Model complexity and population predictions. The alpine marmot as a case study
Authored by PA Stephens, F Frey-Roos, W Arnold, WJ Sutherland
Date Published: 2002
DOI: 10.1046/j.1365-2656.2002.00605.x
Sponsors:
German Research Foundation (Deutsche Forschungsgemeinschaft, DFG)
Max Planck Society
United Kingdom Natural Environment Research Council (NERC)
Platforms:
No platforms listed
Model Documentation:
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Abstract
1. During the past 15 years, models have been used increasingly in
predictive population ecology. Matrix models used for predicting the
fates of populations are often extremely basic, ignoring density
dependence, spatial scale and behaviour, and often based on one sex
only. We tested the importance of some of these omissions for model
realism, by comparing the performance of a variety of population models
of varying levels of complexity.
2. Detailed data from more than 13 years of behavioural and demographic
research on a population of alpine marmots Marmota marmota in
Berchtesgaden National Park, southern Germany, were used to parameterize
four different population models. The models ranged from a simple
population-based matrix model, to a spatially explicit behaviour-based
model.
3. The performance of the models was judged by their ability to predict
basic population dynamics under equilibrium conditions. Only a spatially
explicit individual-based model ignoring optimal behaviour predicted
dynamics significantly different to those observed in the field, highlighting the importance of considering realistic patterns of
behaviour in spatially explicit models.
4. Using realistic levels of environmental and demographic
stochasticity, variance in population growth rates predicted by all
models was high, even within the range of population densities
experienced in the field. This emphasizes the difficulty of using
population-level field data to determine overall patterns of density
dependence for use in population models.
5. All models were also used to predict potential density-dependent
effects on alpine marmot population growth. In this regard, the models
differed greatly. It was concluded that the simplest matrix model was
adequate for making predictions regarding population sizes or densities
under equilibrium conditions, but that for predictions requiring an
understanding of transient dynamics only the behavioural model would be
adequate.
6. An emergent feature of this study of alpine marmot population
dynamics was the prediction of a demographic Allee effect with a
profound influence on population dynamics across a very broad range of
population sizes. Three mechanisms were identified as underlying this
Allee effect: stochastic skews in sex ratio and demographic composition
at low population sizes; less efficient social thermoregulation during
hibernation in small groups', and difficulties with mate finding during
dispersal, even at relatively high population sizes.
Tags
Evolution
Management
Dynamics
Consequences
New-zealand
Density-dependence
Conservation biology
Viability analysis
Neighborhood models
Hibernation