Neural Dynamic Modes: Computational Imaging of Dynamical Systems from Sparse Observations
- URL: http://arxiv.org/abs/2507.03094v1
- Date: Thu, 03 Jul 2025 18:05:56 GMT
- Title: Neural Dynamic Modes: Computational Imaging of Dynamical Systems from Sparse Observations
- Authors: Ali SaraerToosi, Renbo Tu, Kamyar Azizzadenesheli, Aviad Levis,
- Abstract summary: We present NeuralDMD, a model-free framework that combines implicit neural representations with Dynamic Mode Decomposition (DMD)<n>We validate NeuralDMD on two real-world problems: reconstructing near-surface wind-speed fields over North America from sparse station observations, and recovering the evolution of plasma near the Galactic-center black hole Sgr A*.<n>In both cases, NeuralDMD outperforms established baselines, demonstrating its potential as a general tool for imaging dynamical systems across geoscience, astronomy, and beyond.
- Score: 15.985271131617475
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Dynamical systems are ubiquitous within science and engineering, from turbulent flow across aircraft wings to structural variability of proteins. Although some systems are well understood and simulated, scientific imaging often confronts never-before-seen dynamics observed through indirect, noisy, and highly sparse measurements. We present NeuralDMD, a model-free framework that combines neural implicit representations with Dynamic Mode Decomposition (DMD) to reconstruct continuous spatio-temporal dynamics from such measurements. The expressiveness of neural representations enables capturing complex spatial structures, while the linear dynamical modes of DMD introduce an inductive bias that guides training and supports stable, low-dimensional representations and forecasting. We validate NeuralDMD on two real-world problems: reconstructing near-surface wind-speed fields over North America from sparse station observations, and recovering the evolution of plasma near the Galactic-center black hole, Sgr A*. In both cases, NeuralDMD outperforms established baselines, demonstrating its potential as a general tool for imaging dynamical systems across geoscience, astronomy, and beyond.
Related papers
- KoopGen: Koopman Generator Networks for Representing and Predicting Dynamical Systems with Continuous Spectra [65.11254608352982]
We introduce a generator-based neural Koopman framework that models dynamics through a structured, state-dependent representation of Koopman generators.<n>By exploiting the intrinsic Cartesian decomposition into skew-adjoint and self-adjoint components, KoopGen separates conservative transport from irreversible dissipation.
arXiv Detail & Related papers (2026-02-15T06:32:23Z) - Scalable Spatio-Temporal SE(3) Diffusion for Long-Horizon Protein Dynamics [51.85385061275941]
Molecular dynamics (MD) simulations remain the gold standard for studying protein dynamics.<n>Recent generative models have shown promise in accelerating simulations, yet they struggle with long-horizon generation.<n>We present STAR-MD, a scalable diffusion model that generates physically plausible protein trajectories over micro-scale timescales.
arXiv Detail & Related papers (2026-02-02T14:13:28Z) - Langevin Flows for Modeling Neural Latent Dynamics [81.81271685018284]
We introduce LangevinFlow, a sequential Variational Auto-Encoder where the time evolution of latent variables is governed by the underdamped Langevin equation.<n>Our approach incorporates physical priors -- such as inertia, damping, a learned potential function, and forces -- to represent both autonomous and non-autonomous processes in neural systems.<n>Our method outperforms state-of-the-art baselines on synthetic neural populations generated by a Lorenz attractor.
arXiv Detail & Related papers (2025-07-15T17:57:48Z) - Structured Kolmogorov-Arnold Neural ODEs for Interpretable Learning and Symbolic Discovery of Nonlinear Dynamics [3.9000699798128338]
We propose a novel framework that integrates structured state-space modeling with the Kolmogorov-Arnold Network (KAN)<n>SKANODE first employs a fully trainable KAN as a universal function approximator within a structured Neural ODE framework to perform virtual sensing.<n>We exploit the symbolic regression capability of KAN to extract compact and interpretable expressions for the system's governing dynamics.
arXiv Detail & Related papers (2025-06-23T06:42:43Z) - Conservation-informed Graph Learning for Spatiotemporal Dynamics Prediction [84.26340606752763]
In this paper, we introduce the conservation-informed GNN (CiGNN), an end-to-end explainable learning framework.<n>The network is designed to conform to the general symmetry conservation law via symmetry where conservative and non-conservative information passes over a multiscale space by a latent temporal marching strategy.<n>Results demonstrate that CiGNN exhibits remarkable baseline accuracy and generalizability, and is readily applicable to learning for prediction of varioustemporal dynamics.
arXiv Detail & Related papers (2024-12-30T13:55:59Z) - Geometric Trajectory Diffusion Models [58.853975433383326]
Generative models have shown great promise in generating 3D geometric systems.
Existing approaches only operate on static structures, neglecting the fact that physical systems are always dynamic in nature.
We propose geometric trajectory diffusion models (GeoTDM), the first diffusion model for modeling the temporal distribution of 3D geometric trajectories.
arXiv Detail & Related papers (2024-10-16T20:36:41Z) - Recurrent Deep Kernel Learning of Dynamical Systems [0.5825410941577593]
Digital twins require computationally-efficient reduced-order models (ROMs) that can accurately describe complex dynamics of physical assets.
We propose a data-driven, non-intrusive deep kernel learning (SVDKL) method to discover low-dimensional latent spaces from data.
Results show that our framework is capable of (i) denoising and reconstructing measurements, (ii) learning compact representations of system states, (iii) predicting system evolution in low-dimensional latent spaces, and (iv) modeling uncertainties.
arXiv Detail & Related papers (2024-05-30T07:49:02Z) - Equivariant Graph Neural Operator for Modeling 3D Dynamics [148.98826858078556]
We propose Equivariant Graph Neural Operator (EGNO) to directly models dynamics as trajectories instead of just next-step prediction.
EGNO explicitly learns the temporal evolution of 3D dynamics where we formulate the dynamics as a function over time and learn neural operators to approximate it.
Comprehensive experiments in multiple domains, including particle simulations, human motion capture, and molecular dynamics, demonstrate the significantly superior performance of EGNO against existing methods.
arXiv Detail & Related papers (2024-01-19T21:50:32Z) - SEGNO: Generalizing Equivariant Graph Neural Networks with Physical
Inductive Biases [66.61789780666727]
We show how the second-order continuity can be incorporated into GNNs while maintaining the equivariant property.
We also offer theoretical insights into SEGNO, highlighting that it can learn a unique trajectory between adjacent states.
Our model yields a significant improvement over the state-of-the-art baselines.
arXiv Detail & Related papers (2023-08-25T07:15:58Z) - Capturing dynamical correlations using implicit neural representations [85.66456606776552]
We develop an artificial intelligence framework which combines a neural network trained to mimic simulated data from a model Hamiltonian with automatic differentiation to recover unknown parameters from experimental data.
In doing so, we illustrate the ability to build and train a differentiable model only once, which then can be applied in real-time to multi-dimensional scattering data.
arXiv Detail & Related papers (2023-04-08T07:55:36Z) - Decomposed Linear Dynamical Systems (dLDS) for learning the latent
components of neural dynamics [6.829711787905569]
We propose a new decomposed dynamical system model that represents complex non-stationary and nonlinear dynamics of time series data.
Our model is trained through a dictionary learning procedure, where we leverage recent results in tracking sparse vectors over time.
In both continuous-time and discrete-time instructional examples we demonstrate that our model can well approximate the original system.
arXiv Detail & Related papers (2022-06-07T02:25:38Z) - Dynamic Mode Decomposition in Adaptive Mesh Refinement and Coarsening
Simulations [58.720142291102135]
Dynamic Mode Decomposition (DMD) is a powerful data-driven method used to extract coherent schemes.
This paper proposes a strategy to enable DMD to extract from observations with different mesh topologies and dimensions.
arXiv Detail & Related papers (2021-04-28T22:14:25Z) - Spatial-temporal switching estimators for imaging locally concentrated
dynamics [18.73097340265486]
A switching linear dynamic system (SLDS) is a natural model under which to pose such problems.
Because of the high parameter space dimensionality, efficient and accurate recovery of the underlying state is challenging.
This paper focuses on the common cases where the dynamic evolution may be adequately modeled as a collection of decoupled, locally concentrated dynamic operators.
arXiv Detail & Related papers (2021-02-19T21:36:47Z) - Learning Continuous System Dynamics from Irregularly-Sampled Partial
Observations [33.63818978256567]
We present LG-ODE, a latent ordinary differential equation generative model for modeling multi-agent dynamic system with known graph structure.
It can simultaneously learn the embedding of high dimensional trajectories and infer continuous latent system dynamics.
Our model employs a novel encoder parameterized by a graph neural network that can infer initial states in an unsupervised way.
arXiv Detail & Related papers (2020-11-08T01:02:22Z) - Limited-angle tomographic reconstruction of dense layered objects by
dynamical machine learning [68.9515120904028]
Limited-angle tomography of strongly scattering quasi-transparent objects is a challenging, highly ill-posed problem.
Regularizing priors are necessary to reduce artifacts by improving the condition of such problems.
We devised a recurrent neural network (RNN) architecture with a novel split-convolutional gated recurrent unit (SC-GRU) as the building block.
arXiv Detail & Related papers (2020-07-21T11:48:22Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.