Unsupervised Ethograms of a Vulnerable Bird Species: The Red-Footed Falcon in Northern Italy

IF 1.7 Q3 ECOLOGY
Ecologies Pub Date : 2022-09-23 DOI:10.3390/ecologies3040031
A. Ferrarini, M. Gustin
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引用次数: 1

Abstract

Behavioral and movement ecology have quickly advanced as a result of the development of biotelemetry devices and analytical techniques. Global positioning system (GPS) transmitters assist scientists in gathering location and movement data at detailed spatial and temporal resolutions. Machine-learning methods can then be applied to GPS data to provide insights into the ecological mechanisms of animal behavior and movements. By means of accurate GPS data-loggers, in 2019, 2020, and 2021, we tracked 8 red-footed falcons at the two largest colonies in Italy. We collected 13,484 GPS points and used recently introduced machine-learning methodology Unsupervised Animal Behaviour Examiner (UABE) to deduce the regular, nested, and hourly ethograms of the tracked individuals. We found clear and significant patterns of the red-footed falcons’ behaviors on monthly, daily, and hourly bases. Our study is a step forward in advancing the knowledge of this threatened species, and provides a baseline assessment of the current behavioral patterns of this red-footed falcon population, with which results of future studies can be compared to detect potential behavioral changes that act as early warnings of increased human disturbance.
一种脆弱鸟类的无监督民族志:意大利北部的红脚隼
由于生物遥测设备和分析技术的发展,行为和运动生态学得到了迅速的发展。全球定位系统(GPS)发射器帮助科学家以详细的空间和时间分辨率收集位置和运动数据。然后,机器学习方法可以应用于GPS数据,以深入了解动物行为和运动的生态机制。通过精确的GPS数据记录器,在2019年、2020年和2021年,我们在意大利两个最大的栖息地追踪了8只红脚猎鹰。我们收集了13484个GPS点,并使用最近引入的机器学习方法Unsupervised Animal Behaviour Examiner (UABE)来推断被跟踪个体的规则、嵌套和每小时的行为图。我们在月、日、时的基础上发现了明显的红脚隼行为模式。我们的研究在提高对这一濒危物种的认识方面迈出了一步,并提供了对红脚隼种群当前行为模式的基线评估,与未来研究的结果相比较,可以发现潜在的行为变化,作为人类干扰增加的早期预警。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.80
自引率
0.00%
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