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Seasonal Variation in the Capacity for Plant Trait Measures to Predict Grassland Carbon and Water Fluxes
Authors:Georg Everwand  Ellen L. Fry  Till Eggers  Pete Manning
Affiliation:1. Department of Crop Sciences, Agroecology, Georg-August-University G?ttingen, Grisebachstrasse 6, 37077, G?ttingen, Germany
2. NERC Centre for Population Biology, Imperial College of Science and Technology, Silwood Park, Ascot, SL5 7PY, UK
3. Department of Life Sciences, Imperial College of Science and Technology, Silwood Park, Ascot, SL5 7PY, UK
4. BASF SE, Global Research Crop Protection, Data Management and Biometrics, 67117, Limburgerhof, Germany
5. Experimental Ecology Group, Department for Biology and Chemistry, University of Osnabrück, Barbarastr. 13, 49069, Osnabrück, Germany
6. Institute for Plant Sciences, University of Bern, Altenbergrain 21, 3013, Bern, Switzerland
Abstract:There is a need for accurate predictions of ecosystem carbon (C) and water fluxes in field conditions. Previous research has shown that ecosystem properties can be predicted from community abundance-weighted means (CWM) of plant functional traits and measures of trait variability within a community (FDvar). The capacity for traits to predict carbon (C) and water fluxes, and the seasonal dependency of these trait-function relationships has not been fully explored. Here we measured daytime C and water fluxes over four seasons in grasslands of a range of successional ages in southern England. In a model selection procedure, we related these fluxes to environmental covariates and plant biomass measures before adding CWM and FDvar plant trait measures that were scaled up from measures of individual plants grown in greenhouse conditions. Models describing fluxes in periods of low biological activity contained few predictors, which were usually abiotic factors. In more biologically active periods, models contained more predictors, including plant trait measures. Field-based plant biomass measures were generally better predictors of fluxes than CWM and FDvar traits. However, when these measures were used in combination traits accounted for additional variation. Where traits were significant predictors their identity often reflected seasonal vegetation dynamics. These results suggest that database derived trait measures can improve the prediction of ecosystem C and water fluxes. Controlled studies and those involving more detailed flux measurements are required to validate and explore these findings, a worthwhile effort given the potential for using simple vegetation measures to help predict landscape-scale fluxes.
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