4.7 Article

Using FLUXNET data to improve models of springtime vegetation activity onset in forest ecosystems

Journal

AGRICULTURAL AND FOREST METEOROLOGY
Volume 171, Issue -, Pages 46-56

Publisher

ELSEVIER
DOI: 10.1016/j.agrformet.2012.11.018

Keywords

Budburst; Canopy photosynthesis; Eddy covariance; FLUXNET; Net ecosystem exchange; Phenology; Seasonality modeling

Funding

  1. NASA [NNX08AE61A]
  2. National Science Foundation [EF-1065029]
  3. Northeastern States Research Cooperative
  4. U.S. Department of Energy, Biological and Environmental Research, Terrestrial Carbon Program [DE-FG02-04ER63917, DE-FG02-04ER63911]
  5. CFCAS
  6. NSERC
  7. BIOCAP
  8. Environment Canada
  9. NRCan
  10. CarboEuropeIP
  11. FAO-GTOS-TCO
  12. iLEAPS
  13. Max Planck Institute for Biogeochemistry
  14. National Science Foundation
  15. University of Tuscia
  16. Universite Laval
  17. US Department of Energy
  18. Emerging Frontiers
  19. Direct For Biological Sciences [1065734] Funding Source: National Science Foundation
  20. Emerging Frontiers
  21. Direct For Biological Sciences [1064614, 1065074, 1065029] Funding Source: National Science Foundation

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Vegetation phenology is sensitive to climate change and variability, and is a first order control on the carbon budget of forest ecosystems. Robust representation of phenology is therefore needed to support model-based projections of how climate change will affect ecosystem function. A variety of models have been developed to predict species or site-specific phenology of trees. However, extension of these models to other sites or species has proven difficult. Using meteorological and eddy covariance data for 29 forest sites (encompassing 173 site-years), we evaluated the accuracy with which 11 different models were able to simulate, as a function of air temperature and photoperiod, spatial and temporal variability in the onset of spring photosynthetic activity. In parallel, we also evaluated the accuracy with which dynamics in remotely sensed vegetation indices from MODIS captured the timing of spring onset. To do this, we used a subset of sites in the FLUXNET La Thuile database located in evergreen needleleaf and deciduous broadleaf forests with distinct active and dormant seasons and where temperature is the primary driver of seasonality. As part of this analysis we evaluated predictions from refined versions of the 11 original models that include parameterizations for geographic variation in both thermal and photoperiod constraints on phenology. Results from cross-validation analysis show that the refined models predict the onset of spring photosynthetic activity with significantly higher accuracy than the original models. Estimates for the timing of spring onset from MODIS were highly correlated with the onset of photosynthesis derived from flux measurements, but were biased late for needleleaf sites. Our results demonstrate that simple phenology models can be used to predict the timing of spring photosynthetic onset both across sites and across years at individual sites. By extension, these models provide an improved basis for predicting how the phenology and carbon budgets of temperature-limited forest ecosystems may change in the coming decades. (C) 2012 Elsevier B.V. All rights reserved.

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