LLM Reasoning 相关度: 6/10

Dynamics-Informed Deep Learning for Predicting Extreme Events

Eirini Katsidoniotaki, Themistoklis P. Sapsis
arXiv: 2603.10777v1 发布: 2026-03-11 更新: 2026-03-11

AI 摘要

提出了一种基于动力学信息的深度学习框架,用于预测高维混沌系统中的极端事件。

主要贡献

  • 提出了一种基于FTLE-like precursors的极端事件预测方法
  • 使用OTD模式自适应地计算低维子空间中的不稳定性增长
  • 将不稳定机制编码到Transformer模型中,实现长提前期预测

方法论

计算OTD模式下的FTLE-like precursors,作为Transformer模型的输入,预测极端事件,无需知道控制方程。

原文摘要

Predicting extreme events in high-dimensional chaotic dynamical systems remains a fundamental challenge, as such events are rare, intermittent, and arise from transient dynamical mechanisms that are difficult to infer from limited observations. Accordingly, real-time forecasting calls for precursors that encode the mechanisms driving extremes, rather than relying solely on statistical associations. We propose a fully data-driven framework for long-lead prediction of extreme events that constructs interpretable, mechanism-aware precursors by explicitly tracking transient instabilities preceding event onset. The approach leverages a reduced-order formulation to compute finite-time Lyapunov exponent (FTLE)-like precursors directly from state snapshots, without requiring knowledge of the governing equations. To avoid the prohibitive computational cost of classical FTLE computation, instability growth is evaluated in an adaptively evolving low-dimensional subspace spanned by Optimal Time-Dependent (OTD) modes, enabling efficient identification of transiently amplifying directions. These precursors are then provided as input to a Transformer-based model, enabling forecast of extreme event observables. We demonstrate the framework on Kolmogorov flow, a canonical model of intermittent turbulence. The results show that explicitly encoding transient instability mechanisms substantially extends practical prediction horizons compared to baseline observable-based approaches.

标签

极端事件预测 动力系统 深度学习 Transformer FTLE

arXiv 分类

cs.LG math.DS nlin.CD