AI RESEARCH

Anticipating tipping in spatiotemporal systems with machine learning

arXiv CS.LG

ArXi:2604.06454v1 Announce Type: cross In nonlinear dynamical systems, tipping refers to a critical transition from one steady state to another, typically catastrophic, steady state, often resulting from a saddle-node bifurcation. Recently, the machine-learning framework of parameter-adaptable reservoir computing has been applied to predict tipping in systems described by low-dimensional stochastic differential equations. However, anticipating tipping in complex spatiotemporal dynamical systems remains a significant open problem.