Combining field experiments and individual-based modeling to identify the dynamically relevant organizational scale in a field system
Authored by OJ Schmitz
Date Published: 2000
DOI: 10.1034/j.1600-0706.2000.890306.x
Sponsors:
United States National Science Foundation (NSF)
Platforms:
Gecko
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
Community ecologists continually strive to build analytical models that
realistically describe long-term dynamics of the systems they study. A
key step in this process is identifying which details are relevant for
predicting dynamics. Currently. this remains a limiting step in
development of analytical theory because experimental field ecology, which provides the key empirical insight, and theoretical ecology, which
translates empirical knowledge into analytical theory, remain weakly
linked. I illustrate how an individual-based computational model of
species interactions is a useful way to bridge the gulf between
empirical research and theory development. I built a computational model
that reproduced key natural history and biological detail of an
old-field interaction web composed of a predator species, a herbivore
species and two plant groups that had been the subject of extensive
previous field research. I examined, using simulation experiments, how
individual behavior of herbivores in response to changing resource and
predator abundance scaled to long-term population-level and
community-level dynamics. The simulation experiments revealed that the
long-term community dynamics could be highly predictable because of two
counterintuitive reasons. First, seasonality was a strong forcing
variable on the system that removed the possibility of serial dependence
in population abundance over time. Second, because of seasonality, short-term behavioral responses of herbivores played a much stronger
role in shaping community structure than longer-term processes such as
density responses. So, simply knowing the short-term responses of
herbivores at the evolutionary ecological level was sufficient to
forecast the long-term outcome of experimental manipulations. This study
shows that an individual-based model, once it is calibrated to the
real-world held system, can provide key insight into the biological
detail that analytical models should include to predict long-term
dynamics.
Tags
Competition
behavior
Community
ecology
Predation risk
Populations
Grasshoppers
Consequences
Food-web
Trophic exploitation