Graph models of habitat mosaics
Version 2 2024-06-04, 14:18Version 2 2024-06-04, 14:18
Version 1 2019-07-10, 15:28Version 1 2019-07-10, 15:28
journal contribution
posted on 2024-06-04, 14:18 authored by DL Urban, ES Minor, Eric TremlEric Treml, RS SchickGraph theory is a body of mathematics dealing with problems of connectivity, flow, and routing in networks ranging from social groups to computer networks. Recently, network applications have erupted in many fields, and graph models are now being applied in landscape ecology and conservation biology, particularly for applications couched in metapopulation theory. In these applications, graph nodes represent habitat patches or local populations and links indicate functional connections among populations (i.e. via dispersal). Graphs are models of more complicated real systems, and so it is appropriate to review these applications from the perspective of modelling in general. Here we review recent applications of network theory to habitat patches in landscape mosaics. We consider (1) the conceptual model underlying these applications; (2) formalization and implementation of the graph model; (3) model parameterization; (4) model testing, insights, and predictions available through graph analyses; and (5) potential implications for conservation biology and related applications. In general, and for a variety of ecological systems, we find the graph model a remarkably robust framework for applications concerned with habitat connectivity. We close with suggestions for further work on the parameterization and validation of graph models, and point to some promising analytic insights. © 2009 Blackwell Publishing Ltd/CNRS.
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Journal
Ecology LettersVolume
12Pagination
260-273Location
London, Eng.Open access
- Yes
ISSN
1461-023XeISSN
1461-0248Language
engPublication classification
C1.1 Refereed article in a scholarly journalIssue
3Publisher
Wiley-BlackwellUsage metrics
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