Fred Tremblay, Emily S Choy, Shannon Whelan, Scott Hatch, Kyle H Elliott
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Here, we used GPS-accelerometry in breeding black-legged kittiwakes (Rissa tridactyla, n=80) to calculate DBA and time-energy budgets derived from simple biologging metrics (speed, wingbeat frequency, GPS position). We then compared these two approaches with estimates of energy expenditure from doubly labelled water (DLW). Energy expenditure estimated from DLW correlated with DBA, but the best model to estimate energy expenditure was based on time-energy budgets. Energetic costs of flapping flight were higher than all other kittiwake behaviours (5.54×basal metabolic rate, BMR). Energetic costs of gliding flight (0.80×BMR) were the lowest of all behaviours, and equivalent to the cost of resting at the colony. DEE for our birds estimated from our calibration coefficients was similar to DEE for our birds estimated with the model coefficient published using different methods. We conclude that once calibrated with DLW, GPS-accelerometry provides a simple method for measuring energy expenditure in wild kittiwakes based on time-energy budgets.</p>","PeriodicalId":15786,"journal":{"name":"Journal of Experimental Biology","volume":null,"pages":null},"PeriodicalIF":2.8000,"publicationDate":"2024-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Time-energy budgets outperform dynamic body acceleration in predicting daily energy expenditure in kittiwakes, and estimate a very low cost of gliding flight relative to flapping flight.\",\"authors\":\"Fred Tremblay, Emily S Choy, Shannon Whelan, Scott Hatch, Kyle H Elliott\",\"doi\":\"10.1242/jeb.247176\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Energy is a common currency for any living organism, yet estimating energy expenditure in wild animals is challenging. 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引用次数: 0
摘要
能量是任何生物体的通用货币,但估算野生动物的能量消耗却极具挑战性。加速度计通常通过动态身体加速度(DBA)或时间能量预算方法来估算能量消耗。动态身体加速度方法直接通过加速度估算能量消耗,但在非活动状态下,加速度为零但能量消耗不是零时,可能会导致估算错误。时间能量预算法使用加速度计和其他数据流为每个时间步骤分配一个行为,然后根据分配给每个行为的特定活动代谢率计算能量消耗。在这里,我们使用全球定位系统加速度测量法对正在繁殖的黑脚海燕(Rissa tridactyla,n=80)进行了研究,计算出了DBA和由简单生物指标(速度、拍翅频率、全球定位系统位置)得出的时间能量预算。然后,我们将这两种方法与双标记水的能量消耗估计值进行了比较。从DLW估算的能量消耗与DBA相关,但估算能量消耗的最佳模型是基于时间能量预算。拍打飞行的能量成本高于其他所有行为(5.54 x 基础代谢率)。滑翔飞行的能量成本(0.80 x 基础代谢率)是所有行为中最低的,相当于在鸟群中休息的成本。根据我们的校准系数估算出的我们的鸟类的DEE与使用不同方法公布的模型系数估算出的我们的鸟类的DEE相似。我们的结论是,一旦用 DLW 进行校准,GPS-加速度计就能提供一种基于时间能量预算的简单方法来测量野生海燕的能量消耗。
Time-energy budgets outperform dynamic body acceleration in predicting daily energy expenditure in kittiwakes, and estimate a very low cost of gliding flight relative to flapping flight.
Energy is a common currency for any living organism, yet estimating energy expenditure in wild animals is challenging. Accelerometers are commonly used to estimate energy expenditure, via a dynamic body acceleration (DBA) or time-energy budget approach. The DBA approach estimates energy expenditure directly from acceleration but may lead to erroneous estimates during inactivity when acceleration is zero but energy expenditure is not. The time-energy budget approach uses accelerometers and other data streams to assign a behaviour to each time step, and then calculates energy expenditure based on activity-specific metabolic rates assigned to each behaviour. Here, we used GPS-accelerometry in breeding black-legged kittiwakes (Rissa tridactyla, n=80) to calculate DBA and time-energy budgets derived from simple biologging metrics (speed, wingbeat frequency, GPS position). We then compared these two approaches with estimates of energy expenditure from doubly labelled water (DLW). Energy expenditure estimated from DLW correlated with DBA, but the best model to estimate energy expenditure was based on time-energy budgets. Energetic costs of flapping flight were higher than all other kittiwake behaviours (5.54×basal metabolic rate, BMR). Energetic costs of gliding flight (0.80×BMR) were the lowest of all behaviours, and equivalent to the cost of resting at the colony. DEE for our birds estimated from our calibration coefficients was similar to DEE for our birds estimated with the model coefficient published using different methods. We conclude that once calibrated with DLW, GPS-accelerometry provides a simple method for measuring energy expenditure in wild kittiwakes based on time-energy budgets.
期刊介绍:
Journal of Experimental Biology is the leading primary research journal in comparative physiology and publishes papers on the form and function of living organisms at all levels of biological organisation, from the molecular and subcellular to the integrated whole animal.