Abstract
Understanding how broad-scale patterns in animal populations emerge from individual-level processes is an enduring challenge in ecology that requires investigation at multiple scales and perspectives. Complementary to this need for diverse approaches is the recent focus on integrated modeling in statistical ecology. Population-level processes represent the core of spatial capture-recapture (SCR), with many methodological extensions that have been motivated by standing ecological theory and data-integration opportunities. The extent to which these recent advances offer inferential improvements can be limited by the data requirements for quantifying individual-level processes. This is especially true for SCR models that use non-Euclidean distance to relax the restrictive assumption that individual space use is stationary and symmetrical to make inferences about landscape connectivity. To meet the challenges of scale and data quality, we propose integrating an explicit movement model with non-Euclidean SCR for joint estimation of a shared cost parameter between individual and population processes. Here, we define a movement kernel for step selection that uses "ecological distance" instead of Euclidean distance to quantify availability for each movement step in terms of landscape cost. We compare performance of our integrated model to that of existing SCR models using realistic animal movement simulations and data collected on black bears. We demonstrate that an integrated approach offers improvements both in terms of bias and precision in estimating the shared cost parameter over models fit to spatial encounters alone. Simulations suggest these gains were only realized when step lengths were small relative to home range size, and estimates of density were insensitive to whether or not an integrated approach was used. By combining the fine spatiotemporal scale of individual movement processes with the estimation of population density in SCR, integrated approaches such as the one we develop here have the potential to unify the fields of movement, population, and landscape ecology and improve our understanding of landscape connectivity.
Highlights
Current ecological theory frames population processes as emerging from individual behaviors and interactions with local environments that scale up to landscape-level patterns (Levin 1992, Morales et al 2010, Spiegel et al 2017)
We illustrated an integration of trap encounters and telemetry locations that embedded an explicit movement model within spatial capture–recapture, leveraging their conceptual linkages
Movement data provide high-resolution information on step selection, and encounter history data allow for landscape-scale inference about spatial patterns of density, facilitating an improved understanding of how landscape-scale patterns of density and connectivity emerge from individual-level processes
Summary
Current ecological theory frames population processes as emerging from individual behaviors and interactions with local environments that scale up to landscape-level patterns (Levin 1992, Morales et al 2010, Spiegel et al 2017). Data integration can directly address this challenge, providing the ability to improve inferences about mechanism and creating an explicit link between individual-level and population-level processes and landscape-level spatial patterns
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