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Deep learning for predicting the occurrence of tipping points

About

Tipping points occur in many real-world systems, at which the system shifts suddenly from one state to another. The ability to predict the occurrence of tipping points from time series data remains an outstanding challenge and a major interest in a broad range of research fields. Particularly, the widely used methods based on bifurcation theory are neither reliable in prediction accuracy nor applicable for irregularly-sampled time series which are commonly observed from real-world systems. Here we address this challenge by developing a deep learning algorithm for predicting the occurrence of tipping points in untrained systems, by exploiting information about normal forms. Our algorithm not only outperforms traditional methods for regularly-sampled model time series but also achieves accurate predictions for irregularly-sampled model time series and empirical time series. Our ability to predict tipping points for complex systems paves the way for mitigation risks, prevention of catastrophic failures, and restoration of degraded systems, with broad applications in social science, engineering, and biology.

Chengzuo Zhuge, Jiawei Li, Wei Chen• 2024

Related benchmarks

TaskDatasetResultRank
Critical transition detectionB-Hopf Canonical
AUROC0.665
9
Critical transition detectionR-Compost Semi-real
AUROC50.6
9
Critical transition detectionB-AMOC Semi-real
AUROC67.9
9
Critical transition detectionB-Fold Canonical
AUROC52.2
9
Critical transition detectionB-Trans Canonical
AUROC0.458
9
Critical transition detectionB-Harv. Semi-real
AUROC73.4
9
Critical transition detectionB-RM Semi-real
AUROC0.57
9
Critical transition detectionR-AMOC Semi-real
AUROC0.112
9
Critical transition detectionB-RM Hopf Semi-real
AUROC0.422
9
Critical transition detectionB-SEIRx Semi-real
AUROC38.1
9
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