How to find a wolverine: Factors affecting detection at wolverine (Gulo gulo) bait stations in western Canada

Author:

Kortello Andrea1ORCID,Hausleitner Doris23,Mowat Garth45,Barrueto Mirjam6,Heim Nicole7,Larson Lisa8,Lucid Michael9ORCID,Clevenger Anthony10

Affiliation:

1. Grylloblatta Ecological Consulting Nelson British Columbia Canada

2. Seepanee Ecological Consulting Nelson British Columbia Canada

3. Selkirk College Castlegar British Columbia Canada

4. Ministry of Forests Nelson British Columbia Canada

5. Department of Earth, Environmental and Geographic Sciences University of British Columbia Kelowna British Columbia Canada

6. Department of Biological Sciences University of Calgary Calgary Alberta Canada

7. Nikki Heim Consulting Canmore Alberta Canada

8. Mount Revelstoke and Glacier National Parks, Parks Canada Revelstoke British Columbia Canada

9. Selkirk Wildlife Science LLC Sandpoint Idaho USA

10. Western Transportation Institute Montana State University Bozeman Montana USA

Abstract

AbstractHigh individual detection success enables precise estimates of density and the ability to monitor trends in abundance for wolverine and other low‐density species, information that is critical for the implementation and assessment of conservation measures. We evaluated a dataset that included six different wolverine capture–recapture studies over a large gradient in wolverine (Gulo gulo) density to provide recommendations for increasing detection. We examined factors related to bait station components, habitat, and seasonal timing. Accounting for variation in wolverine density and trap duration, our results suggest that bait stations setups having a run pole, frame, and camera to photograph unique ventral color patterns, in addition to hair snag devices, identify more individual wolverine than those without. The presence of snow is a habitat feature that also increases individual detection. Female detection rates were lower than male detection rates at the onset of the reproductive denning season in late February and early March compared with January and early February. We found latency to detection was independent of wolverine density, but greater in areas with human influence. Relatively high rates of genotyping success (55%) were predicted by even a single guard hair left at bait stations, while underfur required ~15 hairs for similar success. Longer sampling intervals reduced genotyping success in spring, more so for underfur than guard hair. Hair samples acquired from barbwire were of higher quality than those from either alligator clips or gun brushes. To improve individual detection for wolverine inventory and monitoring, we recommend deploying run pole setups in areas with low human disturbance that will retain snow into late spring. Extending the winter trapping effort into April and May could increase the chances of detecting denning females. Latency to detection suggests that traps should be active for more than a month, especially in human‐influenced areas, but genotyping success suggests that traps should also be cleared of hair samples at smaller intervals of a month or less, during late winter/spring.

Funder

U.S. Fish and Wildlife Service

Columbia Basin Trust

Parks Canada

Wilburforce Foundation

Liz Claiborne Art Ortenberg Foundation

Volgenau Foundation

Great Northern Landscape Conservation Cooperative

Alberta Conservation Association

McLean Foundation

National Geographic Society

Disney Conservation Fund

Yellowstone to Yukon Conservation Initiative

Alpine Club of Canada

University of Calgary

Natural Sciences and Engineering Research Council of Canada

Publisher

Wiley

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