4.7 Article

Dynamics of tipping cascades on complex networks

Journal

PHYSICAL REVIEW E
Volume 101, Issue 4, Pages -

Publisher

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevE.101.042311

Keywords

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Funding

  1. DFG [IRTG 1740/TRP 2015/50122-0]
  2. FAPESP
  3. Studienstiftung des deutschen Volkes
  4. Leibniz Association (project DominoES)
  5. European Research Council project Earth Resilience in the Anthropocene [743080 ERA]
  6. Bolin Centre for Climate Research
  7. Netherlands Organization for Scientific Research Innovational Research Incentive Schemes VENI [016.171.019]
  8. Stordalen Foundation (via the Planetary Boundaries Research Network PB.net)
  9. Earth League's EarthDoc program
  10. European Re-gional Development Fund (ERDF)
  11. German Federal Ministry of Education and Research
  12. Land Brandenburg

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Tipping points occur in diverse systems in various disciplines such as ecology, climate science, economy, and engineering. Tipping points are critical thresholds in system parameters or state variables at which a tiny perturbation can lead to a qualitative change of the system. Many systems with tipping points can be modeled as networks of coupled multistable subsystems, e.g., coupled patches of vegetation, connected lakes, interacting climate tipping elements, and multiscale infrastructure systems. In such networks, tipping events in one subsystem are able to induce tipping cascades via domino effects. Here, we investigate the effects of network topology on the occurrence of such cascades. Numerical cascade simulations with a conceptual dynamical model for tipping points are conducted on Erdos-Renyi, Watts-Strogatz, and Barabasi-Albert networks. Additionally, we generate more realistic networks using data from moisture-recycling simulations of the Amazon rainforest and compare the results to those obtained for the model networks. We furthermore use a directed configuration model and a stochastic block model which preserve certain topological properties of the Amazon network to understand which of these properties are responsible for its increased vulnerability. We find that clustering and spatial organization increase the vulnerability of networks and can lead to tipping of the whole network. These results could be useful to evaluate which systems are vulnerable or robust due to their network topology and might help us to design or manage systems accordingly.

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