Search strategies for landscape-level interpatch movements
Authored by PA Zollner, SL Lima
Date Published: 1999
DOI: 10.1890/0012-9658(1999)080[1019:ssflli]2.0.co;2
Sponsors:
Indiana State University
Theodore Roosevelt Fund
Platforms:
C
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
Ecologists need a better understanding of how animals make decisions
about moving across landscapes. To this end, we developed computer
simulations that contrast the effectiveness of various search strategies
at finding habitat patches in idealized landscapes (uniform, random, or
clumped patches), where searchers have different energy reserves and
face different mortality risks. Nearly straight correlated random walks
always produced better dispersal success than relatively uncorrelated
random walks. However, increasing patch density decreased the degree of
correlation that maximized dispersal success. Only under high mortality
and low energy reserves in a uniform landscape did absolutely
straight-line search perform better than any random walk. With low
mortality risks and high energy reserves, exhaustive systematic search
was superior to the best correlated random walk; an increase in the
perceptual range of the searcher (i.e., patch detectability) also
favored exhaustive search over relatively straight random walks. For all
conditions examined, the ``average distance rule,{''} a hybrid search
rule incorporating both straight-line and systematic search, was best.
Overall, however, our results suggest that a simple and effective search
rule for many landscape-explicit models would involve straight or nearly
straight movements.
Tags
Individual-based model
Habitat connectivity
Simulation-model
Heterogeneous environments
Systematic search
Animal movements
Isopod hemilepistus-reaumuri
Local-population
size
Random-walk model
Foraging movements