Systematic conservation prioritization with the prioritizr R package

Author:

Hanson Jeffrey O.12ORCID,Schuster Richard23ORCID,Strimas‐Mackey Matthew4,Morrell Nina5,Edwards Brandon P. M.2,Arcese Peter5,Bennett Joseph R.2,Possingham Hugh P.1

Affiliation:

1. Centre for Biodiversity and Conservation Science University of Queensland St Lucia Queensland Australia

2. Department of Biology Carleton University Ottawa Ontario Canada

3. Nature Conservancy of Canada Toronto Ontario Canada

4. Cornell Laboratory of Ornithology Cornell University Ithaca New York USA

5. Department of Forest and Conservation Sciences University of British Columbia Vancouver British Columbia Canada

Abstract

AbstractPlans for expanding protected area systems (prioritizations) need to fulfill conservation objectives. They also need to account for other factors, such as economic feasibility and anthropogenic land‐use requirements. Although prioritizations are often generated with decision support tools, most tools have limitations that hinder their use for decision‐making. We outlined how the prioritizr R package (https://prioritizr.net) can be used for systematic conservation prioritization. This decision support tool provides a flexible interface to build conservation planning problems. It can leverage a variety of commercial (e.g., Gurobi) and open‐source (e.g., CBC and SYMPHONY) exact algorithm solvers to identify optimal solutions in a short period. It is also compatible with a variety of spatially explicit (e.g., ESRI Shapefile, GeoTIFF) and nonspatial tabular (e.g., Microsoft Excel Spreadsheet) data formats. Additionally, it provides functionality for evaluating prioritizations, such as assessing the relative importance of different places selected by a prioritization. To showcase the prioritizr R package, we applied it to a case study based in Washington state (United States) for which we developed a prioritization to improve protected area coverage of native avifauna. We accounted for land acquisition costs, existing protected areas, places that might not be suitable for protected area establishment, and spatial fragmentation. We also conducted a benchmark analysis to examine the performance of different solvers. The prioritization identified 12,400 km2 of priority areas for increasing the percentage of species’ distributions covered by protected areas. Although open source and commercial solvers were able to quickly solve large‐scale conservation planning problems, commercial solvers were required for complex, large‐scale problems.. The prioritizr R package is available on the Comprehensive R Archive Network (CRAN). In addition to reserve selection, it can inform habitat restoration, connectivity enhancement, and ecosystem service provisioning. It has been used in numerous conservation planning exercises to inform best practices and aid real‐world decision‐making.

Publisher

Wiley

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