Energy selection functions: modelling the energetic drivers of animal movement and habitat use

1. Energetics are a key driver of animal decision-making, as survival depends on the balance between foraging benefits and movement costs. This fundamental perspective is often missing from habitat selection studies, which mainly describe correlations between space use and environmental features, ra...

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Main Authors: Klappstein, Natasha J., Potts, Jonathan, Michelot, Théo, Börger, Luca, Pilfold, Nicholas, Lewis, Mark, Derocher, Andrew
Format: Other/Unknown Material
Language:unknown
Published: Authorea, Inc. 2021
Subjects:
Online Access:http://dx.doi.org/10.22541/au.160640483.30543006/v2
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spelling crwinnower:10.22541/au.160640483.30543006/v2 2024-06-02T08:13:29+00:00 Energy selection functions: modelling the energetic drivers of animal movement and habitat use Klappstein, Natasha J. Potts, Jonathan Michelot, Théo Börger, Luca Pilfold, Nicholas Lewis, Mark Derocher, Andrew 2021 http://dx.doi.org/10.22541/au.160640483.30543006/v2 unknown Authorea, Inc. posted-content 2021 crwinnower https://doi.org/10.22541/au.160640483.30543006/v2 2024-05-07T14:19:19Z 1. Energetics are a key driver of animal decision-making, as survival depends on the balance between foraging benefits and movement costs. This fundamental perspective is often missing from habitat selection studies, which mainly describe correlations between space use and environmental features, rather than the mechanisms behind these correlations. To address this gap, we present a new modelling framework, the energy selection function (ESF), to assess how moving animals choose habitat based on energetic considerations. 2. The ESF considers that the likelihood of an animal selecting a movement step depends directly on the corresponding energetic gains and costs. The parameters of the ESF measure selection for energetic gains and against energetic costs; when estimated jointly, these provide inferences about foraging and movement strategies. The ESF can be implemented easily with standard conditional logistic regression software, allowing for fast inference. We outline a workflow, from data-gathering to statistical analysis, and use a case study of polar bears (Ursus maritimus) as an illustrative example. 3. We show how defining gains and costs at the scale of the movement step allows us to include detailed information about resource distribution, landscape resistance, and movement patterns. We demonstrate this in the polar bear case study, in which the results show how cost-minimization may arise in species that inhabit environments with an unpredictable distribution of energetic gains. 4. The ESF combines the energetic consequences of both movement and resource selection, thus incorporating a key aspect of evolutionary behaviour into habitat selection analysis. Because of its close links to existing habitat selection models, the ESF is widely applicable to any study system where energetic gains and costs can be derived, and has immense potential for methodological extensions. Other/Unknown Material polar bear Ursus maritimus The Winnower
institution Open Polar
collection The Winnower
op_collection_id crwinnower
language unknown
description 1. Energetics are a key driver of animal decision-making, as survival depends on the balance between foraging benefits and movement costs. This fundamental perspective is often missing from habitat selection studies, which mainly describe correlations between space use and environmental features, rather than the mechanisms behind these correlations. To address this gap, we present a new modelling framework, the energy selection function (ESF), to assess how moving animals choose habitat based on energetic considerations. 2. The ESF considers that the likelihood of an animal selecting a movement step depends directly on the corresponding energetic gains and costs. The parameters of the ESF measure selection for energetic gains and against energetic costs; when estimated jointly, these provide inferences about foraging and movement strategies. The ESF can be implemented easily with standard conditional logistic regression software, allowing for fast inference. We outline a workflow, from data-gathering to statistical analysis, and use a case study of polar bears (Ursus maritimus) as an illustrative example. 3. We show how defining gains and costs at the scale of the movement step allows us to include detailed information about resource distribution, landscape resistance, and movement patterns. We demonstrate this in the polar bear case study, in which the results show how cost-minimization may arise in species that inhabit environments with an unpredictable distribution of energetic gains. 4. The ESF combines the energetic consequences of both movement and resource selection, thus incorporating a key aspect of evolutionary behaviour into habitat selection analysis. Because of its close links to existing habitat selection models, the ESF is widely applicable to any study system where energetic gains and costs can be derived, and has immense potential for methodological extensions.
format Other/Unknown Material
author Klappstein, Natasha J.
Potts, Jonathan
Michelot, Théo
Börger, Luca
Pilfold, Nicholas
Lewis, Mark
Derocher, Andrew
spellingShingle Klappstein, Natasha J.
Potts, Jonathan
Michelot, Théo
Börger, Luca
Pilfold, Nicholas
Lewis, Mark
Derocher, Andrew
Energy selection functions: modelling the energetic drivers of animal movement and habitat use
author_facet Klappstein, Natasha J.
Potts, Jonathan
Michelot, Théo
Börger, Luca
Pilfold, Nicholas
Lewis, Mark
Derocher, Andrew
author_sort Klappstein, Natasha J.
title Energy selection functions: modelling the energetic drivers of animal movement and habitat use
title_short Energy selection functions: modelling the energetic drivers of animal movement and habitat use
title_full Energy selection functions: modelling the energetic drivers of animal movement and habitat use
title_fullStr Energy selection functions: modelling the energetic drivers of animal movement and habitat use
title_full_unstemmed Energy selection functions: modelling the energetic drivers of animal movement and habitat use
title_sort energy selection functions: modelling the energetic drivers of animal movement and habitat use
publisher Authorea, Inc.
publishDate 2021
url http://dx.doi.org/10.22541/au.160640483.30543006/v2
genre polar bear
Ursus maritimus
genre_facet polar bear
Ursus maritimus
op_doi https://doi.org/10.22541/au.160640483.30543006/v2
_version_ 1800737011927089152