ADAPTIVE HARVEST MANAGEMENT OF WOLVES: THE ROLE OF RECRUITMENT AND HIERARCHICAL DEMOGRAPHY IN POPULATION DYNAMICS OF A SOCIAL CARNIVORE

Regulated public harvest became an important management tool following recovery of gray wolves (Canis lupus) in the U.S. Northern Rocky Mountains. Decisions on harvest regulations, however, can be contentious due to conflicting stakeholder values, uncertainties in the effects of harvest on wolves, a...

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Bibliographic Details
Main Author: Keever, Allison Christine
Format: Doctoral or Postdoctoral Thesis
Language:unknown
Published: University of Montana 2020
Subjects:
Online Access:https://scholarworks.umt.edu/etd/11652
https://scholarworks.umt.edu/context/etd/article/12736/viewcontent/Keever_umt_0136D_10652.pdf
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Summary:Regulated public harvest became an important management tool following recovery of gray wolves (Canis lupus) in the U.S. Northern Rocky Mountains. Decisions on harvest regulations, however, can be contentious due to conflicting stakeholder values, uncertainties in the effects of harvest on wolves, and difficulty in monitoring wolves. We addressed challenges associated with wolf management by 1) developing methods to estimate recruitment, 2) evaluating the role of hierarchical demography in wolf population dynamics, 3) developing competing population models to address uncertainty, and 4) developing an adaptive management framework to identify harvest regulations that best meet objectives for wolf management. We developed integrated population models (IPM) with and without social structure to evaluate the role of hierarchical demography in population dynamics of wolves. We tested and compared the IPMs on simulated populations with known demographic rates. We then used the IPM with hierarchical demography to estimate recruitment and population dynamics in wolves when productivity data were lacking. In addition, we developed a model to predict recruitment based on empirical data from Idaho and then tested the model in Montana. To better understand wolf population dynamics, we tested competing hypotheses of additive or compensatory harvest mortality and density dependent or density independent recruitment using population models and Bayesian model weight updating. Finally, we used stochastic dynamic programming and passive adaptive learning to find optimal season lengths and bag limits for wolf management in Montana. This framework accounted for uncertainty and included biological and societal objectives. We found that accounting for hierarchical demography improved estimation of demographic rates and population dynamics of wolves. Although regulated public harvest has appeared to decrease recruitment of pups and survival of adults, the population remained relatively stationary or only slightly declined. Using ...