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Modeling temporal and large-scale spatial variability of soil respiration from soil water availability, temperature and vegetation productivity indices

Authors :
Ana Rey
Ming Xu
João Pereira
Beverly E. Law
Annette Freibauer
Federica Rossi
Pere Casals
J. Irvine
Franco Miglietta
Riccardo Valentini
Jean-Marc Ourcival
Richard Joffre
José M. Grünzweig
Markus Reichstein
J. Banza
Serge Rambal
Alessandro Peressotti
Joan Romanyà
Mark Rayment
Denis Loustau
Walter C. Oechel
Dan Yakir
Ye Qi
John Tenhunen
Giampiero Tirone
Francesca Ponti
Yufu Cheng
Vanessa Tedeschi
Department of Plant Ecology
University of Edinburgh
Max Planck Institute for Biogeochemistry (MPI-BGC)
Max-Planck-Gesellschaft
Tuscia University
Universidade de Lisboa (ULISBOA)
Centre de Ciència i Tecnologia Forestal de Catalunya (CTFC)
Global Change Research Group
South African National Biodiversity Institute
Weizmann Institute of Science [Rehovot, Israël]
College of Forestry
Oregon State University (OSU)
Centre National de la Recherche Scientifique (CNRS)
Écologie fonctionnelle et physique de l'environnement (EPHYSE)
Institut National de la Recherche Agronomique (INRA)
Consiglio Nazionale delle Ricerche (CNR)
Università degli Studi di Udine - University of Udine [Italie]
Alma Mater Studiorum Università di Bologna [Bologna] (UNIBO)
Department of Environmental Science, Policy, and Management
University of California
University of Barcelona
Rutgers University [Camden]
Rutgers University System (Rutgers)
Source :
Scopus-Elsevier, Global Biogeochemical Cycles, Global Biogeochemical Cycles, American Geophysical Union, 2003, 17 (4), n.p. ⟨10.1029/2003GB002035⟩

Abstract

International audience; [1] Field-chamber measurements of soil respiration from 17 different forest and shrubland sites in Europe and North America were summarized and analyzed with the goal to develop a model describing seasonal, interannual and spatial variability of soil respiration as affected by water availability, temperature, and site properties. The analysis was performed at a daily and at a monthly time step. With the daily time step, the relative soil water content in the upper soil layer expressed as a fraction of field capacity was a good predictor of soil respiration at all sites. Among the site variables tested, those related to site productivity (e. g., leaf area index) correlated significantly with soil respiration, while carbon pool variables like standing biomass or the litter and soil carbon stocks did not show a clear relationship with soil respiration. Furthermore, it was evidenced that the effect of precipitation on soil respiration stretched beyond its direct effect via soil moisture. A general statistical nonlinear regression model was developed to describe soil respiration as dependent on soil temperature, soil water content, and site-specific maximum leaf area index. The model explained nearly two thirds of the temporal and intersite variability of soil respiration with a mean absolute error of 0.82 mumol m(-2) s(-1). The parameterized model exhibits the following principal properties: (1) At a relative amount of upper-layer soil water of 16% of field capacity, half-maximal soil respiration rates are reached. (2) The apparent temperature sensitivity of soil respiration measured as Q(10) varies between 1 and 5 depending on soil temperature and water content. (3) Soil respiration under reference moisture and temperature conditions is linearly related to maximum site leaf area index. At a monthly timescale, we employed the approach by Raich et al. [2002] that used monthly precipitation and air temperature to globally predict soil respiration (T&P model). While this model was able to explain some of the month-to-month variability of soil respiration, it failed to capture the intersite variability, regardless of whether the original or a new optimized model parameterization was used. In both cases, the residuals were strongly related to maximum site leaf areaindex. Thus, for a monthly timescale, we developed a simple T&P&LAI model that includes leaf area index as an additional predictor of soil respiration. This extended but still simple model performed nearly as well as the more detailed time step model and explained 50% of the overall and 65% of the site-to-site variability. Consequently, better estimates of globally distributed soil respiration should be obtained with the new model driven by satellite estimates of leaf area index. Before application at the continental or global scale, this approach should be further tested in boreal, cold-temperate, and tropical biomes as well as for non-woody vegetation.

Details

ISSN :
08866236
Database :
OpenAIRE
Journal :
Scopus-Elsevier, Global Biogeochemical Cycles, Global Biogeochemical Cycles, American Geophysical Union, 2003, 17 (4), n.p. ⟨10.1029/2003GB002035⟩
Accession number :
edsair.doi.dedup.....d0fae71715b6e2d79e639791fdbc1999
Full Text :
https://doi.org/10.1029/2003GB002035⟩