Geometry-aware Active Learning of Spatiotemporal Dynamic Systems
Journal:
arXiv
Published Date:
Apr 26, 2025
Abstract
Rapid developments in advanced sensing and imaging have significantly
enhanced information visibility, opening opportunities for predictive modeling
of complex dynamic systems. However, sensing signals acquired from such complex
systems are often distributed across 3D geometries and rapidly evolving over
time, posing significant challenges in spatiotemporal predictive modeling. This
paper proposes a geometry-aware active learning framework for modeling
spatiotemporal dynamic systems. Specifically, we propose a geometry-aware
spatiotemporal Gaussian Process (G-ST-GP) to effectively integrate the temporal
correlations and geometric manifold features for reliable prediction of
high-dimensional dynamic behaviors. In addition, we develop an adaptive active
learning strategy to strategically identify informative spatial locations for
data collection and further maximize the prediction accuracy. This strategy
achieves the adaptive trade-off between the prediction uncertainty in the
G-ST-GP model and the space-filling design guided by the geodesic distance
across the 3D geometry. We implement the proposed framework to model the
spatiotemporal electrodynamics in a 3D heart geometry. Numerical experiments
show that our framework outperforms traditional methods lacking the mechanism
of geometric information incorporation or effective data collection.