Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago
Abstract In the field of biological conservation, mathematical modeling has been an indispensable tool to advance our understanding of population dynamics. Modeling rare and endangered species with complex ecophysiological tools can be challenging due to the constraints imposed by data availability....
Main Authors: | , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Wiley
2019-12-01
|
Series: | Ecosphere |
Subjects: | |
Online Access: | https://doi.org/10.1002/ecs2.2976 |
id |
doaj-3732071a38464e67bcec7212e2ae2221 |
---|---|
record_format |
Article |
spelling |
doaj-3732071a38464e67bcec7212e2ae22212020-11-25T01:37:09ZengWileyEcosphere2150-89252019-12-011012n/an/a10.1002/ecs2.2976Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic ArchipelagoSamarth Kaluskar0E. Agnes Blukacz‐Richards1Cheryl Ann Johnson2Yuhong He3Alexandre Langlois4Dong‐Kyun Kim5George Arhonditsis6Ecological Modelling Laboratory Department of Physical and Environmental Sciences University of Toronto Toronto Ontario CanadaEcological Modelling Laboratory Department of Physical and Environmental Sciences University of Toronto Toronto Ontario CanadaLandscape Science & Technology Environment and Climate Change Canada Ottawa Ontario CanadaDepartment of Geography University of Toronto Mississauga Toronto Ontario CanadaCentre d’Applications et Recherches en Télédétection Université de Sherbrooke Quebec Quebec CanadaEcological Modelling Laboratory Department of Physical and Environmental Sciences University of Toronto Toronto Ontario CanadaEcological Modelling Laboratory Department of Physical and Environmental Sciences University of Toronto Toronto Ontario CanadaAbstract In the field of biological conservation, mathematical modeling has been an indispensable tool to advance our understanding of population dynamics. Modeling rare and endangered species with complex ecophysiological tools can be challenging due to the constraints imposed by data availability. One strategy to overcome the mismatch between what we are trying to learn from a modeling exercise and the available empirical knowledge is to develop statistical models that tend to be more parsimonious. In the present study, we introduce a spatially explicit modeling framework to examine the strength and nature of the relationships of snow density and vegetation abundance with Peary caribou (Rangifer tarandus pearyi) populations. Peary caribou are vital to the livelihood and culture of High Arctic Inuit communities, but changing climatic conditions and anthropogenic disturbances may affect the integrity of this endemic species population. Owing to an estimated decline of over 35% during the last three generations, a recent assessment by the Committee on the Status of Endangered Wildlife in Canada assigned a Threatened status to Peary caribou in 2015. Recognizing the uncertainty typically associated with the selection of the best subset of explanatory variables and their optimal functional relationship with the response variable, we examined four models across six island complexes (Banks, Axel Heiberg, Melville, Bathurst, Mackenzie King, and Boothia) of the Arctic Archipelago and formulated two ensembles to synthesize their predictions into averaged Peary caribou population distributions. Our analysis showed that an ensemble strategy with region‐specific weights displayed the highest performance and most balanced error across the six island complexes. The causal linkages between snow, vegetation abundance, and Peary caribou did manifest themselves with the models examined, but the noise‐to‐signal ratios of the corresponding regression coefficients were generally high and there were instances where they were not discernible from zero. We also present a sensitivity analysis exercise that elucidates the influence of the observation/imputation errors on the model‐training phase, thereby highlighting the importance of assigning realistic error estimates that will not hamper the identification of important cause–effect relationships. Our study identifies critical augmentations of the available scientific knowledge that necessitate to design the optimal management actions of Peary caribou populations across the Canadian Arctic Archipelago.https://doi.org/10.1002/ecs2.2976Bayesian inferenceCanadian Arctic Archipelagoclimate changeensemble modelingPeary caribou |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Samarth Kaluskar E. Agnes Blukacz‐Richards Cheryl Ann Johnson Yuhong He Alexandre Langlois Dong‐Kyun Kim George Arhonditsis |
spellingShingle |
Samarth Kaluskar E. Agnes Blukacz‐Richards Cheryl Ann Johnson Yuhong He Alexandre Langlois Dong‐Kyun Kim George Arhonditsis Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago Ecosphere Bayesian inference Canadian Arctic Archipelago climate change ensemble modeling Peary caribou |
author_facet |
Samarth Kaluskar E. Agnes Blukacz‐Richards Cheryl Ann Johnson Yuhong He Alexandre Langlois Dong‐Kyun Kim George Arhonditsis |
author_sort |
Samarth Kaluskar |
title |
Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago |
title_short |
Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago |
title_full |
Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago |
title_fullStr |
Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago |
title_full_unstemmed |
Development of a model ensemble to predict Peary caribou populations in the Canadian Arctic Archipelago |
title_sort |
development of a model ensemble to predict peary caribou populations in the canadian arctic archipelago |
publisher |
Wiley |
series |
Ecosphere |
issn |
2150-8925 |
publishDate |
2019-12-01 |
description |
Abstract In the field of biological conservation, mathematical modeling has been an indispensable tool to advance our understanding of population dynamics. Modeling rare and endangered species with complex ecophysiological tools can be challenging due to the constraints imposed by data availability. One strategy to overcome the mismatch between what we are trying to learn from a modeling exercise and the available empirical knowledge is to develop statistical models that tend to be more parsimonious. In the present study, we introduce a spatially explicit modeling framework to examine the strength and nature of the relationships of snow density and vegetation abundance with Peary caribou (Rangifer tarandus pearyi) populations. Peary caribou are vital to the livelihood and culture of High Arctic Inuit communities, but changing climatic conditions and anthropogenic disturbances may affect the integrity of this endemic species population. Owing to an estimated decline of over 35% during the last three generations, a recent assessment by the Committee on the Status of Endangered Wildlife in Canada assigned a Threatened status to Peary caribou in 2015. Recognizing the uncertainty typically associated with the selection of the best subset of explanatory variables and their optimal functional relationship with the response variable, we examined four models across six island complexes (Banks, Axel Heiberg, Melville, Bathurst, Mackenzie King, and Boothia) of the Arctic Archipelago and formulated two ensembles to synthesize their predictions into averaged Peary caribou population distributions. Our analysis showed that an ensemble strategy with region‐specific weights displayed the highest performance and most balanced error across the six island complexes. The causal linkages between snow, vegetation abundance, and Peary caribou did manifest themselves with the models examined, but the noise‐to‐signal ratios of the corresponding regression coefficients were generally high and there were instances where they were not discernible from zero. We also present a sensitivity analysis exercise that elucidates the influence of the observation/imputation errors on the model‐training phase, thereby highlighting the importance of assigning realistic error estimates that will not hamper the identification of important cause–effect relationships. Our study identifies critical augmentations of the available scientific knowledge that necessitate to design the optimal management actions of Peary caribou populations across the Canadian Arctic Archipelago. |
topic |
Bayesian inference Canadian Arctic Archipelago climate change ensemble modeling Peary caribou |
url |
https://doi.org/10.1002/ecs2.2976 |
work_keys_str_mv |
AT samarthkaluskar developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago AT eagnesblukaczrichards developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago AT cherylannjohnson developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago AT yuhonghe developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago AT alexandrelanglois developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago AT dongkyunkim developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago AT georgearhonditsis developmentofamodelensembletopredictpearycariboupopulationsinthecanadianarcticarchipelago |
_version_ |
1725059294051696640 |