Litcius/Paper detail

How to scale up from animal movement decisions to spatiotemporal patterns: An approach via step selection

Jonathan R. Potts, Luca Börger

2022Journal of Animal Ecology65 citationsDOIOpen Access PDF

Abstract

Uncovering the mechanisms behind animal space use patterns is of vital importance for predictive ecology, thus conservation and management of ecosystems. Movement is a core driver of those patterns so understanding how movement mechanisms give rise to space use patterns has become an increasingly active area of research. This study focuses on a particular strand of research in this area, based around step selection analysis (SSA). SSA is a popular way of inferring drivers of movement decisions, but, perhaps less well appreciated, it also parametrises a model of animal movement. Of key interest is that this model can be propagated forwards in time to predict the space use patterns over broader spatial and temporal scales than those that pertain to the proximate movement decisions of animals. Here, we provide a guide for understanding and using the various existing techniques for scaling up step selection models to predict broad-scale space use patterns. We give practical guidance on when to use which technique, as well as specific examples together with code in R and Python. By pulling together various disparate techniques into one place, and providing code and instructions in simple examples, we hope to highlight the importance of these techniques and make them accessible to a wider range of ecologists, ultimately helping expand the usefulness of SSA.

Topics & Concepts

Python (programming language)Computer scienceMovement (music)Selection (genetic algorithm)Data scienceTemporal scalesScale (ratio)Code (set theory)Space (punctuation)EcologyArtificial intelligenceGeographyCartographyBiologyAestheticsPhilosophyOperating systemProgramming languageSet (abstract data type)Wildlife Ecology and ConservationEcology and Vegetation Dynamics StudiesWildlife-Road Interactions and Conservation