| Literature DB >> 30679559 |
Marília P Gaiarsa1, Paulo R Guimarães2.
Abstract
Perturbations, such as fluctuations in abundance, can ripple across species assemblages through ecological interactions. Furthermore, the way in which ecological interactions are organized into a network and the interaction strengths connecting species may be important for cascading effects. Previous work revealed that network structure determines how cascading effects spread across species assemblages. A next step is to understand how interaction strengths influence cascading effects. Here, we assume that perturbations have negative effects, and we evaluate whether interaction strength affects network robustness to cascading effects in mutualistic interactions, and examine the role of network structure in mediating perturbation cascades when interaction strength is incorporated. We combine empirical data on 18 mutualistic networks, two simulations scenarios, and network theory, to investigate how network structure affects perturbation spreading time, a proxy of network robustness to cascading effects. Simulations in which we included interaction strength presented higher mean spreading time, indicating that interaction strength increases network robustness. Richness, modularity, and nestedness had a strong, positive effect, on mean perturbation spreading time regardless of the interaction strengths. We found that network structure and the distribution of interaction strengths affected communities' robustness to perturbation spreading. Our results contribute to the discussion on the danger that ecosystems face when species, and interactions alike, become extinct.Entities:
Year: 2019 PMID: 30679559 PMCID: PMC6345762 DOI: 10.1038/s41598-018-35803-8
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Schematic representation of the perturbation spreading model for the binary scenario. A mutualistic network composed of two animal species and three plant species can be represented as an adjacency matrix (a). Each element of the matrix is now divided by the total number of interaction partners each species has (species’ degree) and the simulation starts with one species (A2) being randomly selected to be perturbed (b). In the following time steps, the perturbed species A2 can spread the perturbation to its interaction partners (P1, P2, or P3). Species P2 is affected by the perturbation in species A2 (c). The simulation runs until all species are affected by the perturbation (d). For the quantitative scenario each element in matrix 1a is replaced by the interaction strength between that species pair (see Fig. S1).
Figure 2Mean spreading time and standard deviation (log) for all networks analyzed, ordered by increasing richness.
Figure 3Summary diagram of the path analysis of the different network architectural patterns on mean spreading time analyzed for the binary and the quantitative scenario. Arrow thickness is scaled to standardized coefficients from the path analysis and illustrates the relative effect strength. Significant effects are represented in black lines and non-significant effects are represented in gray lines. Effects of connectance and richness are split between direct effects and indirect effects through changes in modularity and nestedness.