LGMar 11

Factorized Neural Implicit DMD for Parametric Dynamics

arXiv:2603.10995v114.41 citationsh-index: 54
Predicted impact top 44% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This addresses the problem of real-time analysis and control in high-dimensional physical systems for researchers and engineers, though it appears incremental as it builds on existing neural field and operator methods.

The paper tackled modeling parametric dynamical systems by learning a factorized flow operator that decouples spatial modes and temporal evolution, enabling stable long-term predictions and spectral analysis across unseen parameters.

A data-driven, model-free approach to modeling the temporal evolution of physical systems mitigates the need for explicit knowledge of the governing equations. Even when physical priors such as partial differential equations are available, such systems often reside in high-dimensional state spaces and exhibit nonlinear dynamics, making traditional numerical solvers computationally expensive and ill-suited for real-time analysis and control. Consider the problem of learning a parametric flow of a dynamical system: with an initial field and a set of physical parameters, we aim to predict the system's evolution over time in a way that supports long-horizon rollouts, generalization to unseen parameters, and spectral analysis. We propose a physics-coded neural field parameterization of the Koopman operator's spectral decomposition. Unlike a physics-constrained neural field, which fits a single solution surface, and neural operators, which directly approximate the solution operator at fixed time horizons, our model learns a factorized flow operator that decouples spatial modes and temporal evolution. This structure exposes underlying eigenvalues, modes, and stability of the underlying physical process to enable stable long-term rollouts, interpolation across parameter spaces, and spectral analysis. We demonstrate the efficacy of our method on a range of dynamics problems, showcasing its ability to accurately predict complex spatiotemporal phenomena while providing insights into the system's dynamic behavior.

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