TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf

Species distribution models (SDMs) are increasingly applied in conservation management to predict suitable habitat for poorly known populations. High predictive performance of SDMs is evident in validations performed within the model calibration area (interpolation), but few studies have assessed SD...

Full description

Bibliographic Details
Main Authors: Torres, Leigh G., Sutton, Philip J. H., Thompson, David R.
Language:unknown
Subjects:
Online Access:https://ir.library.oregonstate.edu/concern/articles/pn89d8675
id ftoregonstate:ir.library.oregonstate.edu:pn89d8675
record_format openpolar
spelling ftoregonstate:ir.library.oregonstate.edu:pn89d8675 2024-04-14T08:01:47+00:00 TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf Torres, Leigh G. Sutton, Philip J. H. Thompson, David R. https://ir.library.oregonstate.edu/concern/articles/pn89d8675 unknown https://ir.library.oregonstate.edu/concern/articles/pn89d8675 In Copyright ftoregonstate 2024-03-21T15:49:52Z Species distribution models (SDMs) are increasingly applied in conservation management to predict suitable habitat for poorly known populations. High predictive performance of SDMs is evident in validations performed within the model calibration area (interpolation), but few studies have assessed SDM transferability to novel areas (extrapolation), particularly across large spatial scales or pelagic ecosystems. We performed rigorous SDM validation tests on distribution data from three populations of a long-ranging marine predator, the grey petrel Procellaria cinerea, to assess model transferability across the Southern Hemisphere (25-65°S). Oceanographic data were combined with tracks of grey petrels from two remote sub-Antarctic islands (Antipodes and Kerguelen) using boosted regression trees to generate three SDMs: one for each island population, and a combined model. The predictive performance of these models was assessed using withheld tracking data from within the model calibration areas (interpolation), and from a third population, Marion Island (extrapolation). Predictive performance was assessed using k-fold cross validation and point biserial correlation. The two population-specific SDMs included the same predictor variables and suggested birds responded to the same broad-scale oceanographic influences. However, all model validation tests, including of the combined model, determined strong interpolation but weak extrapolation capabilities. These results indicate that habitat use reflects both its availability and bird preferences, such that the realized distribution patterns differ for each population. The spatial predictions by the three SDMs were compared with tracking data and fishing effort to demonstrate the conservation pitfalls of extrapolating SDMs outside calibration regions. This exercise revealed that SDM predictions would have led to an underestimate of overlap with fishing effort and potentially misinformed bycatch mitigation efforts. Although SDMs can elucidate potential distribution ... Other/Unknown Material Antarc* Antarctic Marion Island ScholarsArchive@OSU (Oregon State University) Antarctic Kerguelen
institution Open Polar
collection ScholarsArchive@OSU (Oregon State University)
op_collection_id ftoregonstate
language unknown
description Species distribution models (SDMs) are increasingly applied in conservation management to predict suitable habitat for poorly known populations. High predictive performance of SDMs is evident in validations performed within the model calibration area (interpolation), but few studies have assessed SDM transferability to novel areas (extrapolation), particularly across large spatial scales or pelagic ecosystems. We performed rigorous SDM validation tests on distribution data from three populations of a long-ranging marine predator, the grey petrel Procellaria cinerea, to assess model transferability across the Southern Hemisphere (25-65°S). Oceanographic data were combined with tracks of grey petrels from two remote sub-Antarctic islands (Antipodes and Kerguelen) using boosted regression trees to generate three SDMs: one for each island population, and a combined model. The predictive performance of these models was assessed using withheld tracking data from within the model calibration areas (interpolation), and from a third population, Marion Island (extrapolation). Predictive performance was assessed using k-fold cross validation and point biserial correlation. The two population-specific SDMs included the same predictor variables and suggested birds responded to the same broad-scale oceanographic influences. However, all model validation tests, including of the combined model, determined strong interpolation but weak extrapolation capabilities. These results indicate that habitat use reflects both its availability and bird preferences, such that the realized distribution patterns differ for each population. The spatial predictions by the three SDMs were compared with tracking data and fishing effort to demonstrate the conservation pitfalls of extrapolating SDMs outside calibration regions. This exercise revealed that SDM predictions would have led to an underestimate of overlap with fishing effort and potentially misinformed bycatch mitigation efforts. Although SDMs can elucidate potential distribution ...
author Torres, Leigh G.
Sutton, Philip J. H.
Thompson, David R.
spellingShingle Torres, Leigh G.
Sutton, Philip J. H.
Thompson, David R.
TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf
author_facet Torres, Leigh G.
Sutton, Philip J. H.
Thompson, David R.
author_sort Torres, Leigh G.
title TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf
title_short TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf
title_full TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf
title_fullStr TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf
title_full_unstemmed TorresLeighFisheriesWildlifePoorTransferabilitySpecies.pdf
title_sort torresleighfisherieswildlifepoortransferabilityspecies.pdf
url https://ir.library.oregonstate.edu/concern/articles/pn89d8675
geographic Antarctic
Kerguelen
geographic_facet Antarctic
Kerguelen
genre Antarc*
Antarctic
Marion Island
genre_facet Antarc*
Antarctic
Marion Island
op_relation https://ir.library.oregonstate.edu/concern/articles/pn89d8675
op_rights In Copyright
_version_ 1796310761753018368