Using non-continuous accelerometry to identify cryptic nesting events of Galapagos giant tortoises

被引:0
作者
Donovan, Emily Buege [1 ]
Blake, Stephen [2 ,3 ,4 ,5 ]
Deem, Sharon L. [4 ,5 ]
Moldowan, Patrick D. [5 ]
Nieto-Claudin, Ainoa [4 ,5 ]
Cabrera, Freddy [5 ]
Penafiel, Cristian [5 ]
Bastille-Rousseau, Guillaume [1 ]
机构
[1] Southern Illinois Univ, Cooperat Wildlife Res Lab, Carbondale, IL 62901 USA
[2] St Louis Univ, Dept Biol, St Louis, MO USA
[3] Max Planck Inst Anim Behav, Radolfzell am Bodensee, Germany
[4] St Louis Zoo, St Louis, MO USA
[5] Charles Darwin Fdn, Santa Cruz, Galapagos, Ecuador
关键词
Remote observation; Machine learning; Behavior classification; Chelonian; <italic>Chelonoidis</italic> spp; Reproductive monitoring; ACCELERATION DATA; ANIMAL BEHAVIOR; PATTERNS; STRATEGIES; MIGRATION; MOVEMENT; TURTLES; SIZE;
D O I
10.1186/s40317-024-00387-w
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
BackgroundTriaxial accelerometers have revolutionized wildlife research by providing an unprecedented understanding of the behavior of free-living animals. Machine learning is often applied to acceleration data to classify diverse animal behaviors across taxa. However, the high frequency, continuous data collection typically favored for behavioral classification studies often generates very large data sets, which may inhibit remote data acquisition and make data storage challenging. Coarse-frequency sampling or non-continuous bursts of acceleration data reduce these problems. To analyze such data, a suite of variables that summarize key features of the behavior of interest can be generated. These variables can then be used in numerous classification approaches, accommodating variation in data collection methods or sampling regimes. We demonstrate the potential for non-continuous accelerometer data to identify long-duration behavior and employ machine learning to classify the nesting behaviors of the critically endangered eastern Santa Cruz giant tortoise (Chelonoidis donfaustoi).ResultsWe field validated 112 nesting events from 21 giant tortoises. We then derived summary statistics based on accelerometry (e.g., overall dynamic body acceleration, metrics comparing acceleration before and after the probable event) and used them as inputs for Random Forest and Boosted Regression Tree classification algorithms. Our models produced a harmonic mean of precision and sensitivity (F1-score) of 0.91. We tested the generality of our model and found that the model performs well when applied to both novel individuals and years. The most important variable in accurately classifying data sequences was the proportion of acceleration data bursts above an activity threshold followed by the average overall dynamic body acceleration value of the bursts.ConclusionsThese results demonstrate the feasibility and efficacy of using non-continuous accelerometer data to identify prolonged, biologically relevant behaviors in free-living wildlife. By using summary variables that do not require continuous sampling, this approach facilitates long-term monitoring of animal behavior. Similar methodology has potential to inform priority questions in ecology and conservation, such as predicting wildlife responses to climate change and identifying critical habitats, with applications across diverse species and behaviors.
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页数:16
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共 111 条
  • [91] Long-term conservation efforts contribute to positive green turtle Chelonia mydas nesting trend at Tortuguero, Costa Rica
    Troëng, S
    Rankin, E
    [J]. BIOLOGICAL CONSERVATION, 2005, 121 (01) : 111 - 116
  • [92] Trueman Mandy, 2010, Galapagos Research, V67, P26
  • [93] Use of Automated Radio Telemetry to Detect Nesting Activity in Ornate Box Turtles, Terrapene Ornata
    Tucker, Charles R.
    Radzio, Thomas A.
    Strickland, Jeramie T.
    Britton, Ed
    Delaney, David K.
    Ligon, Day B.
    [J]. AMERICAN MIDLAND NATURALIST, 2014, 171 (01) : 78 - 89
  • [94] The secret life of wild animals revealed by accelerometer data: how landscape diversity and seasonality influence the behavioural types of European hares
    Ullmann, Wiebke
    Fischer, Christina
    Kramer-Schadt, Stephanie
    Pirhofer Walzl, Karin
    Eccard, Jana A.
    Wevers, Jan Philipp
    Hardert, Angelique
    Sliwinski, Katharina
    Crawford, Michael S.
    Glemnitz, Michael
    Blaum, Niels
    [J]. LANDSCAPE ECOLOGY, 2023, 38 (12) : 3081 - 3095
  • [95] Machine learning algorithm validation with a limited sample size
    Vabalas, Andrius
    Gowen, Emma
    Poliakoff, Ellen
    Casson, Alexander J.
    [J]. PLOS ONE, 2019, 14 (11):
  • [96] Vazquez Diosdado J.A., 2015, Anim. Biotelem., V3, DOI DOI 10.1186/S40317-015-0045-8
  • [97] Machine learning for inferring animal behavior from location and movement data
    Wang, Guiming
    [J]. ECOLOGICAL INFORMATICS, 2019, 49 : 69 - 76
  • [98] Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data
    Wang, Jun
    He, Zhitao
    Zheng, Guoqiang
    Gao, Song
    Zhao, Kaixuan
    [J]. PLOS ONE, 2018, 13 (09):
  • [99] Movement, resting, and attack behaviors of wild pumas are revealed by tri-axial accelerometer measurements
    Wang, Yiwei
    Nickel, Barry
    Rutishauser, Matthew
    Bryce, Caleb M.
    Williams, Terrie M.
    Elkaim, Gabriel
    Wilmers, Christopher C.
    [J]. MOVEMENT ECOLOGY, 2015, 3
  • [100] Activity Time Budget during Foraging Trips of Emperor Penguins
    Watanabe, Shinichi
    Sato, Katsufumi
    Ponganis, Paul J.
    [J]. PLOS ONE, 2012, 7 (11):