Distribution, demography and dispersal model of spatial spread of invasive plant populations with limited data
Authored by Vanessa M Adams, Aaron M Petty, Michael M Douglas, Yvonne M Buckley, Keith B Ferdinands, Tomoko Okazaki, Dongwook W Ko, Samantha A Setterfield
Date Published: 2015
DOI: 10.1111/2041-210x.12392
Sponsors:
Commonwealth Environmental Research Fund (CERF)
National Environmental Research Program (NERP)
Platforms:
Java
Model Documentation:
Other Narrative
Flow charts
Model Code URLs:
Model code not found
Abstract
Invasive weeds are a major cause of biodiversity loss and economic
damage world-wide. There is often a limited understanding of the biology
of emerging invasive species, but delay in action may result in
escalating costs of control, reduced economic returns from management
actions and decreased feasibility of management. Therefore, spread
models that inform and facilitate on-ground control of invasions are
needed. We developed a spatially explicit, individual-based spread model
that can be applied to both data-poor and data-rich situations to model
future spread and inform effective management of the invasion. The model
is developed using a minimum of two mapped distributions for the target
species at different times, together with habitat suitability variables
and basic population data. We present a novel method for internally
calibrating the reproduction and dispersal distance parameters. We use a
sensitivity analysis to identify variables that should be prioritized in
future research to increase robustness of model predictions. We apply
the model to two case studies, gamba grass and para grass, to provide
management advice on emerging weed priorities in northern Australia. For
both species, we find that the current extent of invasion in our study
regions is expected to double in the next 10years in the absence of
management actions. The predicted future distribution identifies
priority areas for eradication, control and containment to reduce the
predicted increase in infestation. The model was built for managers and
policymakers in northern Australia working on species where expert
knowledge and environmental data are often lacking, but is flexible and
can be easily adapted for other situations, for example where good data
are available. The model provides predicted probability of occurrence
over a user-specified, typically short-term, time horizon. This output
can be used to direct surveillance and management actions to areas that
have the highest likelihood of rapid invasion and spread. Directing
efforts to these areas provides the greatest likelihood of management
success and maximizes the return on investment in management response.
Tags
Management
Dynamics
Australia
Decisions
Climate-change
Consequences
Biological invasions
Species distribution models
Savannas
Habitat models