x CO sub(2) climate change scenario. This process is demonstrated for Virginia pine (Pinus virginiana). USDA Forest Service Forest Inventory and Analysis data for more than 100 000 plots and nearly 3 million trees east of the 100th meridian were analyzed and aggregated to the county level to provide species importance values for each of more than 2100 counties. County-level data also were compiled on climate, soils, land use, elevation, and spatial pattern. Regression tree analysis (RTA) was used to devise prediction rules from current species-environment relationships, which were then used to replicate the current distribution and predict the potential future distributions under two scenarios of climate change (2 x CO sub(2)). RTA allows different variables to control importance value predictions at different regions, e.g. at the northern versus southern range limits of a species. RTA outputs represent the potential 'environmental envelope' shifts required by species, while the migration model predicts the more realistic shifts based on colonization probabilities from varying species abundances within a fragmented landscape. The model shows severely limited migration in regions of high forest fragmentation, particularly when the species is low in abundance near the range boundary. These tools are providing mechanisms for evaluating the relationships among various environmental and landscape factors associated with tree-species importance and potential migration in a changing global climate.
机译:我们正在使用确定性回归树分析模型(DISTRIB)和随机迁移模型(SHIFT),以研究在2 x CO sub(2)气候变化情景下类似于美国东部树木的66种单独树种的潜在分布。弗吉尼亚松(Pinus virginiana)已证明了这一过程。美国农业部(USDA)森林服务部门的林业清单和分析数据超过了100万个子午线以东,第100个子午线以东的近300万棵树木进行了分析,并汇总到县级,以提供2100多个县中每个县的物种重要性值。还汇总了县级的气候,土壤,土地利用,海拔和空间格局数据。回归树分析(RTA)用于根据当前物种与环境的关系设计预测规则,然后用于复制当前分布并预测两种气候变化情景下的潜在未来分布(2 x CO sub(2))。 RTA允许使用不同的变量来控制不同区域的重要性值预测,例如在一个物种的北部和南部范围限制内。 RTA的输出表示物种所需的潜在“环境包络”变化,而迁移模型则根据来自零散景观中不同物种丰富度的定殖概率预测更现实的变化。该模型显示,在森林高度分散的地区,迁移受到严重限制,尤其是当物种在范围边界附近的丰度较低时。这些工具为评估与树种的重要性以及在不断变化的全球气候中的潜在迁徙相关的各种环境和景观因素之间的关系提供了机制。

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