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Use of precise spatial data for describing spatial patterns and plant interactions in a diverse Great Basin shrub community

机译:利用精确的空间数据描述大盆地灌木群落中的空间格局和植物相互作用

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Community-structuring processes continue to be of great interest to plant ecologists, and plant spatial patterns have been linked to processes including disturbance, dispersal, environmental heterogeneity, and plant interactions. Under the assumption that the analysis of the spatial structure of plant communities can help to elucidate the type and importance of the predominant community-structuring processes, many studies have analyzed point pattern data on various plant species. A variety of methods have been devised to acquire point pattern data for individual plants, however, the classic tradeoff between the speed of acquisition and the precision of spatial data has meant that large and precise datasets on plant locations are difficult to obtain. The primary goal of this study was to develop a GPS-based methodology for the rapid collection of precise spatial data on plant locations in a semi-arid shrubland in the Great Basin, USA. The secondary goal was to demonstrate a potential application of this approach by using recently developed univariate and bivariate spatial statistics to test for aggregation within the shrub community, as observed in other semi-arid shrublands. We efficiently mapped 2,358 individuals of five shrub species with a spatial error of ≤0.02 m, and found strong statistical evidence of fine-scale aggregation (1) independent of species, (2) within species, and (3) between two species pairs. Our approach is useful for rapidly collecting precise point pattern data in plant communities, and has other applications related to population modeling, GIS analysis, and conservation.
机译:社区构建过程仍然是植物生态学家非常感兴趣的领域,并且植物空间模式已与包括干扰,分散,环境异质性和植物相互作用在内的过程联系在一起。在对植物群落空间结构进行分析有助于阐明主要群落构建过程的类型和重要性的假设下,许多研究已经分析了各种植物物种的点模式数据。已经设计出多种方法来获取单个植物的点模式数据,但是,在获取速度与空间数据的精度之间的经典折衷意味着难以获得植物位置的大型且精确的数据集。这项研究的主要目的是开发一种基于GPS的方法,用于快速收集美国大盆地半干旱灌木丛中植物位置的精确空间数据。次要目标是通过使用最近开发的单变量和双变量空间统计数据来测试灌木群落内的聚集,以证明该方法的潜在应用,如在其他半干旱灌木丛中所观察到的。我们有效地绘制了5358个灌木物种的2358个个体,其空间误差≤0.02 m,并且发现了精细的规模聚集的统计证据(1)与物种无关,(2)在物种内部,以及(3)两个物种对之间。我们的方法可用于快速收集植物群落中的精确点模式数据,并具有与种群建模,GIS分析和保护有关的其他应用程序。

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