| Literature DB >> 31700073 |
Nick Pepper1, Luca Gerardo-Giorda2, Francesco Montomoli3.
Abstract
Invasive species are recognized as a significant threat to biodiversity. The mathematical modeling of their spatio-temporal dynamics can provide significant help to environmental managers in devising suitable control strategies. Several mathematical approaches have been proposed in recent decades to efficiently model the dispersal of invasive species. Relying on the assumption that the dispersal of an individual is random, but the density of individuals at the scale of the population can be considered smooth, reaction-diffusion models are a good trade-off between model complexity and flexibility for use in different situations. In this paper we present a continuous reaction-diffusion model coupled with arbitrary Polynomial Chaos (aPC) to assess the impact of uncertainties in the model parameters. We show how the finite elements framework is well-suited to handle important landscape heterogeneities as elevation and the complex geometries associated with the boundaries of an actual geographical region. We demonstrate the main capabilities of the proposed coupled model by assessing the uncertainties in the invasion of an alien species invading the Basque Country region in Northern Spain.Entities:
Year: 2019 PMID: 31700073 PMCID: PMC6838098 DOI: 10.1038/s41598-019-52763-9
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Basque Country test case. Panel (A) Computational domain with elevation, initial location of the invasive species and location of the three cities under study. Panel (B to F) Density of the invasive species at different times of the invasion process. The temporal dynamics highlights how extended heterogeneities due to the mountain ranges favors dispersal to the West. Panel (G) Invasion time in the whole computational domain. Black areas are inhospitable for the species and will not be invaded. Panel (H) Temporal dynamics of the population density for Bilbao (solid blue), Vitoria (dashed red) and San Sebastian (dot-dashed green).
Figure 2Panel (A) Histograms for the uncertain parameters ν and α, and the 1D collocation points for the input distributions. Panel (B) The sampling grid calculated through application of Smolyak’s rule at level 1.
Figure 3Uncertainty analysis for the Basque country test case. Panel (A to D) Temporal dynamics of mean and standard deviation of the population density in the whole computational domain highlights the higher level of uncertainty in the surrounding of the wavefront. Panel (E) Uncertainty in arrival time in Bilbao, Vitoria and San Sebastian. Panel (F) Temporal dynamics of the standard deviation for the population density in Bilbao (solid blue), Vitoria (dashed red) and San Sebastian (dot-dashed green) shows how uncertainty drops significantly in the wake of the propagation wavefront.