English

LDMD with Temporally Adaptive Segmentation

Numerical Analysis 2025-10-23 v2 Numerical Analysis Dynamical Systems

Abstract

Dynamic mode decomposition (DMD) is a widely used data-driven algorithm for predicting the future states of dynamical systems. However, its standard formulation often struggles with poor long-term predictive accuracy. To address this limitation, we propose a localized DMD (LDMD) framework that improves prediction performance by integrating DMD's strong linear forecasting capabilities with time-domain segmentation techniques. In this framework, the temporal domain is segmented into multiple subintervals, within which snapshot matrices are constructed and localized predictions are performed. We first present the localized DMD method with predefined segmentation, and then explore an adaptive segmentation strategy to further enhance computational efficiency and prediction robustness. Furthermore, we conduct an error analysis that provides the upper bound of the local and global truncation error for the proposed framework. The effectiveness of LDMD is demonstrated on four benchmark problems-Burgers', Allen-Cahn, nonlinear Schrodinger, and Maxwell's equations. Numerical results show that LDMD significantly enhances long-term predictive accuracy while preserving high computational efficiency.

Keywords

Cite

@article{arxiv.2510.08065,
  title  = {LDMD with Temporally Adaptive Segmentation},
  author = {Qiuqi Li and Chang Liu and Yifei Yang},
  journal= {arXiv preprint arXiv:2510.08065},
  year   = {2025}
}

Comments

arXiv:2510.08065 is an updated version of our earlier preprint arXiv:2503.13093. We now wish to consolidate these two works by updating arXiv:2503.13093 and withdrawing arXiv:2510.08065

R2 v1 2026-07-01T06:26:27.168Z