Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle

The ability of individual animals to balance their energy budgets throughout the annual cycle is important for their survival, reproduction and population dynamics. However, the annual cycles of many wild, mobile animals are difficult to observe and our understanding of how individuals balance their...

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Published in:Functional Ecology
Main Authors: Dunn, Ruth E, Green, Jonathan A, Wanless, Sarah, Harris, Mike P, Newell, Mark A, Bogdanova, Maria I, Horswill, Catharine, Daunt, Francis, Matthiopoulos, Jason
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2022
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Online Access:http://livrepository.liverpool.ac.uk/3156077/
https://doi.org/10.1111/1365-2435.14059
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spelling ftunivliverpool:oai:livrepository.liverpool.ac.uk:3156077 2023-05-15T18:41:32+02:00 Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle Dunn, Ruth E Green, Jonathan A Wanless, Sarah Harris, Mike P Newell, Mark A Bogdanova, Maria I Horswill, Catharine Daunt, Francis Matthiopoulos, Jason 2022 http://livrepository.liverpool.ac.uk/3156077/ https://doi.org/10.1111/1365-2435.14059 eng eng Wiley Dunn, Ruth E orcid:0000-0003-0927-2734 , Green, Jonathan A orcid:0000-0001-8692-0163 , Wanless, Sarah, Harris, Mike P, Newell, Mark A, Bogdanova, Maria I, Horswill, Catharine, Daunt, Francis and Matthiopoulos, Jason (2022) Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle. FUNCTIONAL ECOLOGY, 36 (7). pp. 1612-1626. Article NonPeerReviewed 2022 ftunivliverpool https://doi.org/10.1111/1365-2435.14059 2023-01-20T00:16:46Z The ability of individual animals to balance their energy budgets throughout the annual cycle is important for their survival, reproduction and population dynamics. However, the annual cycles of many wild, mobile animals are difficult to observe and our understanding of how individuals balance their energy budgets throughout the year therefore remains poor. We developed a hierarchical Bayesian state‐space model to investigate how key components of animal energy budgets (namely individual energy gain and storage) varied in space and time. Our model used biologger‐derived estimates of time‐activity budgets, locations and energy expenditure to infer year‐round time series of energy income and reserves. The model accounted for seasonality in environmental drivers such as sea surface temperature and daylength, allowing us to identify times and locations of high energy gain. Our study system was a population of common guillemots Uria aalge breeding at a western North Sea colony. These seabirds manage their energy budgets by adjusting their behaviour and accumulating fat reserves. However, typically during severe weather conditions, birds can experience an energy deficit over a sustained period, leading to starvation and large‐scale mortality events. We show that guillemot energy gain varied in both time and space. Estimates of guillemot body mass varied throughout the annual cycle and birds periodically experienced losses in mass. Mass losses were likely to have either been adaptive, or due to energetic bottlenecks, the latter leading to increased susceptibility to mortality. Guillemots tended to be lighter towards the edge of their spatial distribution. We describe a framework that combines biologging data, time‐activity budget analysis and Bayesian state‐space modelling to identify times and locations of high energetic reward or potential energetic bottlenecks in a wild animal population. Our approach can be extended to address ecological and conservation‐driven questions that were previously unanswerable due to ... Article in Journal/Newspaper Uria aalge uria The University of Liverpool Repository Functional Ecology 36 7 1612 1626
institution Open Polar
collection The University of Liverpool Repository
op_collection_id ftunivliverpool
language English
description The ability of individual animals to balance their energy budgets throughout the annual cycle is important for their survival, reproduction and population dynamics. However, the annual cycles of many wild, mobile animals are difficult to observe and our understanding of how individuals balance their energy budgets throughout the year therefore remains poor. We developed a hierarchical Bayesian state‐space model to investigate how key components of animal energy budgets (namely individual energy gain and storage) varied in space and time. Our model used biologger‐derived estimates of time‐activity budgets, locations and energy expenditure to infer year‐round time series of energy income and reserves. The model accounted for seasonality in environmental drivers such as sea surface temperature and daylength, allowing us to identify times and locations of high energy gain. Our study system was a population of common guillemots Uria aalge breeding at a western North Sea colony. These seabirds manage their energy budgets by adjusting their behaviour and accumulating fat reserves. However, typically during severe weather conditions, birds can experience an energy deficit over a sustained period, leading to starvation and large‐scale mortality events. We show that guillemot energy gain varied in both time and space. Estimates of guillemot body mass varied throughout the annual cycle and birds periodically experienced losses in mass. Mass losses were likely to have either been adaptive, or due to energetic bottlenecks, the latter leading to increased susceptibility to mortality. Guillemots tended to be lighter towards the edge of their spatial distribution. We describe a framework that combines biologging data, time‐activity budget analysis and Bayesian state‐space modelling to identify times and locations of high energetic reward or potential energetic bottlenecks in a wild animal population. Our approach can be extended to address ecological and conservation‐driven questions that were previously unanswerable due to ...
format Article in Journal/Newspaper
author Dunn, Ruth E
Green, Jonathan A
Wanless, Sarah
Harris, Mike P
Newell, Mark A
Bogdanova, Maria I
Horswill, Catharine
Daunt, Francis
Matthiopoulos, Jason
spellingShingle Dunn, Ruth E
Green, Jonathan A
Wanless, Sarah
Harris, Mike P
Newell, Mark A
Bogdanova, Maria I
Horswill, Catharine
Daunt, Francis
Matthiopoulos, Jason
Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
author_facet Dunn, Ruth E
Green, Jonathan A
Wanless, Sarah
Harris, Mike P
Newell, Mark A
Bogdanova, Maria I
Horswill, Catharine
Daunt, Francis
Matthiopoulos, Jason
author_sort Dunn, Ruth E
title Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
title_short Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
title_full Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
title_fullStr Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
title_full_unstemmed Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
title_sort modelling and mapping how common guillemots balance their energy budgets over a full annual cycle
publisher Wiley
publishDate 2022
url http://livrepository.liverpool.ac.uk/3156077/
https://doi.org/10.1111/1365-2435.14059
genre Uria aalge
uria
genre_facet Uria aalge
uria
op_relation Dunn, Ruth E orcid:0000-0003-0927-2734 , Green, Jonathan A orcid:0000-0001-8692-0163 , Wanless, Sarah, Harris, Mike P, Newell, Mark A, Bogdanova, Maria I, Horswill, Catharine, Daunt, Francis and Matthiopoulos, Jason (2022) Modelling and mapping how common guillemots balance their energy budgets over a full annual cycle. FUNCTIONAL ECOLOGY, 36 (7). pp. 1612-1626.
op_doi https://doi.org/10.1111/1365-2435.14059
container_title Functional Ecology
container_volume 36
container_issue 7
container_start_page 1612
op_container_end_page 1626
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