营养水平
空间异质性
温带雨林
生态学
生物多样性
物种丰富度
温带气候
栖息地
利基
生物
地理
生态系统
作者
Lea Heidrich,Soyeon Bae,Shaun R. Levick,Sebastian Seibold,Wolfgang W. Weisser,Peter Krzystek,Paul Magdon,Thomas Nauß,Peter Schall,Alla Serebryanyk,Stephan Wöllauer,Christian Ammer,Claus Bässler,Inken Doerfler,Markus Fischer,Martin M. Goßner,Marco Heurich,Torsten Hothorn,Kirsten Jung,Holger Kreft
标识
DOI:10.1038/s41559-020-1245-z
摘要
The habitat heterogeneity hypothesis predicts that biodiversity increases with increasing habitat heterogeneity due to greater niche dimensionality. However, recent studies have reported that richness can decrease with high heterogeneity due to stochastic extinctions, creating trade-offs between area and heterogeneity. This suggests that greater complexity in heterogeneity–diversity relationships (HDRs) may exist, with potential for group-specific responses to different facets of heterogeneity that may only be partitioned out by a simultaneous test of HDRs of several species groups and several facets of heterogeneity. Here, we systematically decompose habitat heterogeneity into six major facets on ~500 temperate forest plots across Germany and quantify biodiversity of 12 different species groups, including bats, birds, arthropods, fungi, lichens and plants, representing 2,600 species. Heterogeneity in horizontal and vertical forest structure underpinned most HDRs, followed by plant diversity, deadwood and topographic heterogeneity, but the relative importance varied even within the same trophic level. Among substantial HDRs, 53% increased monotonically, consistent with the classical habitat heterogeneity hypothesis but 21% were hump-shaped, 25% had a monotonically decreasing slope and 1% showed no clear pattern. Overall, we found no evidence of a single generalizable mechanism determining HDR patterns. An analysis across multiple species groups and different facets of stand-level heterogeneity in temperate forests from Central Europe reveals that heterogeneity–diversity relationships are not generalizable and predictable as modelling approaches suggest, varying even between ecologically similar species groups.
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