Understanding the long-term spatial dynamics of a semiarid grass-shrub steppe through inverse parameterization for simulation models
Authored by Thorsten Wiegand, Pablo A Cipriotti, Jose M Paruelo, Martin R Aguiar
Date Published: 2012
DOI: 10.1111/j.1600-0706.2012.20317.x
Sponsors:
German Research Foundation (Deutsche Forschungsgemeinschaft, DFG)
Argentine Consejo Nacional de Investigaciones Científicas y Técnicas
Fundacion Antorchas
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Abstract
Desertification threatens 70\% of all dry lands worldwide by diminishing
the provision of economic and ecosystem services. However, since
long-term vegetation dynamics of semiarid ecosystems are difficult to
study, the opportunities to evaluate desertification and degradation
properly are limited. In this study, we tailored, calibrated and tested
a spatially-explicit simulation model (DINVEG) to describe the long-term
dynamics of dominant grass and shrub species in the semiarid Patagonian
steppe. We used inverse techniques to identify parameterizations that
yield model outputs in agreement with detailed field data, and we
performed sensitivity analyses to reveal the main drivers of long-term
vegetation dynamics. Whereas many parameterizations (1045\%) matched
single field observations (e.g. grass and shrub cover, species-specific
density, aboveground net primary production {[}ANPP]), only a few
parameterizations (0.05\%) yielded simultaneous match of all field
observations. Sensitivity analysis pointed to demographic constraints
for shrubs and grasses in the emergence and recruitment phase, respectively, which contributed to balanced shrub-grass abundances in
the long run. Vegetation dynamics of simulations that matched all field
observations were characterized by a stochastic equilibrium. The soil
water content in the top layer (010 cm) during the emergence period was
the strongest predictor of shrub densities and population growth rates
and of growth rates of grasses. Grasses controlled the shrub demography
because of the resource overlap of grasses with juvenile shrubs (i.e.
water content in the top layer). In agreement with field observations, ecosystem function buffered the strong variability in precipitation (a
simulated CV in ANPP of 16\% vs CV in precipitation of 33\%). Our
results show that seedling emergence and recruitment are critical
processes for long-term vegetation dynamics in this steppe. The methods
presented here could be widely applied when data for direct
parameterization of individual-based models are lacking, but data
corresponding to model outputs are available. Our modeling methodology
can reduce the need for long-term data sets when answering questions
regarding community dynamics.
Tags
Demography
pattern
systems
Plant
Patch structure
Statistical-inference
Multicriteria assessment
Patagonian steppe
Global desertification
Aboveground production