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Shorebird Monitoring Using Spatially Explicit Occupancy and Abundance

Author

Listed:
  • Eve Bohnett

    (U.S. Geological Survey, Gainesville, FL 32601, USA
    Department of Landscape Architecture, University of Florida, Gainesville, FL 32601, USA)

  • Jessica Schulz

    (New Hampshire Department of Environmental Services, Concord, NH 03301, USA)

  • Robert Dobbs

    (Wildlife Diversity Program, Louisiana Department of Wildlife and Fisheries, Lafayette, CA 70506, USA)

  • Thomas Hoctor

    (Department of Landscape Architecture, University of Florida, Gainesville, FL 32601, USA
    Center for Landscape Conservation Planning, University of Florida, Gainesville, FL 32601, USA)

  • Dave Hulse

    (Department of Landscape Architecture, University of Florida, Gainesville, FL 32601, USA
    Florida Institute for Built Environment Resilience, University of Florida, Gainesville, FL 32601, USA)

  • Bilal Ahmad

    (Institute of Agriculture Sciences and Forestry, University of Swat, Mingora 19130, Pakistan)

  • Wajid Rashid

    (Department of Environmental and Conservation Sciences, University of Swat, Mingora 19130, Pakistan)

  • Hardin Waddle

    (U.S. Geological Survey, Gainesville, FL 32601, USA)

Abstract

Loss of habitat and human disturbance are major factors in the worldwide decline of shorebird populations, including that of the threatened migratory piping plover ( Charadrius melodus ). From 2013 to 2018, we conducted land-based surveys of the shorebird community every other week during the peak piping plover season (September to March). We assessed the ability of a thin plate spline occupancy model to identify hotspot locations on Whiskey Island, Louisiana, for the piping plover and four additional shorebird species (Wilson’s plover ( Charadrius wilsonia ), snowy plover ( Charadrius nivosus ), American oystercatcher ( Haematopus palliatus ), and red knot ( Calidris canutus )). By fitting single-species occupancy models with geographic thin plate spline parameters, hotspot priority regions for conserving piping plovers and the multispecies shorebird assemblage were identified on the island. The occupancy environmental covariate, distance to the coastline, was weakly fitting, where the spatially explicit models were heavily dependent on the spatial spline parameter for distribution estimation. Additionally, the detectability parameters for Julian date and tide stage affected model estimations, resulting in seemingly inflated estimates compared to assuming perfect detection. The models predicted species distributions, biodiversity, high-use habitats for conservation, and multispecies conservation areas using a thin-plate spline for spatially explicit estimation without significant landscape variables, demonstrating the applicability of this modeling approach for defining areas on a landscape that are more heavily used by a species or multiple species.

Suggested Citation

  • Eve Bohnett & Jessica Schulz & Robert Dobbs & Thomas Hoctor & Dave Hulse & Bilal Ahmad & Wajid Rashid & Hardin Waddle, 2023. "Shorebird Monitoring Using Spatially Explicit Occupancy and Abundance," Land, MDPI, vol. 12(4), pages 1-15, April.
  • Handle: RePEc:gam:jlands:v:12:y:2023:i:4:p:863-:d:1120699
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    References listed on IDEAS

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