A mathematical framework for critical transitions: normal forms, variance and applications
Christian Kuehn

TL;DR
This paper develops a mathematical framework using bifurcation theory and normal forms to classify critical transitions, analyze stochastic fluctuations, and identify early-warning signs across diverse scientific models.
Contribution
It introduces a classification method for critical transitions based on bifurcation theory and applies it to various models to improve early-warning detection.
Findings
Variance scaling laws near critical transitions
Link densities as better predictors in epidemic models
Early-warning signs depend on control strategies and noise effects
Abstract
Critical transitions occur in a wide variety of applications including mathematical biology, climate change, human physiology and economics. Therefore it is highly desirable to find early-warning signs. We show that it is possible to classify critical transitions by using bifurcation theory and normal forms in the singular limit. Based on this elementary classification, we analyze stochastic fluctuations and calculate scaling laws of the variance of stochastic sample paths near critical transitions for fast subsystem bifurcations up to codimension two. The theory is applied to several models: the Stommel-Cessi box model for the thermohaline circulation from geoscience, an epidemic-spreading model on an adaptive network, an activator-inhibitor switch from systems biology, a predator-prey system from ecology and to the Euler buckling problem from classical mechanics. For the Stommel-Cessi…
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