4.7 Article

UPRLIMET: UPstream Regional LiDAR Model for Extent of Trout in stream networks

Journal

SCIENTIFIC REPORTS
Volume 12, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41598-022-23754-0

Keywords

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Funding

  1. Pacific Northwest Research Station
  2. USDA Forest Service and Oregon State University College of Forestry Fish and Wildlife Habitat in Managed Forests Research
  3. National Science Foundation Idaho EPSCoR Program [OIA-1757324]
  4. Long-Term Ecological Research (LTER) program (National Science Foundation) [DEB-1440409]

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Predicting the edges of species distributions is crucial for species conservation, ecosystem services, and management decisions. In this study, we compared 26 models to predict the upper distribution limits of trout in streams, and developed a two-stage model called UPstream Regional LiDAR Model for Extent of Trout (UPRLIMET), which performed the best in predictive performance. Factors such as upstream channel length, drainage area, slope, and elevation were found to be the most important in determining the upper distribution limit.
Predicting the edges of species distributions is fundamental for species conservation, ecosystem services, and management decisions. In North America, the location of the upstream limit of fish in forested streams receives special attention, because fish-bearing portions of streams have more protections during forest management activities than fishless portions. We present a novel model development and evaluation framework, wherein we compare 26 models to predict upper distribution limits of trout in streams. The models used machine learning, logistic regression, and a sophisticated nested spatial cross-validation routine to evaluate predictive performance while accounting for spatial autocorrelation. The model resulting in the best predictive performance, termed UPstream Regional LiDAR Model for Extent of Trout (UPRLIMET), is a two-stage model that uses a logistic regression algorithm calibrated to observations of Coastal Cutthroat Trout (Oncorhynchus clarkii clarkii) occurrence and variables representing hydro-topographic characteristics of the landscape. We predict trout presence along reaches throughout a stream network, and include a stopping rule to identify a discrete upper limit point above which all stream reaches are classified as fishless. Although there is no simple explanation for the upper distribution limit identified in UPRLIMET, four factors, including upstream channel length above the point of uppermost fish, drainage area, slope, and elevation, had highest importance. Across our study region of western Oregon, we found that more of the fish-bearing network is on private lands than on state, US Bureau of Land Mangement (BLM), or USDA Forest Service (USFS) lands, highlighting the importance of using spatially consistent maps across a region and working across land ownerships. Our research underscores the value of using occurrence data to develop simple, but powerful, prediction tools to capture complex ecological processes that contribute to distribution limits of species.

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