4.7 Article

Praise for diversity: A functional approach to reduce risks in urban forests

期刊

URBAN FORESTRY & URBAN GREENING
卷 62, 期 -, 页码 -

出版社

ELSEVIER GMBH
DOI: 10.1016/j.ufug.2021.127157

关键词

Climate change; Functional diversity; Functional groups; Global change; Tolerance; Uncertain environmental conditions; Urban tree

资金

  1. Chaire de recherche CRSNG/HydroQuebec sur le controle de la croissance de l'arbre
  2. Fonds vert
  3. Plan d'action 2013-2020 sur les changements climatiques of the Quebec government

向作者/读者索取更多资源

Urban forests provide essential ecosystem services but are threatened by climate change, urban growth, and new pests and diseases. To maintain these services, efficient tree management practices are needed to minimize the risk of catastrophic tree mortality.
Urban forests are associated with important ecosystem services, such as reduced environmental exposure and improved human health. These benefits will become even more important with climate change, especially with most humans now living in cities. Yet urban trees are themselves threatened by the changing climate, unprecedented urban growth and new exotic pests and diseases. Hence, to maintain the services provided by urban forests, developing efficient tree management practices aimed at minimizing the risk of catastrophic tree mortality becomes ever more important.& nbsp; Traditional practices often promote low-diversity tree communities to meet the demands of a taxing urban environment and the preferences of citizens. However, these low-diversity communities are inherently more susceptible to collapse. Here we present an intuitively simple and user-friendly urban tree management approach that integrates the latest advances in functional ecology to minimize the risk of catastrophic urban tree mortality caused by future uncertain environmental conditions in order to maintain forest cover and preserve urban ecosystem services.

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