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Forecasting Bifurcations from Large Perturbation Recoveries in Feedback Ecosystems
Authors:Kiran D’Souza  Bogdan I Epureanu  Mercedes Pascual
Institution:1. Mechanical and Aerospace Engineering Department, The Ohio State University, Columbus, Ohio, United States of America.; 2. Mechanical Engineering Department, University of Michigan, Ann Arbor, Michigan, United States of America.; 3. Department of Ecology and Evolution, University of Chicago, Chicago, Illinois, United States of America.; 4. Santa Fe Institute, Santa Fe, New Mexico, United States of America.; University of Florida, UNITED STATES,
Abstract:Forecasting bifurcations such as critical transitions is an active research area of relevance to the management and preservation of ecological systems. In particular, anticipating the distance to critical transitions remains a challenge, together with predicting the state of the system after these transitions are breached. In this work, a new model-less method is presented that addresses both these issues based on monitoring recoveries from large perturbations. The approach uses data from recoveries of the system from at least two separate parameter values before the critical point, to predict both the bifurcation and the post-bifurcation dynamics. The proposed method is demonstrated, and its performance evaluated under different levels of measurement noise, with two ecological models that have been used extensively in previous studies of tipping points and alternative steady states. The first one considers the dynamics of vegetation under grazing; the second, those of macrophyte and phytoplankton in shallow lakes. Applications of the method to more complex situations are discussed together with the kinds of empirical data needed for its implementation.
Keywords:
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