AI RESEARCH

A Weak Penalty Neural ODE for Learning Chaotic Dynamics from Noisy Time Series

arXiv CS.LG

ArXi:2511.06609v3 Announce Type: replace The accurate forecasting of complex, high-dimensional dynamical systems from observational data is a fundamental task across numerous scientific and engineering disciplines. A significant challenge arises from noise-corrupted measurements, which severely degrade the performance of data-driven models. In chaotic dynamical systems, where small initial errors amplify exponentially, it is particularly difficult to develop a model from noisy data that achieves short-term accuracy while preserving long-term invariant properties.