Using an ensemble approach to predict habitat of Dusky Grouse ( Dendragapus obscurus ) in Montana, USA

dc.contributor.authorLeipold, Elizabeth
dc.contributor.authorGower, Claire N.
dc.contributor.authorMcNew, Lance
dc.date.accessioned2024-12-10T19:10:06Z
dc.date.issued2024-01
dc.description.abstractDusky Grouse (Dendragapus obscurus) are an under-monitored game species in Montana and elsewhere across their distribution. Without population monitoring it is difficult to establish appropriate harvest regulations or understand the impact of environmental disturbances (e.g., timber harvest, climate change) on populations. As a first step toward developing methods for unbiased population monitoring, we must identify appropriate sampling sites, which requires knowledge of Dusky Grouse habitat. Our goal was to explore relationships between Dusky Grouse use and habitat characteristics, and then generate a state-wide map predicting Dusky Grouse habitat in Montana using two methods: resource selection functions and random forest classifiers. The Integrated Monitoring in Bird Conservation Regions program provided a multi-year dataset of Dusky Grouse observations, which we reduced to detected (n=132) and pseudo-absent (n=5960) locations, using geospatial datasets to obtain topographic and vegetation characteristics for each location. We evaluated the predictability of the two models using receiver operating characteristics and area under the curve (ROC/AUC) with k-fold cross validation and classification accuracy of an independent dataset of incidental Dusky Grouse locations. We found both models to be highly predictive and multiple habitat characteristics were found to help predict relative probability of use such as proportion of trees with a height of 16–20m and conifer forest vegetation types. We converted both models to binary values and used an ensemble (frequency histogram) approach to combine the models into a final predictive map. Consensus between the resource selection function and random forest models was high (93%) and the ensemble map had higher predictive accuracy when classifying the independent dataset than the other two models. Our results show that our ensembled model approach was able to accurately predict potential Dusky Grouse habitat and therefore can be used to delineate areas for future population monitoring of Dusky Grouse in Montana.
dc.identifier.citationLeipold, E. A., Gower, C. N., & McNew, L. (2024). Using an ensemble approach to predict habitat of Dusky Grouse (Dendragapus obscurus) in Montana, USA. Avian Conservation and Ecology, 19(2).
dc.identifier.doi10.5751/ACE-02697-190207
dc.identifier.issn1712-6568
dc.identifier.urihttps://scholarworks.montana.edu/handle/1/19003
dc.language.isoen_US
dc.publisherResilience Alliance, Inc.
dc.rightscc-by
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.subjecthabitat model
dc.subjectrandom forest
dc.subjectresource selection functions
dc.subjectspecies distribution model
dc.titleUsing an ensemble approach to predict habitat of Dusky Grouse ( Dendragapus obscurus ) in Montana, USA
dc.typeArticle
mus.citation.extentfirstpage1
mus.citation.extentlastpage20
mus.citation.issue2
mus.citation.journaltitleAvian Conservation and Ecology
mus.citation.volume19
mus.relation.collegeCollege of Agriculture
mus.relation.departmentAnimal & Range Sciences
mus.relation.universityMontana State University - Bozeman

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