© CAB International 2015. Pest Risk Modelling and Mapping
for Invasive Alien Species (ed. R.C. Venette) 171
Abstract
Predicting the potential distribution of
invasive alien pests (i.e. habitat suitability
modelling) and their potential spread
from existing populations (i.e. habitat
susceptibility modelling) is critical to guide
management responses at local, regional
and national scales. We use the management
of Chilean needle grass (Nassella neesiana)
invasion in a 260,791 km
2
part of eastern
Australia as an example to describe a
process-based approach for making such
predictions with publicly available software
(e.g. Netica and ESRI products). e
approach is deductive, with causal relation-
ships captured in a Bayesian network and
represented spatially at fine resolution
using a geographic information system
(GIS). Pest risk responses to changing
environments, such as land-use change,
climate change or altered flood regimes, and
to management interventions can be tested
through scenario analysis. Predictive risk
mapping of invasive aliens is often
knowledge-constrained; therefore, our
approach seeks to capture the best available
knowledge from often disparate sources in a
transparent and explicit manner. For
Chilean needle grass, we elicited process
understanding from experts through a
participatory approach, integrated an
existing bioclimatic model and obtained our
own field data. Our model, thereby,
represents a hypothesis of what determines
the distribution, abundance and spread of
Chilean needle grass in the modelled region.
Specifically, the model forecasts the
likelihood of the weed reaching a threshold
density (e.g. in this case, >30% ground
cover) as defined by the experts. is
approach to likelihood estimation contrasts
with the presence/absence predictions of
most other models. Modelling was done at a
sufficiently fine spatial resolution (i.e. 30 m)
to capture relevant invasion dynamics.
Finally, we illustrate how validation can be
used to give end users confidence in model
predictions and to identify important
knowledge gaps and uncertainties. We
demonstrate how the resulting pest risk
maps for Chilean needle grass can guide
management decisions.
Introduction
Pest risk modelling aims to help decision
makers identify and quantify risks of
establishment and spread of invasive alien
12
Process-based Pest Risk
Mapping using Bayesian
Networks and GIS
Rieks D. van Klinken,
1
* Justine V. Murray
1
and Carl
Smith
2
1
CSIRO Biosecurity Flagship, Brisbane, Queensland, Australia;
2
School of Agriculture and Food Sciences, The University of
Queensland, St Lucia, Queensland, Australia.
* Corresponding author. E-mail: Rieks.VanKlinken@csiro.au