Innovative Use of Depth Data to Estimate Energy Intake and Expenditure in Adélie Penguins - Zone Atelier Antarctique et Terres Australes
Article Dans Une Revue Journal of Experimental Biology Année : 2024

Innovative Use of Depth Data to Estimate Energy Intake and Expenditure in Adélie Penguins

Résumé

Abstract Energy governs species’ life histories and pace of living, requiring individuals to make trade-offs. However, measuring energetic parameters in the wild is challenging, often resulting in data collected from heterogeneous sources. This complicates comprehensive analysis and hampers transferability within and across case studies. We present a novel framework, combining information obtained from eco-physiology and bio-logging techniques, to estimate both energy expended and acquired on 48 Adélie penguins ( Pygoscelis adeliae ) during the chick-rearing stage. We employ the machine learning algorithm random forest (RF) to predict accelerometry-estimated foraging behaviour using depth data (our proxy for energy acquisition). We also build a time-activity model calibrated with doubly labelled water data to estimate energy expenditure. Using depth-derived time spent diving and amount of vertical movement in the sub-surface phase, we accurately predict energy expenditure (R² = 0.70). Movement metrics derived from depth data modelled with the RF algorithm were able to accurately (accuracy = 0.82) detect the same foraging behaviour predicted from accelerometry. The RF more accurately predicted accelerometry-estimated time spent foraging (R² = 0.81) compared to historical proxies like number of undulations (R² = 0.51) or dive bottom duration (R² = 0.31). The proposed framework is accurate, reliable and simple to implement, enabling to couple energy intake and expenditure, which is crucial to further assess individual trade-offs. We provide universal guidelines for predicting these parameters based on widely used bio-logging technology in marine species. Our work allows us to revisit historical data, to study how long-term environmental changes affect animals’ energetics. Summary statement Using machine learning, we estimated energy expenditure and foraging activity of free-ranging Adélie penguins using depth data recorded with bio-logging devices.
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Dates et versions

hal-04784622 , version 1 (15-11-2024)

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Benjamin Dupuis, Akiko Kato, Olivia Hicks, Danuta Wisniewska, Coline Marciau, et al.. Innovative Use of Depth Data to Estimate Energy Intake and Expenditure in Adélie Penguins. Journal of Experimental Biology, 2024, ⟨10.1101/2024.07.02.601650⟩. ⟨hal-04784622⟩
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