Painter Michael S, Silovský Václav, Blanco Justin, Holton Mark, Faltusová Monika, Wilson Rory, Börger Luca, Psotta Liza, Ramos-Almodovar Fabian, Estrada Luis, Landler Lukas, Malkemper Pascal, Hart Vlastimil, Ježek Miloš
Department of Biology Barry University Miami Shores Florida USA.
Department of Game Management and Wildlife Biology, Faculty of Forestry and Wood Sciences Czech University of Life Sciences Prague Czech Republic.
Ecol Evol. 2024 Sep 23;14(9):e70264. doi: 10.1002/ece3.70264. eCollection 2024 Sep.
Biologging has proven to be a powerful approach to investigate diverse questions related to movement ecology across a range of spatiotemporal scales and increasingly relies on multidisciplinary expertise. However, the variety of animal-borne equipment, coupled with little consensus regarding analytical approaches to interpret large, complex data sets presents challenges and makes comparison between studies and study species difficult. Here, we present a combined hardware and analytical approach for standardizing the collection, analysis, and interpretation of multisensor biologging data. Here, we present (i) a custom-designed integrated multisensor collar (IMSC), which was field tested on 71 free-ranging wild boar () over 2 years; (ii) a machine learning behavioral classifier capable of identifying six behaviors in free-roaming boar, validated across individuals equipped with differing collar designs; and (iii) laboratory and field-based calibration and accuracy assessments of animal magnetic heading measurements derived from raw magnetometer data. The IMSC capacity and durability exceeded expectations, with a 94% collar recovery rate and a 75% cumulative data recording success rate, with a maximum logging duration of 421 days. The behavioral classifier had an overall accuracy of 85% in identifying the six behavioral classes when tested on multiple collar designs and improved to 90% when tested on data exclusively from the IMSC. Both laboratory and field tests of magnetic compass headings were in precise agreement with expectations, with overall median magnetic headings deviating from ground truth observations by 1.7° and 0°, respectively. Although multisensor equipment and sophisticated analyses are now commonplace in biologging studies, the IMSC hardware and analytical framework presented here provide a valuable tool for biologging researchers and will facilitate standardization of biologging data across studies. In addition, we highlight the potential of additional analyses available using this framework that can be adapted for use in future studies on terrestrial mammals.
生物记录已被证明是一种强有力的方法,可用于研究一系列时空尺度上与运动生态学相关的各种问题,并且越来越依赖多学科专业知识。然而,动物携带设备的多样性,再加上在解释大型复杂数据集的分析方法上缺乏共识,带来了挑战,使得不同研究和研究物种之间的比较变得困难。在此,我们提出一种硬件与分析相结合的方法,用于规范多传感器生物记录数据的收集、分析和解释。在此,我们展示了:(i)一种定制设计的集成多传感器项圈(IMSC),其在两年内对71头自由放养的野猪进行了野外测试;(ii)一种机器学习行为分类器,能够识别自由活动野猪的六种行为,在配备不同项圈设计的个体中得到了验证;以及(iii)基于实验室和野外的校准以及对从原始磁力计数据得出的动物磁航向测量的准确性评估。IMSC的容量和耐用性超出预期,项圈回收率为94%,累积数据记录成功率为75%,最大记录时长为421天。当在多种项圈设计上进行测试时,行为分类器识别这六种行为类别的总体准确率为85%,而仅在IMSC的数据上进行测试时,准确率提高到了90%。磁罗盘航向的实验室和野外测试结果均与预期精确相符,总体磁航向中位数与地面真实观测值的偏差分别为1.7°和0°。尽管多传感器设备和复杂分析如今在生物记录研究中已很常见,但本文介绍的IMSC硬件和分析框架为生物记录研究人员提供了一个有价值的工具,并将促进跨研究的生物记录数据标准化。此外,我们强调了使用此框架进行额外分析的潜力,这些分析可适用于未来对陆生哺乳动物的研究。