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Wildlife Research Wildlife Research Society
Ecology, management and conservation in natural and modified habitats
RESEARCH ARTICLE

The toad ahead: challenges of modelling the range and spread of an invasive species

Benjamin L. Phillips A D , Joseph D. Chipperfield B and Michael R. Kearney C
+ Author Affiliations
- Author Affiliations

A School of Biological Sciences A08, University of Sydney, NSW 2006, Australia.

B UKPopNet, Department of Biology, University of York, North Yorkshire, YO10 5YW, United Kingdom.

C Department of Zoology, University of Melbourne, Vic. 3010, Australia.

D Corresponding author. Email: bphi4487@mail.usyd.edu.au

Wildlife Research 35(3) 222-234 https://doi.org/10.1071/WR07101
Submitted: 25 July 2007  Accepted: 24 December 2007   Published: 20 May 2008

Abstract

An ability to predict the rate at which an organism spreads its range is of growing importance because the process of spread (during invasion by an exotic species) is almost identical to that occurring at the expanding range margins of a native species undergoing range shifts in response to climate change. Thus, the methods used for modelling range spread can also be employed to assess the distributional implications of climate change. Here we review the history of research on the spread of cane toads in Australia and use this case study to broadly examine the benefits and pitfalls of various modelling approaches. We show that the problems of estimating the current range, predicting the future range, and predicting the spread rate are interconnected and inform each other. Generally, we argue that correlative approaches to range-prediction are unsuitable when applied to invasive species and suggest that mechanistic methods are beginning to look promising (despite being more difficult to execute), although robust comparisons of correlative versus mechanistic predictions are lacking. Looking to the future, we argue that mechanistic models of range advance (drawing from both population ecology and environmental variation) are the approaches most likely to yield robust predictions. The complexity of these approaches coupled with the steady rise in computing power means that they have only recently become computationally tractable. Thus, we suggest that the field is only recently in a position to incorporate the complexity necessary to robustly model the rate at which species shift their range.


Acknowledgements

This review would not have been possible without the support of Rick Shine, or without travel supported by a grant from the Environmental Futures Network (to BLP). We thank Barbara Anderson for organising a workshop (funded by UKPopNet), which prompted the review of the methods outlined in the latter parts of the paper. We thank Adnan Moussalli, Stuart Baird, Arnaud Estoup, Jason Kolbe and Mark Urban for lively discussions around all these issues. Arnaud Estoup and Jason Kolbe also provided access to unpublished manuscripts for which we are grateful. Three anonymous reviewers greatly improved the manuscript. Bob Sutherst kindly reran his 1995 CLIMEX prediction on a new, high-resolution climate surface for the construction of Fig. 2. Additional funding was provided by the ARC (MRK, BLP) and UKPopNet (JDC).


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