Forecasting extinction risk with nonstationary matrix models
Authored by NJ Gotelli, AM Ellison
Date Published: 2006
DOI: 10.1890/04-0479
Sponsors:
United States National Science Foundation (NSF)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Matrix population growth models are standard tools for forecasting
population change and for managing rare species, but they are less
useful for predicting extinction risk in the face of changing
environmental conditions. Deterministic models provide point estimates
of X, the finite rate of increase, as well as measures of matrix
sensitivity and elasticity. Stationary matrix models can be used to
estimate extinction risk in a variable environment, but they assume that
the matrix elements are randomly sampled from a stationary (i.e., non-changing) distribution. Here we outline a method for using
nonstationary matrix model!; to construct realistic forecasts of
population fluctuation in changing environments. Our method requires
three pieces of data: (I) field estimates of transition matrix elements, (2) experimental data on the demographic responses of populations. to
altered environmental conditions, and (3) forecasting data on
environmental drivers. These three pieces of data are combined to
generate a series of sequential transition matrices that emulate a
pattern of long-term change in environmental drivers. Realistic
estimates of population persistence and extinction risk can be derived
from stochastic permutations of such a model. We illustrate the steps of
this analysis with data from two population's of Sarracenia purpurea
growing in northern New England. Sarracenia purpurea is a perennial
carnivorous plant that is potentially at risk of local extinction
because of increased nitrogen deposition. Long-term monitoring records
or models of environmental change can be used to generate time series of
driver variables under different scenarios of changing environments.
Both manipulative and natural experiments can be used to construct a
linking function that describes how matrix parameters change as a
function of the environmental driver. This synthetic modeling approach
provides quantitative estimates of extinction probability that have an
explicit mechanistic basis.
Tags
Individual-based model
Trade-offs
Structured
populations
Growth-rates
Nitrogen
Population viability analysis
Elasticity analysis
Sarracenia-alata sarraceniaceae
Northern
pitcher plant
Category size