Published June 2, 2022 | Version v1
Dataset Open

Random forest modelling of multi-scale, multi-species habitat associations within KAZA transfrontier conservation area using spoor data

  • 1. University of Oxford
  • 2. Zimbabwe Parks and Wildlife Management Authority, PO Box CY140, Causeway, Harare, Zimbabwe*
  • 3. Ministry of Environment, Natural Resources Conservation and Tourism, Private Bag BO199, Gaborone, Botswana*
  • 4. US Forest Service

Description

As landscape-scale conservation models grow in prominence, assessments of how wildlife utilise multiple-use landscapes are required to inform effective conservation and management planning. Such efforts should strive to incorporate multi-species perspectives to maximise value for conservation, and should account for scale to accurately capture species-environment relationships. We show that the random forest machine learning algorithm can be used to model large-scale sign-based data in a multi-scale framework. We used this method to investigate scale-dependent habitat associations for 16 mammal species of high conservation importance across the southern Kavango Zambezi (KAZA) Transfrontier Conservation Area in Botswana and Zimbabwe. Our findings revealed substantial variation in the factors shaping habitat use across species, and illustrate that different species often have divergent responses to the same environmental and anthropogenic factors, and differ in the scales at which they respond to them. For all variables across all species, scale optimisation most often selected our largest scale. Precipitation, soil nutrients, and vegetation appeared to be the most important factors determining mammal distributions, likely through their associations with food resources for herbivores and, in turn, prey availability for carnivores. Anthropogenic pressures also had an important influence on habitat use, with many species selecting against areas with high cattle density. The variety of relationships with human density indicated that species vary in their tolerance of humans. We found a consistent positive relationship with areas under high protection, and negative relationship with unprotected and less-strictly protected areas. Policy implications: This study highlights the importance of adopting a multi-scale, multi-species approach for critical decision-making processes that depend on understanding wildlife distributions and habitat associations, such as protected area, corridor, and buffer zone prioritisation. We use our findings to identify changing rainfall patterns and increasing livestock numbers as two emerging trends that may impact wildlife distributions, both within sub-Saharan Africa and on a global scale.

Notes

Funding provided by: Robertson Foundation
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100013961
Award Number:

Funding provided by: Recanati-Kaplan Foundation*
Crossref Funder Registry ID:
Award Number:

Funding provided by: Darwin Initiative for Biodiversity*
Crossref Funder Registry ID:
Award Number: DAR17-031 (2009-2012)

Funding provided by: Natural Environment Research Council
Crossref Funder Registry ID: http://dx.doi.org/10.13039/501100000270
Award Number: Doctoral Training Partnership NE/L002612/1

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