Understanding and predicting global leaf phenology using satellite observations of vegetation
dc.contributor.advisor
Palmer, Paul
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dc.contributor.advisor
Purves, R
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dc.contributor.author
Caldararu, Silvia
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dc.date.accessioned
2013-08-02T14:31:08Z
dc.date.available
2013-08-02T14:31:08Z
dc.date.issued
2013-07-01
dc.description.abstract
Leaf phenology refers to the timing of leaf life cycle events and is essential to our
understanding of the earth system as it impacts the terrestrial carbon and water
cycles and indirectly global climate through changes in surface roughness and
albedo. Traditionally, leaf phenology is described as a response to higher temperatures
in spring and lower temperatures in autumn for temperate regions. With
the advent of carbon ecosystem models however, we need a better representation
of seasonal cycles, one that is able to explain phenology in different areas around
the globe, including tropical regions, and has the capacity to predict phenology
under future climates. We propose a global phenology model based on the hypothesis
that phenology is a strategy through which plants reach optimal carbon
assimilation. We fit this 14 parameter model to five years of space borne data of
leaf area index using a Bayesian fitting algorithm and we use it to simulate leaf
seasonal cycles across the globe. We explain the observed increase in leaf area
over the Amazon basin during the dry season through an increase in available
direct solar radiation. Seasonal cycles in dry tropical areas are explained by the
variation in water availability, while phenology at higher latitudes is driven by
changes in temperature and daylength. We explore the hypothesis that phenological
traits can be explained at the biome (plant functional group) level and we
show that some characteristics can only be explained at the species level due to
local factors such as water and nutrient availability. We anticipate that our work can be incorporated into larger earth system models and used to predict future
phenological patterns.
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dc.identifier.uri
http://hdl.handle.net/1842/7627
dc.language.iso
en
dc.publisher
The University of Edinburgh
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dc.relation.hasversion
Caldararu, S., Palmer, P.I. and Purves, D.W. (2012). Inferring Amazon leaf demography from satellite observations of leaf area index. Biogeosciences, 9, 1389–1404.
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dc.subject
phenology
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dc.subject
global vegetation models
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dc.subject
Bayesian methods
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dc.subject
phenology
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dc.subject
global vegetation models
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dc.subject
Bayesian methods
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dc.subject
Global Change Research Institute
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dc.title
Understanding and predicting global leaf phenology using satellite observations of vegetation
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dc.type
Thesis or Dissertation
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dc.type.qualificationlevel
Doctoral
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dc.type.qualificationname
PhD Doctor of Philosophy
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