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Snow and Wildlife Detections from Remote Camera Stations on Moscow Mountain in Latah County, ID, USA (10/20/20-6/30/21)

Dates

Publication Date
Start Date
2020-10-20
End Date
2021-07-31

Citation

Kaitlyn Strickfaden and Timothy Link, 2022, Snow and Wildlife Detections from Remote Camera Stations on Moscow Mountain in Latah County, ID, USA (10/20/20-6/30/21): U.S. Geological Survey data release, https://doi.org/10.21429/bma6-xn17.

Summary

Remote camera data on snow presence, snow depth, and wildlife detections on Moscow Mountain in Latah County, ID, USA. Reconyx Hyperfire I and Hyperfire II cameras were set to take hourly timelapse images and motion-triggered images from October 2020 - May 2021 at 5 elevation categories (800-925m, 925-1050m, 1050-1175m, 1775-1300m, and > 1300m), 4 aspects (N, S, E, and W), and 3 canopy densities (Sparse [0-35%], Moderate [35-75%], and Dense [75-100%]), in duplicate, plus 17 selected microclimates (137 locations total), on Moscow Mountain in Latah County, ID. Images from 27 other locations were part of a pilot experiment during January to May 2020. Data in the CSVs include image metadata, camera site characteristics, temperature (degrees [...]

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Cams_SnowWildlife_20-21.csv
“Snow and Wildlife data”
203.01 MB text/csv

Purpose

Snow conditions and dynamics are changing due to climate change. Changes to snow impact snow-dependent species through loss of snow cover needed for survival and fitness, while changes to snow impact snow-inhibited species through changes in energy expenditure, access to food, and predation risk. These data were used for two purposes: 1) to explore variability in snow disappearance dates in a complex forested terrain, and 2) to examine relationships between white-tailed deer (Odocoileus virginianus) and mule deer (O. hemionus) and snow properties including snow depth, density, and hardness. These data were used to create a model predicting snow disappearance dates (SDD) at our camera sites, which we could then use to map SDDs across our entire study area and identify priority areas of conservation for snow-dependent wildlife. We found that high-elevation areas, north-facing aspects, and cold-air pools retained snow latest. These data were also used to model the probability of deer presence at camera sites dependent on snow conditions. We found that deer respond negatively to increased snow density and respond slightly positively to increased snow hardness.

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Communities

  • National and Regional Climate Adaptation Science Centers
  • Northwest CASC

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Type Scheme Key
DOI https://www.sciencebase.gov/vocab/category/item/identifier https://doi.org/10.21429/bma6-xn17

Citation Extension

citationTypeData Release
parts
typeDOI
valuehttps://doi.org/10.21429/bma6-xn17

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