Using delta generalized additive models to produce distribution maps for spatially explicit ecosystem models
Authored by Arnaud Gruess, Michael Drexler, Cameron H Ainsworth
Date Published: 2014
DOI: 10.1016/j.fishres.2014.05.005
Sponsors:
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Platforms:
ArcGIS
R
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
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Abstract
Spatial ecosystem models, such as OSMOSE, have become integral tools in
achieving ecosystem-based management for their ability to thoroughly
describe predator-prey dynamics in a spatially explicit context.
Distribution maps, which define the initial spatial allocation of
functional groups abundance, can have a large effect on the
predator-prey dynamics that spatially explicit ecosystem models
simulate. Here, we introduce the delta GAM approach we developed to be
able to produce distribution maps for an OSMOSE model of the West
Florida Shelf (Gulf of Mexico), OSMOSE-WFS. This delta GAM approach
predicts the spatial distribution of different life stages of the
multiple functional groups represented in OSMOSE-WFS (life-stage
groups') at different seasons, over the entire Gulf of Mexico (GOM)
shelf including areas where abundance estimates do not exist, using
different research survey datasets and regional environmental and
habitat features. Our delta GAM approach consists of fitting two
independent models, a binomial GAM and a quasi-Poisson GAM, whose
predictions are then combined using the delta method to yield spatial
abundance estimates. To validate delta GAMs, bootstraps are used and
Spearman's correlation coefficients (Spearman's p's) between predicted
and observed abundance values are estimated and tested to be
significantly different from zero. We use pink shrimp (Farfantepenaeus
duorarum) to demonstrate our delta GAM approach by predicting the summer
distribution of this species over the GOM shelf and the West Florida
Shelf. Predictions of the delta GAM reflect existing empirical research
related to pink shrimp habitat preferences and predictions of a negative
binomial GAM previously designed for the GOM. We find that using a delta
rather than a negative binomial GAM saves significant computation time
at the expense of a slight reduction in GAM performance. A positive and
highly significant Spearman's p between observed and predicted abundance
values indicates that our delta GAM can reliably be used to predict pink
shrimp spatial distribution. Spearman's p was also positive and highly
significant in every life-stage group represented in OSMOSE-WFS and
season, though often low. Therefore, delta GAMs fitted for the different
life-stage groups and seasons correctly predict qualitative differences
between low- and high-abundance areas and are deemed appropriate for
generating distribution maps for OSMOSE-WFS. The delta GAM approach we
developed is a simple, convenient method to create distribution maps to
be fed into spatially explicit ecosystem models, where wide spatial and
taxonomic coverage is desired while benefits of high precision estimates
are lost at run-time. Published by Elsevier B.V.
Tags
Individual-based model
Management
patterns
fisheries
Impact
Count data
Ecosim