Department of Geography, Environment, and Spatial Sciences and Program in Ecology, Evolutionary Biology, and Behavior, Michigan State University, Geography Building, 673 Auditorium Road, East Lansing, Michigan, 48824, USA.
Ecol Appl. 2016 Dec;26(8):2756-2766. doi: 10.1002/eap.1390. Epub 2016 Sep 30.
Species-area relationships have long been used to assess patterns of species diversity across scales. Here, this concept is extended to spectral diversity using hyperspectral data collected by NASA's Airborne Visible/Infrared Imaging Spectrometer (AVIRIS) over western Michigan. This mixture of mesic forest and agricultural lands offers two end-points on the local-scale diversity continuum; one set of well-mixed forest patches and one set of highly homogeneous agricultural patches. Using the sum of the first three principal component values and the principal components' convex hull volume, spectral diversity was compared within and among these plots and to null expectations for perfectly random and perfectly patchy landscapes. Overall, the spectral diversity-area relationship confirms the patterns that would be expected for this landscape, but this application suggests that this approach could be extended to less well-understood landscapes and could reveal key insights about the relative importance of different drivers of community assembly, even in the absence of additional data about plant functional traits or species' identities.
物种-面积关系长期以来一直被用于评估不同尺度下物种多样性的模式。在这里,该概念通过使用 NASA 的机载可见/红外成像光谱仪 (AVIRIS) 在密歇根西部收集的高光谱数据扩展到光谱多样性。这种湿润森林和农业土地的混合体提供了本地尺度多样性连续体的两个端点;一组混合良好的森林斑块和一组高度均匀的农业斑块。使用前三个主成分值的总和和主成分的凸壳体积,在这些斑块内和之间以及与完全随机和完全斑块状景观的零假设进行了光谱多样性比较。总体而言,光谱多样性-面积关系证实了该景观中预期的模式,但这种应用表明,这种方法可以扩展到了解较少的景观,并可以揭示有关群落组装不同驱动因素相对重要性的关键见解,即使没有关于植物功能特征或物种身份的额外数据。