Replication Data for: Classification of behaviors of free-ranging cattle using accelerometry signatures collected by virtual fence collars

DOI

This dataset includes the scripts to reproduce the models presented in the paper. The cleaned data used for the analyses is also available.

Abstract of the article: Precision farming technology, including GPS collars with biologging, has revolutionized remote livestock monitoring in extensive grazing systems. High resolution accelerometry can be used to infer the behavior of an animal. Previous behavioral classification studies using accelerometer data have focused on a few key behaviors and were mostly conducted in controlled situations. Here, we conducted behavioral observations of 38 beef cows (Hereford, Limousine, Charolais, Simmental/NRF/Hereford mix) free-ranging in rugged, forested areas, and fitted with a commercially available virtual fence collar (Nofence) containing a 10Hz tri-axial accelerometer. We used random forest models to calibrate data from the accelerometers on both commonly documented (e.g., feeding, resting, walking) and rarer (e.g., suckling calf, head butting, allogrooming) behaviors. Our goal was to assess pre-processing decisions including different running mean intervals (smoothing window of 1, 5, or 20 seconds), collar orientation and feature selection (orientation-dependent versus orientation-independent features). We identified the 10 most common behaviors exhibited by the cows. Models based only on orientation-independent features did not perform better than models based on orientation-dependent features, despite variation in how collars were attached (direction and tightness). Using a 20 seconds running mean and orientation-dependent features resulted in the highest model performance (model accuracy: 0.998, precision: 0.991, and recall: 0.989). We also used this model to add 11 rarer behaviors (each 98%). Our study suggests that the accelerometers in the Nofence collars are suitable to identify the most common behaviors of free-ranging cattle. The results of this study could be used in future research for understanding cattle habitat selection in rugged forest ranges, herd dynamics, or responses to stressors such as carnivores, as well as to improve cattle management and welfare.

R, 4.2.1

Behavioral Observation Research Interactive Software, (BORIS), 8.7

Identifier
DOI https://doi.org/10.18710/ND4CLL
Related Identifier IsCitedBy https://doi.org/10.3389/fanim.2023.1083272
Metadata Access https://dataverse.no/oai?verb=GetRecord&metadataPrefix=oai_datacite&identifier=doi:10.18710/ND4CLL
Provenance
Creator Versluijs, Erik ORCID logo
Publisher DataverseNO
Contributor Versluijs, Erik; Inland Norway University of Applied Sciences; Niccolai, Laura J.; Spedener, Mélanie; Zimmermann, Barbara; Hessle, Anna; Tofastrud, Morten; Devineau, Olivier; Evans, Alina L.
Publication Year 2023
Funding Reference The Research Council of Norway 302674
Rights CC0 1.0; info:eu-repo/semantics/openAccess; http://creativecommons.org/publicdomain/zero/1.0
OpenAccess true
Contact Versluijs, Erik (Inland Norway University of Applied Sciences)
Representation
Resource Type Accelerometry data; Dataset
Format text/plain; text/x-r-source
Size 8935; 3976; 771962870; 10844
Version 1.1
Discipline Agricultural Sciences; Agriculture, Forestry, Horticulture, Aquaculture; Agriculture, Forestry, Horticulture, Aquaculture and Veterinary Medicine; Earth and Environmental Science; Environmental Research; Geosciences; Life Sciences; Natural Sciences