ANNUAL PLANTS UNDER CYCLIC DISTURBANCE REGIME: BETTER UNDERSTANDING THROUGH MODEL AGGREGATION
Authored by Boris Schroeder, Joern Pagel, Katrin Fritzsch, Robert Biedermann
Date Published: 2008
DOI: 10.1890/07-1305.1
Sponsors:
German Federal Ministry of Education and Research (BMBF)
Platforms:
No platforms listed
Model Documentation:
ODD
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
In their application for conservation ecology, ``classical'' analytical
models and individual-based simulation models (IBMs) both entail their
specific strengths and weaknesses, either in providing a detailed and
realistic representation of processes or in regard to a comprehensive
model analysis. This well-known dilemma may be resolved by the
combination of both approaches when tackling certain problems of
conservation ecology. Following this idea, we present the complementary
use of both an IBM and a matrix population model in a case study on
grassland conservation management. First, we develop a spatially
explicit IBM to simulate the long-term response of the annual plant
Thlaspi perfoliatum (Brassicaceae), claspleaf pennycress, to different
management schemes (annual mowing vs. infrequent rototilling) based on
field experiments. In order to complement the simulation results by
further analyses, we aggregate the IBM to a spatially nonexplicit
deterministic matrix population model. Within the periodic environment
created by management regimes, population dynamics are described by
periodic products of annual transition matrices. Such periodic matrix
products provide a very conclusive framework to study the responses of
species to different management return intervals. Thus, using tools of
matrix model analysis (e. g., loop analysis), we can both identify
dormancy within the age-structured seed bank as the pivotal strategy for
persistence under cyclic disturbance regimes and reveal crucial
thresholds in some less certain parameters. Results of matrix model
analyses are therefore successfully tested by comparing their results to
the respective IBM simulations. Their implications for an enhanced
scientific basis for management decisions are discussed as well as some
general benefits and limitations of the use of aggregating modeling
approaches in conservation.
Tags
individual-based models
Population-growth
Sensitivity-analysis
Landscape model
Ecological theory
Moment equations
Seed
bank
Grassland community
Thlaspi-perfoliatum
Projection matrices