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Discriminating woody species assemblages from National Forest Inventory data based on phylogeny in Georgia.
Wellenbeck, Alexander; Fehrmann, Lutz; Feilhauer, Hannes; Schmidtlein, Sebastian; Misof, Bernhard; Hein, Nils.
Affiliation
  • Wellenbeck A; Systematic Zoology University of Bonn Bonn Germany.
  • Fehrmann L; Forest Inventory and Remote Sensing University of Göttingen Göttingen Germany.
  • Feilhauer H; Forest Inventory and Remote Sensing University of Göttingen Göttingen Germany.
  • Schmidtlein S; Remote Sensing Centre for Earth System Research (RSC4Earth) Leipzig University Leipzig Germany.
  • Misof B; Institute of Geography and Geoecology Karlsruhe Institute of Technology (KIT) Karlsruhe Germany.
  • Hein N; Systematic Zoology University of Bonn Bonn Germany.
Ecol Evol ; 14(7): e11569, 2024 Jul.
Article in En | MEDLINE | ID: mdl-39045499
ABSTRACT
Classifications of forest vegetation types and characterization of related species assemblages are important analytical tools for mapping and diversity monitoring of forest communities. The discrimination of forest communities is often based on ß-diversity, which can be quantified via numerous indices to derive compositional dissimilarity between samples. This study aims to evaluate the applicability of unsupervised classification for National Forest Inventory data from Georgia by comparing two cluster hierarchies. We calculated the mean basal area per hectare for each woody species across 1059 plot observations and quantified interspecies distances for all 87 species. Following an unspuervised cluster analysis, we compared the results derived from the species-neutral dissimilarity (Bray-Curtis) with those based on the Discriminating Avalanche dissimilarity, which incorporates interspecies phylogenetic variation. Incorporating genetic variation in the dissimilarity quantification resulted in a more nuanced discrimination of woody species assemblages and increased cluster coherence. Favorable statistics include the total number of clusters (23 vs. 20), mean distance within clusters (0.773 vs. 0.343), and within sum of squares (344.13 vs. 112.92). Clusters derived from dissimilarities that account for genetic variation showed a more robust alignment with biogeographical units, such as elevation and known habitats. We demonstrate that the applicability of unsupervised classification of species assemblages to large-scale forest inventory data strongly depends on the underlying quantification of dissimilarity. Our results indicate that by incorporating phylogenetic variation, a more precise classification aligned with biogeographic units is attained. This supports the concept that the genetic signal of species assemblages reflects biogeographical patterns and facilitates more precise analyses for mapping, monitoring, and management of forest diversity.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Ecol Evol Year: 2024 Document type: Article Country of publication:

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Ecol Evol Year: 2024 Document type: Article Country of publication: