Overcoming challenges of sparse telemetry data to estimate caribou movement
Authored by Sarah Bauduin, Eliot McIntire, Martin-Hugues St-Laurent, Steve Cumming
Date Published: 2016
DOI: 10.1016/j.ecolmodel.2016.05.004
Sponsors:
Québec Fonds Verts
Platforms:
R
Model Documentation:
ODD
Model Code URLs:
Model code not found
Abstract
Spatially explicit individual-based models (SE-IBMs) can simulate
species' movement behaviors. Although such models allow many
applications to ecology and conservation biology and are useful for
management purposes, they are difficult to parameterize directly from
the kinds of observational data that are generally available. Coupled
with pattern-oriented modeling strategy, SE-IBMs can be parameterized
and assess alternate hypotheses on movement behaviors by comparing
simulated to observed patterns of movement. We illustrated this with the
endangered Atlantic-Gaspesie caribou population while using sparse Very
High Frequency (VHF) telemetry data. We formulated alternative movement
hypotheses built around proximate movement mechanisms and coded them
into an SE-IBM to explain and predict caribou movement. These mechanisms
were: a random walk, a biased correlated random walk, a foray loop to
reproduce caribou extra-range movement patterns, and caribou fidelity
during mating season. We combined these to test single- and two-behavior
movement models regarding landscape quality. The best fitted model
successfully reproduced most of the movement patterns derived from the
VHF locations. We found that caribou movement in low quality habitat was
better reproduced by a foray loop behavior than by a biased correlated
random walk or a random walk. Adding an attraction to the individuals'
mating area during the mating season also improved the model. We used
the selected model to estimate and map potential landscape use by the
Atlantic-Gaspesie caribou. We confirmed areas of high use seen in the
VHF data and identified some potential areas where no caribou locations
were recorded. We also found that large areas of moderate to high
quality habitat were unused because they could not be reached by
caribou. We conclude that sparse data sets, such as VHF collar
locations, can be used to fit movement models whose parameters could not
be estimated directly from the data. SE-IBMs coupled with
pattern-oriented modeling can reveal new insights about landscape use
beyond what can be defined with habitat selection models, and can
identify habitat locations where management actions could be taken to
facilitate species persistence or recovery of endangered populations.
(C) 2016 Elsevier B.V. All rights reserved.
Tags
Animal movement
patterns
fragmented landscapes
Home-range
Habitat selection
State-space models
Yellowstone-national-park
Woodland caribou
Random-walks
Rangifer-tarandus