4.7 Article

A random walk model that accounts for space occupation and movements of a large herbivore

Journal

SCIENTIFIC REPORTS
Volume 11, Issue 1, Pages -

Publisher

NATURE RESEARCH
DOI: 10.1038/s41598-021-93387-2

Keywords

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Funding

  1. Chair 'Modelisation Mathematique et Biodiversite' of Veolia Environnement-Ecole Polytechnique-Museum National d'Histoire Naturelle-Fondation X
  2. ANR ABIM 26 [ANR-16-CE40-0001]
  3. ANR Mov-It [ANR-16-CE02-0010]
  4. Agence Nationale de la Recherche (ANR) [ANR-16-CE40-0001, ANR-16-CE02-0010] Funding Source: Agence Nationale de la Recherche (ANR)

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Understanding animal movement is crucial for studying behavior, distribution, and habitat use. Current models are often complex and lack practicality, but a simple individual movement model based on GPS data has shown promise in capturing spatial complexity and abnormalities in wild animal behavior. Additional features such as interactions and environmental factors can further improve understanding of animal spatial behavior.
Animal movement has been identified as a key feature in understanding animal behavior, distribution and habitat use and foraging strategies among others. Large datasets of invididual locations often remain unused or used only in part due to the lack of practical models that can directly infer the desired features from raw GPS locations and the complexity of existing approaches. Some of them being disputed for their lack of biological justifications in their design. We propose a simple model of individual movement with explicit parameters, based on a two-dimensional biased and correlated random walk with three forces related to advection (correlation), attraction (bias) and immobility of the animal. These forces can be directly estimated using individual data. We demonstrate the approach by using GPS data of 5 red deer with a high frequency sampling. The results show that a simple random walk template can account for the spatial complexity of wild animals. The practical design of the model is also verified for detecting spatial feature abnormalities and for providing estimates of density and abundance of wild animals. Integrating even more additional features of animal movement, such as individuals' interactions or environmental repellents, could help to better understand the spatial behavior of wild animals.

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