- 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.