Present address: Laboratoire d’Ecologie et Evolution CNRS – UMR 7625 Universite Pierre et Marie Curie 7 Quai St Bernard, 75005 Paris, France
Inferring spatial structure from time-series data: using multivariate state-space models to detect metapopulation structure of California sea lions in the Gulf of California, Mexico
Article first published online: 15 DEC 2009
DOI: 10.1111/j.1365-2664.2009.01745.x
© 2009 The Authors. Journal compilation © 2009 British Ecological Society
Additional Information
How to Cite
Ward, E. J., Chirakkal, H., González-Suárez, M., Aurioles-Gamboa, D., Holmes, E. E. and Gerber, L. (2010), Inferring spatial structure from time-series data: using multivariate state-space models to detect metapopulation structure of California sea lions in the Gulf of California, Mexico. Journal of Applied Ecology, 47: 47–56. doi: 10.1111/j.1365-2664.2009.01745.x
Publication History
- Issue published online: 29 JAN 2010
- Article first published online: 15 DEC 2009
- Received 23 July 2009; accepted 17 November 2009 Handling Editor: Chris Wilcox
- Abstract
- Article
- References
- Cited By
Keywords:
- extinction risk;
- metapopulation;
- multivariate state-space;
- spatial structure;
- stochastic growth rate;
- Zalophus californianus
Summary
1. Understanding spatial structure and identifying subpopulations are critical for estimating population growth rates and extinction risk, and as such essential for effective conservation planning. However, movement and spatiotemporal environmental data are often unavailable, limiting our ability to directly define subpopulations and their level of asynchrony.
2. This study applies a recently developed statistical technique using time-series analysis of abundance data to identify subpopulations. The approach uses multivariate state-space models and Akaike’s Information Criterion-based model selection to quantify the data support for different subpopulation numbers and configurations. This technique is applied to the population of California sea lions Zalophus californianus in the Gulf of California, Mexico, distributed across 13 breeding sites.
3. The abundance of California sea lions in the Gulf of California has declined over the last decade, though not all areas have been equally affected. In light of this variation, it is important to understand the population structure to ensure accurate viability assessments and effective management.
4. Our data support the hypothesis that the Gulf of California sea lion population has four subpopulations, each with 2–5 breeding sites. The dynamics between several adjacent subpopulations were correlated, suggesting that they experience similar environmental variation. For each subpopulation, we estimated long-term growth rates, as well as the environmental and observation variation.
5. For most of the subpopulations, our estimates of growth rates were considerably lower than those previously reported. In addition, we found considerable variability across subpopulations in their projected risk of severe decline over the next 50 years.
6. Synthesis and applications. We illustrate a new multivariate state-space modelling technique that uses time series of abundance to quantify the data support for different subpopulation configurations. Our analysis of the California sea lion population in the Gulf of California indicates that the population is spatially structured into four subpopulations, each exhibiting distinct risks of extinction. Based on our results, we recommend that conservation and management efforts in the Gulf of California focus on the two subpopulations with high probabilities of extinction within the next 50 years (Northern Midriff, Southern Midriff). Multivariate state-space models provide a practical approach to determine the spatial structure of virtually any species; they may be particularly useful for species of conservation concern for which data on dispersal and environmental drivers are likely to be scarce.

1365-2664/asset/olbannerleft.gif?v=1&s=8b608cc23970983efcf0bf9354181123ee4feba9)
1365-2664/asset/olbannerright.gif?v=1&s=01405a21098d64198820bdbe2e30807b513e69f2)
