Remote spectral detection of biodiversity effects on forest biomass

被引:0
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作者
Laura J. Williams
Jeannine Cavender-Bares
Philip A. Townsend
John J. Couture
Zhihui Wang
Artur Stefanski
Christian Messier
Peter B. Reich
机构
[1] University of Minnesota,Department of Ecology, Evolution and Behavior
[2] University of Minnesota,Department of Forest Resources
[3] University of Wisconsin-Madison,Department of Forest and Wildlife Ecology
[4] Purdue University,Department of Entomology
[5] Purdue University,Department of Forestry and Natural Resources
[6] Université du Québec à Montréal,Centre for Forest Research
[7] Université du Québec en Outaouais,Institut des sciences de la forêt tempérée
[8] Western Sydney University,Hawkesbury Institute for the Environment
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摘要
Quantifying how biodiversity affects ecosystem functions through time over large spatial extents is needed for meeting global biodiversity goals yet is infeasible with field-based approaches alone. Imaging spectroscopy is a tool with potential to help address this challenge. Here, we demonstrate a spectral approach to assess biodiversity effects in young forests that provides insight into its underlying drivers. Using airborne imaging of a tree-diversity experiment, spectral differences among stands enabled us to quantify net biodiversity effects on stem biomass and canopy nitrogen. By subsequently partitioning these effects, we reveal how distinct processes contribute to diversity-induced differences in stand-level spectra, chemistry and biomass. Across stands, biomass overyielding was best explained by species with greater leaf nitrogen dominating upper canopies in mixtures, rather than intraspecific shifts in canopy structure or chemistry. Remote imaging spectroscopy may help to detect the form and drivers of biodiversity–ecosystem function relationships across space and time, advancing the capacity to monitor and manage Earth’s ecosystems.
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页码:46 / 54
页数:8
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