Inferring the structure and dynamics of interactions in schooling fish
Authored by Iain D Couzin, Yael Katz, Kolbjorn Tunstrom, Christos C Ioannou, Cristian Huepe
Date Published: 2011
DOI: 10.1073/pnas.1107583108
Sponsors:
Norwegian Research Council (NRF)
United States National Science Foundation (NSF)
Platforms:
MATLAB
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Determining individual-level interactions that govern highly coordinated
motion in animal groups or cellular aggregates has been a long-standing
challenge, central to understanding the mechanisms and evolution of
collective behavior. Numerous models have been proposed, many of which
display realistic-looking dynamics, but nonetheless rely on untested
assumptions about how individuals integrate information to guide
movement. Here we infer behavioral rules directly from experimental
data. We begin by analyzing trajectories of golden shiners (Notemigonus
crysoleucas) swimming in two-fish and three-fish shoals to map the mean
effective forces as a function of fish positions and velocities.
Speeding and turning responses are dynamically modulated and clearly
delineated. Speed regulation is a dominant component of how fish
interact, and changes in speed are transmitted to those both behind and
ahead. Alignment emerges from attraction and repulsion, and fish tend to
copy directional changes made by those ahead. We find no evidence for
explicit matching of body orientation. By comparing data from two-fish
and three-fish shoals, we challenge the standard assumption, ubiquitous
in physics-inspired models of collective behavior, that individual
motion results from averaging responses to each neighbor considered
separately; three-body interactions make a substantial contribution to
fish dynamics. However, pair wise interactions qualitatively capture the
correct spatial interaction structure in small groups, and this
structure persists in larger groups of 10 and 30 fish. The interactions
revealed here may help account for the rapid changes in speed and
direction that enable real animal groups to stay cohesive and amplify
important social information.
Tags
Individual-based model
Simulation
collective behavior
Aggregation
Animal groups
Rules
Field
Roach rutilus-rutilus
Shoals
Flocks