English

Parametric Interpolation of Dynamic Mode Decomposition for Predicting Nonlinear Systems

Systems and Control 2026-04-15 v1 Machine Learning Systems and Control

Abstract

We present parameter-interpolated dynamic mode decomposition (piDMD), a parametric reduced-order modeling framework that embeds known parameter-affine structure directly into the DMD regression step. Unlike existing parametric DMD methods which interpolate modes, eigenvalues, or reduced operators and can be fragile with sparse training data or multi-dimensional parameter spaces, piDMD learns a single parameter-affine Koopman surrogate reduced order model (ROM) across multiple training parameter samples and predicts at unseen parameter values without retraining. We validate piDMD on fluid flow past a cylinder, electron beam oscillations in transverse magnetic fields, and virtual cathode oscillations -- the latter two being simulated using an electromagnetic particle-in-cell (EMPIC) method. Across all benchmarks, piDMD achieves accurate long-horizon predictions and improved robustness over state-of-the-art interpolation-based parametric DMD baselines, with less training samples and with multi-dimensional parameter spaces.

Keywords

Cite

@article{arxiv.2604.12103,
  title  = {Parametric Interpolation of Dynamic Mode Decomposition for Predicting Nonlinear Systems},
  author = {Ananda Chakrabarti and Haitham H. Saleh and Indranil Nayak and Balasubramaniam Shanker and Fernando L. Teixeira and Debdipta Goswami},
  journal= {arXiv preprint arXiv:2604.12103},
  year   = {2026}
}

Comments

22 pages, 9 figures

R2 v1 2026-07-01T12:07:40.545Z