Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement
Abstract Background Animals respond to environmental variation by changing their movement in a multifaceted way. Recent advancements in biologging increasingly allow for detailed measurements of the multifaceted nature of movement, from descriptors of animal movement trajectories (e.g., using GPS) t...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
BMC
2020-10-01
|
Series: | Movement Ecology |
Subjects: | |
Online Access: | http://link.springer.com/article/10.1186/s40462-020-00228-4 |
id |
doaj-295da2b954cc4c3aa58a7bf2ab72e8be |
---|---|
record_format |
Article |
spelling |
doaj-295da2b954cc4c3aa58a7bf2ab72e8be2020-11-25T03:33:34ZengBMCMovement Ecology2051-39332020-10-018111810.1186/s40462-020-00228-4Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movementJ. A. J. Eikelboom0H. J. de Knegt1M. Klaver2F. van Langevelde3T. van der Wal4H. H. T. Prins5Wildlife Ecology and Conservation Group, Wageningen University and ResearchWildlife Ecology and Conservation Group, Wageningen University and ResearchWildlife Ecology and Conservation Group, Wageningen University and ResearchWildlife Ecology and Conservation Group, Wageningen University and ResearchSpatial Knowledge Systems, Wageningen Environmental ResearchWildlife Ecology and Conservation Group, Wageningen University and ResearchAbstract Background Animals respond to environmental variation by changing their movement in a multifaceted way. Recent advancements in biologging increasingly allow for detailed measurements of the multifaceted nature of movement, from descriptors of animal movement trajectories (e.g., using GPS) to descriptors of body part movements (e.g., using tri-axial accelerometers). Because this multivariate richness of movement data complicates inference on the environmental influence on animal movement, studies generally use simplified movement descriptors in statistical analyses. However, doing so limits the inference on the environmental influence on movement, as this requires that the multivariate richness of movement data can be fully considered in an analysis. Methods We propose a data-driven analytic framework, based on existing methods, to quantify the environmental influence on animal movement that can accommodate the multifaceted nature of animal movement. Instead of fitting a simplified movement descriptor to a suite of environmental variables, our proposed framework centres on predicting an environmental variable from the full set of multivariate movement data. The measure of fit of this prediction is taken to be the metric that quantifies how much of the environmental variation relates to the multivariate variation in animal movement. We demonstrate the usefulness of this framework through a case study about the influence of grass availability and time since milking on cow movements using machine learning algorithms. Results We show that on a one-hour timescale 37% of the variation in grass availability and 33% of time since milking influenced cow movements. Grass availability mostly influenced the cows’ neck movement during grazing, while time since milking mostly influenced the movement through the landscape and the shared variation of accelerometer and GPS data (e.g., activity patterns). Furthermore, this framework proved to be insensitive to spurious correlations between environmental variables in quantifying the influence on animal movement. Conclusions Not only is our proposed framework well-suited to study the environmental influence on animal movement; we argue that it can also be applied in any field that uses multivariate biologging data, e.g., animal physiology, to study the relationships between animals and their environment.http://link.springer.com/article/10.1186/s40462-020-00228-4Behaviour classificationCollective movementCowsForagingGroup dynamicsLactation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
J. A. J. Eikelboom H. J. de Knegt M. Klaver F. van Langevelde T. van der Wal H. H. T. Prins |
spellingShingle |
J. A. J. Eikelboom H. J. de Knegt M. Klaver F. van Langevelde T. van der Wal H. H. T. Prins Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement Movement Ecology Behaviour classification Collective movement Cows Foraging Group dynamics Lactation |
author_facet |
J. A. J. Eikelboom H. J. de Knegt M. Klaver F. van Langevelde T. van der Wal H. H. T. Prins |
author_sort |
J. A. J. Eikelboom |
title |
Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement |
title_short |
Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement |
title_full |
Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement |
title_fullStr |
Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement |
title_full_unstemmed |
Inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement |
title_sort |
inferring an animal’s environment through biologging: quantifying the environmental influence on animal movement |
publisher |
BMC |
series |
Movement Ecology |
issn |
2051-3933 |
publishDate |
2020-10-01 |
description |
Abstract Background Animals respond to environmental variation by changing their movement in a multifaceted way. Recent advancements in biologging increasingly allow for detailed measurements of the multifaceted nature of movement, from descriptors of animal movement trajectories (e.g., using GPS) to descriptors of body part movements (e.g., using tri-axial accelerometers). Because this multivariate richness of movement data complicates inference on the environmental influence on animal movement, studies generally use simplified movement descriptors in statistical analyses. However, doing so limits the inference on the environmental influence on movement, as this requires that the multivariate richness of movement data can be fully considered in an analysis. Methods We propose a data-driven analytic framework, based on existing methods, to quantify the environmental influence on animal movement that can accommodate the multifaceted nature of animal movement. Instead of fitting a simplified movement descriptor to a suite of environmental variables, our proposed framework centres on predicting an environmental variable from the full set of multivariate movement data. The measure of fit of this prediction is taken to be the metric that quantifies how much of the environmental variation relates to the multivariate variation in animal movement. We demonstrate the usefulness of this framework through a case study about the influence of grass availability and time since milking on cow movements using machine learning algorithms. Results We show that on a one-hour timescale 37% of the variation in grass availability and 33% of time since milking influenced cow movements. Grass availability mostly influenced the cows’ neck movement during grazing, while time since milking mostly influenced the movement through the landscape and the shared variation of accelerometer and GPS data (e.g., activity patterns). Furthermore, this framework proved to be insensitive to spurious correlations between environmental variables in quantifying the influence on animal movement. Conclusions Not only is our proposed framework well-suited to study the environmental influence on animal movement; we argue that it can also be applied in any field that uses multivariate biologging data, e.g., animal physiology, to study the relationships between animals and their environment. |
topic |
Behaviour classification Collective movement Cows Foraging Group dynamics Lactation |
url |
http://link.springer.com/article/10.1186/s40462-020-00228-4 |
work_keys_str_mv |
AT jajeikelboom inferringananimalsenvironmentthroughbiologgingquantifyingtheenvironmentalinfluenceonanimalmovement AT hjdeknegt inferringananimalsenvironmentthroughbiologgingquantifyingtheenvironmentalinfluenceonanimalmovement AT mklaver inferringananimalsenvironmentthroughbiologgingquantifyingtheenvironmentalinfluenceonanimalmovement AT fvanlangevelde inferringananimalsenvironmentthroughbiologgingquantifyingtheenvironmentalinfluenceonanimalmovement AT tvanderwal inferringananimalsenvironmentthroughbiologgingquantifyingtheenvironmentalinfluenceonanimalmovement AT hhtprins inferringananimalsenvironmentthroughbiologgingquantifyingtheenvironmentalinfluenceonanimalmovement |
_version_ |
1724562913153253376 |