dynamicSDM: An R package for species geographical distribution and abundance modelling at high spatiotemporal resolution

Author:

Dobson Rachel1ORCID,Challinor Andy J.2ORCID,Cheke Robert A.3ORCID,Jennings Stewart2ORCID,Willis Stephen G.4ORCID,Dallimer Martin1ORCID

Affiliation:

1. Sustainability Research Institute, School of Earth and Environment University of Leeds Leeds UK

2. Institute for Climate and Atmospheric Science, School of Earth and Environment University of Leeds Leeds UK

3. Natural Resources Institute University of Greenwich at Medway Central Avenue, Chatham Maritime Chatham Kent ME4 4TB UK

4. Conservation Ecology Group, Department of Biosciences Durham University Durham UK

Abstract

Abstract Species distribution models (SDM) are widely applied to understand changing species geographical distribution and abundance patterns. However, existing SDM tools are inherently static and inadequate for modelling species distributions that are driven by dynamic environmental conditions. dynamicSDM provides novel tools that explicitly consider the temporal dimension at key SDM stages, including functions for: (a) Cleaning and filtering species occurrence records by spatial and temporal qualities; (b) Generating pseudo‐absence records through space and time; (c) Extracting spatiotemporally buffered explanatory variables; (d) Fitting SDMs whilst accounting for temporal biases and autocorrelation and (e) Projecting intra‐ and inter‐ annual geographical distributions and abundances at high spatiotemporal resolution. Package functions have been designed to be: flexible for targeting specific study species; compatible with other SDM tools; and, by utilising Google Earth Engine and Google Drive, to have low computing power and storage needs. We illustrate dynamicSDM functions with an example of a nomadic bird in southern Africa, the red‐billed quelea Quelea quelea. As dynamicSDM functions are flexible and easily applied, we suggest that these tools could be readily applied to other taxa and systems globally.

Funder

Biotechnology and Biological Sciences Research Council

Natural Environment Research Council

Publisher

Wiley

Subject

Ecological Modeling,Ecology, Evolution, Behavior and Systematics

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