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Integrating natural gradients, experiments, and statistical modeling in a distributed network experiment: An example from the WaRM Network.
Prager, Case M; Classen, Aimee T; Sundqvist, Maja K; Barrios-Garcia, Maria Noelia; Cameron, Erin K; Chen, Litong; Chisholm, Chelsea; Crowther, Thomas W; Deslippe, Julie R; Grigulis, Karl; He, Jin-Sheng; Henning, Jeremiah A; Hovenden, Mark; Høye, Toke T Thomas; Jing, Xin; Lavorel, Sandra; McLaren, Jennie R; Metcalfe, Daniel B; Newman, Gregory S; Nielsen, Marie Louise; Rixen, Christian; Read, Quentin D; Rewcastle, Kenna E; Rodriguez-Cabal, Mariano; Wardle, David A; Wipf, Sonja; Sanders, Nathan J.
Afiliação
  • Prager CM; Ecology and Evolutionary Biology Department University of Michigan Ann Arbor Michigan USA.
  • Classen AT; The Rocky Mountain Biological Laboratory Crested Butte Colorado USA.
  • Sundqvist MK; Ecology and Evolutionary Biology Department University of Michigan Ann Arbor Michigan USA.
  • Barrios-Garcia MN; The Rocky Mountain Biological Laboratory Crested Butte Colorado USA.
  • Cameron EK; Natural History Museum of Denmark University of Copenhagen Copenhagen Denmark.
  • Chen L; Natural History Museum of Denmark University of Copenhagen Copenhagen Denmark.
  • Chisholm C; Department of Forest Ecology and Management Swedish University of Agricultural Sciences Umeå Sweden.
  • Crowther TW; CONICET, CENAC-APN San Carlos de Bariloche Rio Negro Argentina.
  • Deslippe JR; Rubenstein School of Environment and Natural Resources University of Vermont Burlington Vermont USA.
  • Grigulis K; Department of Environmental Science Saint Mary's University Halifax Nova Scotia Canada.
  • He JS; Qinghai Provincial Key Laboratory of Restoration Ecology of Cold Area and Key Laboratory of Adaptation and Evolution of Plant Biota Northwest Institute of Plateau Biology, Chinese Academy of Sciences Xining China.
  • Henning JA; Department of Environment Systems Science, Institute of Integrative Biology ETH Zürich Zürich Switzerland.
  • Hovenden M; Department of Environment Systems Science, Institute of Integrative Biology ETH Zürich Zürich Switzerland.
  • Høye TTT; Centre for Biodiversity and Restoration Ecology, School of Biological Sciences Victoria University of Wellington Wellington New Zealand.
  • Jing X; Laboratoire d'Ecologie Alpine Université Grenoble Alpes - CNRS - Université Savoie Mont-Blanc Grenoble France.
  • Lavorel S; Department of Ecology, College of Urban and Environmental Sciences Peking University Beijing China.
  • McLaren JR; The Rocky Mountain Biological Laboratory Crested Butte Colorado USA.
  • Metcalfe DB; Department of Biology University of South Alabama Mobile Alabama USA.
  • Newman GS; Biological Sciences, School of Natural Sciences University of Tasmania Hobart Tasmania Australia.
  • Nielsen ML; Department of Ecoscience and Arctic Research Centre Aarhus University Aarhus C Denmark.
  • Rixen C; Natural History Museum of Denmark University of Copenhagen Copenhagen Denmark.
  • Read QD; State Key Laboratory of Grassland Agro-Ecosystems, and College of Pastoral Agriculture Science and Technology Lanzhou University Lanzhou Gansu China.
  • Rewcastle KE; Laboratoire d'Ecologie Alpine Université Grenoble Alpes - CNRS - Université Savoie Mont-Blanc Grenoble France.
  • Rodriguez-Cabal M; Department of Biological Sciences University of Texas at El Paso El Paso Texas USA.
  • Wardle DA; Department of Ecology and Environmental Science Umeå University Umeå Sweden.
  • Wipf S; Department of Biology University of Oklahoma Norman Oklahoma USA.
  • Sanders NJ; Department of Ecoscience and Arctic Research Centre Aarhus University Aarhus C Denmark.
Ecol Evol ; 12(10): e9396, 2022 Oct.
Article em En | MEDLINE | ID: mdl-36262264
ABSTRACT
A growing body of work examines the direct and indirect effects of climate change on ecosystems, typically by using manipulative experiments at a single site or performing meta-analyses across many independent experiments. However, results from single-site studies tend to have limited generality. Although meta-analytic approaches can help overcome this by exploring trends across sites, the inherent limitations in combining disparate datasets from independent approaches remain a major challenge. In this paper, we present a globally distributed experimental network that can be used to disentangle the direct and indirect effects of climate change. We discuss how natural gradients, experimental approaches, and statistical techniques can be combined to best inform predictions about responses to climate change, and we present a globally distributed experiment that utilizes natural environmental gradients to better understand long-term community and ecosystem responses to environmental change. The warming and (species) removal in mountains (WaRM) network employs experimental warming and plant species removals at high- and low-elevation sites in a factorial design to examine the combined and relative effects of climatic warming and the loss of dominant species on community structure and ecosystem function, both above- and belowground. The experimental design of the network allows for increasingly common statistical approaches to further elucidate the direct and indirect effects of warming. We argue that combining ecological observations and experiments along gradients is a powerful approach to make stronger predictions of how ecosystems will function in a warming world as species are lost, or gained, in local communities.
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Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2022 Tipo de documento: Article