Forecasting wildlife movement with spatial capture-recapture
收藏DataONE2023-09-19 更新2024-06-08 收录
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Wildlife movement is an important process affecting species population biology and community interactions in myriad ways. Studies of wildlife movement have focused on retrospectively estimating movements of small numbers of individuals by outfitting them with GPS and telemetry tags. Recent developments in spatial capture-recapture modeling permit the integration of movement models that can estimate the movement of untagged and undetected individuals. Additionally, hidden Markov movement models provide a framework for forecasting individualsâ movements, which may be valuable in the conservation of threatened species facing risks that vary across space and time.
We describe maximum likelihood estimators for spatial captureârecapture models integrated with simple, biased, and correlated random walk movement models formulated as hidden Markov models. Additionally, we demonstrate how to forecast wildlife movement based on these models and hidden Markov model algorithms. We conducted a simul...
创建时间:
2023-11-03



