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Functional convergence in regulation of net CO 2 flux in heterogeneous tundra landscapes in Alaska and Sweden
Author(s) -
SHAVER G. R.,
STREET L. E.,
RASTETTER E. B.,
VAN WIJK M. T.,
WILLIAMS M.
Publication year - 2007
Publication title -
journal of ecology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.452
H-Index - 181
eISSN - 1365-2745
pISSN - 0022-0477
DOI - 10.1111/j.1365-2745.2007.01259.x
Subject(s) - tundra , arctic vegetation , vegetation (pathology) , leaf area index , environmental science , normalized difference vegetation index , arctic , enhanced vegetation index , flux (metallurgy) , photosynthetically active radiation , primary production , atmospheric sciences , canopy , ecosystem , range (aeronautics) , physical geography , ecology , geography , vegetation index , geology , biology , medicine , materials science , pathology , botany , composite material , metallurgy , photosynthesis
Summary1 Arctic landscapes are characterized by extreme vegetation patchiness, often with sharply defined borders between very different vegetation types. This patchiness makes it difficult to predict landscape‐level C balance and its change in response to environment. 2 Here we develop a model of net CO 2 flux by arctic landscapes that is independent of vegetation composition, using instead a measure of leaf area derived from NDVI (normalized‐difference vegetation index). 3 Using the light response of CO 2 flux (net ecosystem exchange, NEE) measured in a wide range of vegetation in arctic Alaska and Sweden, we exercise the model using various data subsets for parameter estimation and tests of predictions. 4 Overall, the model consistently explains ~80% of the variance in NEE knowing only the estimated leaf area index (LAI), photosynthetically active photon flux density (PPFD) and air temperature. 5 Model parameters derived from measurements made in one site or vegetation type can be used to predict NEE in other sites or vegetation types with acceptable accuracy and precision. Further improvements in model prediction may come from incorporating an estimate of moss area in addition to LAI, and from using vegetation‐specific estimates of LAI. 6 The success of this model at predicting NEE independent of any information on species composition indicates a high level of convergence in canopy structure and function in the arctic landscape.