Estimating the risk of Amazonian forest dieback

Anja Rammig, Tim Jupp, Kirsten Thonicke, Britta Tietjen, Jens Heinke, Sebastian Ostberg, Wolfgang Lucht, Wolfgang Cramer, Peter Cox

Research output: Contribution to journalArticlepeer-review

120 Scopus citations

Abstract

Climate change will very likely affect most forests in Amazonia during the course of the 21st century, but the direction and intensity of the change are uncertain, in part because of differences in rainfall projections. In order to constrain this uncertainty, we estimate the probability for biomass change in Amazonia on the basis of rainfall projections that are weighted by climate model performance for current conditions. We estimate the risk of forest dieback by using weighted rainfall projections from 24 general circulation models (GCMs) to create probability density functions (PDFs) for future forest biomass changes simulated by a dynamic vegetation model (LPJmL). Our probabilistic assessment of biomass change suggests a likely shift towards increasing biomass compared with nonweighted results. Biomass estimates range between a gain of 6.2 and a loss of 2.7 kg carbon m-2 for the Amazon region, depending on the strength of CO2 fertilization. The uncertainty associated with the long-term effect of CO2 is much larger than that associated with precipitation change. This underlines the importance of reducing uncertainties in the direct effects of CO2 on tropical ecosystems.

Original languageEnglish
Pages (from-to)694-706
Number of pages13
JournalNew Phytologist
Volume187
Issue number3
DOIs
StatePublished - Aug 2010
Externally publishedYes

Keywords

  • Amazonia
  • Bayesian statistics
  • Climate change
  • Forest dieback
  • Probability
  • Vegetation odelling

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