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Control of tipping points in stochastic mutualistic complex networks
Author(s) -
Meng Yu,
Celso Grebogi
Publication year - 2021
Publication title -
chaos an interdisciplinary journal of nonlinear science
Language(s) - English
Resource type - Journals
eISSN - 1089-7682
pISSN - 1054-1500
DOI - 10.1063/5.0036051
Subject(s) - extinction (optical mineralogy) , complex network , ecology , network topology , habitat , computer science , control (management) , scale (ratio) , nonlinear system , ecological network , pollinator , climate change , complex system , topology (electrical circuits) , distributed computing , mathematics , biology , geography , artificial intelligence , pollination , ecosystem , physics , computer network , combinatorics , pollen , paleontology , cartography , quantum mechanics , world wide web
Nonlinear stochastic complex networks in ecological systems can exhibit tipping points. They can signify extinction from a survival state and, conversely, a recovery transition from extinction to survival. We investigate a control method that delays the extinction and advances the recovery by controlling the decay rate of pollinators of diverse rankings in a pollinators-plants stochastic mutualistic complex network. Our investigation is grounded on empirical networks occurring in natural habitats. We also address how the control method is affected by both environmental and demographic noises. By comparing the empirical network with the random and scale-free networks, we also study the influence of the topological structure on the control effect. Finally, we carry out a theoretical analysis using a reduced dimensional model. A remarkable result of this work is that the introduction of pollinator species in the habitat, which is immune to environmental deterioration and that is in mutualistic relationship with the collapsed ones, definitely helps in promoting the recovery. This has implications for managing ecological systems.

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