生物多样性
生态系统
草原
生态学
干旱
生物
背景(考古学)
生态系统服务
气候变化
全球变化
农林复合经营
古生物学
作者
Catarina S. C. Martins,Manuel Delgado‐Baquerizo,Ramesha H. Jayaramaiah,Dongxue Tao,Juntao Wang,Tadeo Sáez‐Sandino,Hongwei Liu,Fernando T. Maestre,Peter B. Reich,Brajesh K. Singh
出处
期刊:PLOS Biology
[Public Library of Science]
日期:2024-08-14
卷期号:22 (8): e3002736-e3002736
被引量:1
标识
DOI:10.1371/journal.pbio.3002736
摘要
Grasslands are integral to maintaining biodiversity and key ecosystem services and are under threat from climate change. Plant and soil microbial diversity, and their interactions, support the provision of multiple ecosystem functions (multifunctionality). However, it remains virtually unknown whether plant and soil microbial diversity explain a unique portion of total variation or shared contributions to supporting multifunctionality across global grasslands. Here, we combine results from a global survey of 101 grasslands with a novel microcosm study, controlling for both plant and soil microbial diversity to identify their individual and interactive contribution to support multifunctionality under aridity and experimental drought. We found that plant and soil microbial diversity independently predict a unique portion of total variation in above- and belowground functioning, suggesting that both types of biodiversity complement each other. Interactions between plant and soil microbial diversity positively impacted multifunctionality including primary production and nutrient storage. Our findings were also climate context dependent, since soil fungal diversity was positively associated with multifunctionality in less arid regions, while plant diversity was strongly and positively linked to multifunctionality in more arid regions. Our results highlight the need to conserve both above- and belowground diversity to sustain grassland multifunctionality in a drier world and indicate climate change may shift the relative contribution of plant and soil biodiversity to multifunctionality across global grasslands.
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