4.4 Article

Spreading speeds for plant populations in landscapes with low environmental variation

Journal

JOURNAL OF THEORETICAL BIOLOGY
Volume 363, Issue -, Pages 436-452

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jtbi.2014.08.022

Keywords

Integrodifference equations; Species invasion; Heterogeneity; Conservation; Dispersal

Funding

  1. Natural Environment Research Council Doctoral Training Grant [NE/J500045/1]
  2. NERC [NE/J500045/1] Funding Source: UKRI
  3. Natural Environment Research Council [1273722, ceh010010] Funding Source: researchfish

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Characterising the spread of biological populations is crucial in responding to both biological invasions and the shifting of habitat under climate change. Spreading speeds can be studied through mathematical models such as the discrete-time integro-difference equation (IDE) framework. The usual approach in implementing IDE models has been to ignore spatial variation in the demographic and dispersal parameters and to assume that these are spatially homogeneous. On the other hand, real landscapes are rarely spatially uniform with environmental variation being very important in determining biological spread. This raises the question of under what circumstances spatial structure need not be modelled explicitly. Recent work has shown that spatial variation can be ignored for the specific case where the scale of landscape variation is much smaller than the spreading population's dispersal scale. We consider more general types of landscape, where the spatial scales of environmental variation are arbitrarily large, but the maximum change in environmental parameters is relatively small. We find that the difference between the wave-speeds of populations spreading in a spatially structured periodic landscape and its homogenisation is, in general, proportional to epsilon(2), where epsilon governs the degree of environmental variation. For stochastically generated landscapes we numerically demonstrate that the error decays faster than epsilon. In both cases, this means that for sufficiently small epsilon, the homogeneous approximation is better than might be expected. Hence, in many situations, the precise details of the landscape can be ignored in favour of spatially homogeneous parameters. This means that field ecologists can use the homogeneous IDE as a relatively simple modelling tool - in terms of both measuring parameter values and doing the modelling itself. However, as epsilon increases, this homogeneous approximation loses its accuracy. The change in wave-speed due to the extrinsic (landscape) variation can be positive or negative, which is in contrast to the reduction in wave-speed caused by intrinsic stochasticity. To deal with the loss of accuracy as epsilon increases, we formulate a second-order approximation to the wave-speed for periodic landscapes and compare both approximations against the results of numerical simulation and show that they are both accurate for the range of landscapes considered. (C) 2014 Elsevier Ltd. All rights reserved.

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