Towards quantifying uncertainty in predictions of Amazon `dieback'
Authored by Yadvinder Malhi, Chris Huntingford, Rosie A Fisher, Lina Mercado, Ben B B Booth, Stephen Sitch, Phil P Harris, Peter M Cox, Chris D Jones, Richard A Betts, Glen R Harris, Mat Collins, Paul Moorcroft
Date Published: 2008
DOI: 10.1098/rstb.2007.0028
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Abstract
Simulations with the Hadley Centre general circulation model (HadCM3), including carbon cycle model and forced by a `business-as-usual'
emissions scenario, predict a rapid loss of Amazonian rainforest from
the middle of this century onwards. The robustness of this projection to
both uncertainty in physical climate drivers and the formulation of the
land surface scheme is investigated. We analyse how the modelled
vegetation cover in Amazonia responds to (i) uncertainty in the
parameters specified in the atmosphere component of HadCM3 and their
associated influence on predicted surface climate. We then enhance the
land surface description and (ii) implement a multilayer canopy light
interception model and compare with the simple `big-leaf' approach used
in the original simulations. Finally, (iii) we investigate the effect of
changing the method of simulating vegetation dynamics from an area-based
model (TRIFFID) to a more complex size-and age-structured approximation
of an individual-based model (ecosystem demography).
We find that the loss of Amazonian rainforest is robust across the
climate uncertainty explored by perturbed physics simulations covering a
wide range of global climate sensitivity. The introduction of the
refined light interception model leads to an increase in simulated gross
plant carbon uptake for the present day, but, with altered respiration, the net effect is a decrease in net primary productivity. However, this
does not significantly affect the carbon loss from vegetation and soil
as a consequence of future simulated depletion in soil moisture; the
Amazon forest is still lost. The introduction of the more sophisticated
dynamic vegetation model reduces but does not halt the rate of forest
dieback. The potential for human-induced climate change to trigger the
loss of Amazon rainforest appears robust within the context of the
uncertainties explored in this paper. Some further uncertainties should
be explored, particularly with respect to the representation of rooting
depth.
Tags
representation
Deforestation
Climate-change
Cycle
Rain-forest
Photosynthesis
Tropical forests
Land-surface scheme
Carbon-dioxide
Analog model