Jannis Gottwald, Raphaël Royauté, Marcel Becker, Tobias Geitz, Jonas Höchst, Patrick Lampe, Lea Leister, Kim Lindner, Julia Maier, Sascha Rösner, Dana G. Schabo, Bernd Freisleben, Roland Brandl, Thomas Mueller, Nina Farwig, Thomas Nauss
- he most basic behavioural states of animals can be described as active or passive. While high-resolution observations of activity patterns can provide insights into the ecology of animal species, few methods are able to measure the activity of individuals of small taxa in their natural environment. We present a novel approach in which a combination of automatic radiotracking and machine learning is used to distinguish between active and passive behaviour in small vertebrates fitted with lightweight transmitters (<0.4 g).
We used a dataset containing >3 million signals from very-high-frequency (VHF) telemetry from two forest-dwelling bat species (Myotis bechsteinii [n = 52] and Nyctalus leisleri [n = 20]) to train and test a random forest model in assigning either active or passive behaviour to VHF-tagged individuals. The generalisability of the model was demonstrated by recording and classifying the behaviour of tagged birds and by simulating the effect of different activity levels with the help of humans carrying transmitters. The model successfully classified the activity states of bats as well as those of birds and humans, although the latter were not included in model training (F1 0.96–0.98).
We provide an ecological case-study demonstrating the potential of this automated monitoring tool. We used the trained models to compare differences in the daily activity patterns of two bat species. The analysis showed a pronounced bimodal activity distribution of N. leisleri over the course of the night while the night-time activity of M. bechsteinii was relatively constant. These results show that subtle differences in the timing of species' activity can be distinguished using our method.
Our approach can classify VHF-signal patterns into fundamental behavioural states with high precision and is applicable to different terrestrial and flying vertebrates. To encourage the broader use of our radiotracking method, we provide the trained random forest models together with an R package that includes all necessary data processing functionalities. In combination with state-of-the-art open-source automated radiotracking, this toolset can be used by the scientific community to investigate the activity patterns of small vertebrates with high temporal resolution, even in dense vegetation.
MetadatenAuthor: | Jannis GottwaldORCiD, Raphaël RoyautéORCiD, Marcel BeckerORCiD, Tobias Geitz, Jonas HöchstORCiDGND, Patrick LampeORCiDGND, Lea Leister, Kim LindnerORCiD, Julia Maier, Sascha RösnerORCiDGND, Dana G. SchaboORCiD, Bernd FreislebenORCiDGND, Roland BrandlGND, Thomas MuellerORCiDGND, Nina FarwigORCiDGND, Thomas NaussORCiDGND |
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URN: | urn:nbn:de:hebis:30:3-749748 |
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DOI: | https://doi.org/10.1111/2041-210X.14037 |
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ISSN: | 2041-210X |
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Parent Title (English): | Methods in ecology and evolution |
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Publisher: | Wiley |
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Place of publication: | Oxford [u.a.] |
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Document Type: | Article |
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Language: | English |
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Date of Publication (online): | 2022/12/05 |
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Date of first Publication: | 2022/12/05 |
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Publishing Institution: | Universitätsbibliothek Johann Christian Senckenberg |
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Release Date: | 2023/08/01 |
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Tag: | Myotis bechsteinii; Nyctalus leisleri; automated radiotelemetry system; bats; behaviour; birds; generalised additive models; machine learning; random forest; small animals; tRackIT |
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Volume: | 14 |
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Issue: | 1 |
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Page Number: | 13 |
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First Page: | 252 |
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Last Page: | 264 |
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HeBIS-PPN: | 512574731 |
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Institutes: | Biowissenschaften |
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| Angeschlossene und kooperierende Institutionen / Senckenbergische Naturforschende Gesellschaft |
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| Fachübergreifende Einrichtungen / Biodiversität und Klima Forschungszentrum (BiK-F) |
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Dewey Decimal Classification: | 5 Naturwissenschaften und Mathematik / 59 Tiere (Zoologie) / 590 Tiere (Zoologie) |
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Sammlungen: | Universitätspublikationen |
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Licence (German): | Creative Commons - Namensnennung 4.0 |
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