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.2021 Sep 28;118(39):e2106140118.
doi: 10.1073/pnas.2106140118.

Deep learning for early warning signals of tipping points

Affiliations

Deep learning for early warning signals of tipping points

Thomas M Bury et al. Proc Natl Acad Sci U S A..

Abstract

Many natural systems exhibit tipping points where slowly changing environmental conditions spark a sudden shift to a new and sometimes very different state. As the tipping point is approached, the dynamics of complex and varied systems simplify down to a limited number of possible "normal forms" that determine qualitative aspects of the new state that lies beyond the tipping point, such as whether it will oscillate or be stable. In several of those forms, indicators like increasing lag-1 autocorrelation and variance provide generic early warning signals (EWS) of the tipping point by detecting how dynamics slow down near the transition. But they do not predict the nature of the new state. Here we develop a deep learning algorithm that provides EWS in systems it was not explicitly trained on, by exploiting information about normal forms and scaling behavior of dynamics near tipping points that are common to many dynamical systems. The algorithm provides EWS in 268 empirical and model time series from ecology, thermoacoustics, climatology, and epidemiology with much greater sensitivity and specificity than generic EWS. It can also predict the normal form that characterizes the oncoming tipping point, thus providing qualitative information on certain aspects of the new state. Such approaches can help humans better prepare for, or avoid, undesirable state transitions. The algorithm also illustrates how a universe of possible models can be mined to recognize naturally occurring tipping points.

Keywords: bifurcation theory; dynamical systems; early warning signals; machine learning; theoretical ecology.

Copyright © 2021 the Author(s). Published by PNAS.

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Conflict of interest statement

The authors declare no competing interest.

Figures

Fig. 1.
Fig. 1.
Trends in indicators prior to three different bifurcations in ecological models. (AC) Trajectory (gray) and smoothing (black) of a simulation of an ecological model going through a fold, Hopf, and transcritical bifurcation, respectively. (DF) Lag-1 AC computed over a rolling window (arrow) of width 0.25. (GI) Variance. (JL) Probabilities assigned to the fold (purple), Hopf (orange), and transcritical (cyan) bifurcation by the DL algorithm. The vertical dashed line marks the time at which the system crosses the bifurcation.
Fig. 2.
Fig. 2.
ROC curves for predictions using 80 to 100% of the pretransition time series for model and empirical data. ROC curves compare the performance of the DL algorithm (blue), variance (red), and lag-1 AC (green) in predicting an upcoming transition. The area under the curve (AUC), abbreviated to A, is a measure of performance.Insets show the frequency of the favored DL probability among the forced trajectories: (F)old, (T)ranscritical, (H)opf, or (N)eutral. (A) May’s harvesting model going through a fold bifurcation; (B andC) consumer−resource model going through a (B) Hopf and (C) transcritical bifurcation; (D andE) behavior−disease model going through a transcritical bifurcation using data from (D) provaccine opinion (x) and (E) total infectious (I); (F) sediment data showing rapid transitions to an anoxic states in the Mediterranean sea; (G) data of a thermoacoustic system undergoing a Hopf bifurcation; and (H) ice core records showing rapid transitions in paleoclimate data. The diagonal dashed line marks where a classifier works no better than a random coin toss.
Fig. 3.
Fig. 3.
CNN-LSTM architecture.
See this image and copyright information in PMC

Comment in

  • Teaching machines to anticipate catastrophes.
    Lapeyrolerie M, Boettiger C.Lapeyrolerie M, et al.Proc Natl Acad Sci U S A. 2021 Oct 5;118(40):e2115605118. doi: 10.1073/pnas.2115605118.Proc Natl Acad Sci U S A. 2021.PMID:34583999Free PMC article.No abstract available.

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