Abstract

AbstractMonitoring studies often use marked animals to estimate population abundance at small spatial scales. However, at smaller scales, occupancy sampling, which uses detection/nondetection data, may be useful where sites are approximately territories, and occupancy dynamics should be strongly correlated with population dynamics. Occupancy monitoring has advantages in that it is less expensive and invasive, and marked animals are not needed. Here, we used empirical data to determine whether and when change in occupancy is a good proxy for population change for a territorial species. As part of this overall goal, we also compared maximum‐likelihood estimates using a model‐averaging approach with a Bayesian MCMC approach. We used field data collected from 1993 to 2013 on three study areas for California spotted owls (Strix occidentalis occidentalis), a territorial species. Although correlations for trajectories of realized population change (Δt) between territory occupancy and Pradel models were moderate to high for Bayesian MCMC‐based estimates and high for model‐averaged estimates, magnitudes of the trajectories were different with the Pradel model reporting greater magnitudes of change. For the two areas showing a decline, Δt for the Pradel model was approximately 20–30% lower than for the occupancy model, and 25% higher in the area showing an increase. These differences can arise because the occupancy model is less sensitive, in that if two owls share a territory, the loss of one may be reflected in survival and, consequently in Δt by the Pradel model, but because the territory remains occupied it is not reflected by the occupancy model. Bayesian MCMC‐based and model‐averaged estimates of Δt were in close agreement in pattern (correlation ≥0.74) and magnitude (relative differences of last Δt were ≤5%) for both occupancy and mark–resight models. Results from the Pradel model may lead to conservation actions necessary to avoid high extinction or extirpation risk for small populations, while results from the territory occupancy model may result in status quo management. We found both Bayesian MCMC‐based and model‐averaged estimates of Δt robust approaches to evaluate population trends. However, we recommend the Bayesian MCMC approach for estimating risk (e.g., probability of declines) for retrospective analyses.

Highlights

  • Ecological and conservation monitoring methods tend to diverge depending on spatial scale.Vital rate and abundance monitoring are often reserved for populations or smaller areas because it is logistically difficult and prohibitively expensive to estimate changes in these parameters across large areas over time

  • Occupancy can be used as a surrogate for population abundance or mark–resight estimates of rate of population change (λ), both of which are more expensive and require more effort to reflect the state of a population (MacKenzie et al 2006)

  • Correlations for trajectories of Δt between territory occupancy and Pradel models were moderate for MCMC-based estimates and high for model-averaged estimates, the magnitude of the trajectories was different with the Pradel model reporting greater magnitude of changes in the population; that is, Δk from the Pradel model was approximately 20–30% lower than for the territory occupancy model for LAS and SIE and 25% higher for Sequoia and Kings Canyon (SKC)

Read more

Summary

Introduction

Ecological and conservation monitoring methods tend to diverge depending on spatial scale. Vital rate and abundance monitoring are often reserved for populations or smaller areas because it is logistically difficult and prohibitively expensive to estimate changes in these parameters across large areas over time. Occupancy monitoring, which uses detection/nondetection data, can facilitate time-sensitive assessment of population status across large landscapes (Zuckerberg et al.2009, Roney et al 2015). Occupancy can be used as a surrogate for population abundance or mark–resight estimates of rate of population change (λ), both of which are more expensive and require more effort to reflect the state of a population (MacKenzie et al 2006)

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call