EGU26-6719, updated on 13 Mar 2026
https://doi.org/10.5194/egusphere-egu26-6719
EGU General Assembly 2026
© Author(s) 2026. This work is distributed under
the Creative Commons Attribution 4.0 License.
Poster | Monday, 04 May, 10:45–12:30 (CEST), Display time Monday, 04 May, 08:30–12:30
 
Hall X5, X5.42
Probabilistic prediction of tipping points in Earth system with deep learning
Wenjie Zhang1,2, Yu Huang2,3, Sebastian Bathiany2,3, Yechul Shin4, Suiping Zhou1, and Niklas Boers2,3,5
Wenjie Zhang et al.
  • 1School of Aerospace Science and Technology, Xidian University, Xi’an, China
  • 2School of Engineering and Design, Technical University of Munich, Munich, Germany
  • 3Complexity Science, Potsdam Institute for Climate Impact Research, Potsdam, Germany
  • 4School of Earth and Environmental Sciences, Seoul National University, Seoul, Republic of Korea
  • 5Department of Mathematics and Global Systems Institute, University of Exeter, Exeter, UK

Abrupt transitions in the Earth system can arise from bifurcation-induced tipping, rapid forcing rates, or noise-driven excursions, making early warning inherently probabilistic. Using the Atlantic Meridional Overturning Circulation (AMOC) as a case study, we run large ensemble simulations of a calibrated AMOC model under time-varying freshwater forcing and stochastic perturbations. Even under identical forcing scenarios, only a subset of ensemble members undergoes a tipping transition, highlighting an intrinsically stochastic regime. In this setting, conventional early-warning signals based on critical slowing down (CSD, e.g., increasing lag-1 autocorrelation and variance) show limited prediction ability and are easily confounded by non-stationary forcing and noise. We develop a deep-learning (DL) indicator trained on labeled ensemble trajectories to distinguish transitioning from non-transitioning dynamics using sliding windows of time series, thereby capturing high-order temporal statistics beyond traditional early-warning indicators. In application, the model outputs trajectory-specific probabilities of tipping in real time, enabling probabilistic warnings ahead of tipping. Across a range of freshwater forcing pathways and noise amplitudes, the DL indicator provides earlier and more robust probabilistic forecasts than CSD indicators and supports a probabilistic interpretation of safe operating boundaries. The framework is transferable to other Earth system components where tipping risk must be assessed under uncertainty from stochastics and forcing.

How to cite: Zhang, W., Huang, Y., Bathiany, S., Shin, Y., Zhou, S., and Boers, N.: Probabilistic prediction of tipping points in Earth system with deep learning, EGU General Assembly 2026, Vienna, Austria, 3–8 May 2026, EGU26-6719, https://doi.org/10.5194/egusphere-egu26-6719, 2026.