Dynamics-Informed Deep Learning for Predicting Extreme Events
arXiv cs.LG / 3/12/2026
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Key Points
- The paper introduces a fully data-driven framework for long-lead prediction of extreme events in high-dimensional chaotic systems, using mechanism-aware precursors.
- It constructs finite-time Lyapunov exponent–like precursors directly from state snapshots without requiring knowledge of governing equations, via an adaptively evolving low-dimensional subspace of Optimal Time-Dependent (OTD) modes to reduce computation.
- These precursors feed a Transformer-based model to forecast extreme-event observables, achieving longer prediction horizons than baseline observable-based approaches.
- The approach is demonstrated on Kolmogorov flow, showing that explicitly encoding transient instability mechanisms improves practical forecasting horizons.
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