Title of article :
Population viability analysis for several populations using multivariate state-space models
Author/Authors :
Hinrichsen، نويسنده , , Richard A.، نويسنده ,
Abstract :
The International Union for the Conservation of Nature and Natural Resources (IUCN), the worldʹs largest and most important global conservation network, has listed approximately 16,000 species worldwide as threatened. The most important tool for recognizing and listing species as threatened is population viability analysis (PVA), which estimates the probability of extinction of a population or species over a specified time horizon. The most common PVA approach is to apply it to single time series of population abundance. This approach to population viability analysis ignores covariability of local populations. Covariability can be important because high synchrony of local populations reduces the effective number of local populations and leads to greater extinction risk. Needed is a way of extending PVA to model correlation structure among multiple local populations. Multivariate state-space modeling is applied to this problem and alternative estimation methods are compared. The multivariate state-space technique is applied to endangered populations of pacific salmon, USA. Simulations demonstrated that the correlation structure can strongly influence population viability and is best estimated using restricted maximum likelihood instead of maximum likelihood.
Keywords :
Covariance , Population viability analysis (PVA) , IUCN Red List , Stochastic growth rate , state-space models , Restricted maximum likelihood , MULTIVARIATE , Measurement error , salmon
Journal title :
Astroparticle Physics