Hierarchical Physics-Embedded Learning for Spatiotemporal Dynamical Systems

arXiv — cs.LGThursday, October 30, 2025 at 4:00:00 AM
A new study on hierarchical physics-embedded learning has emerged, focusing on the modeling of complex spatiotemporal dynamics in far-from-equilibrium systems. This research addresses the challenges posed by the intricate nature of governing partial differential equations, which are often difficult to derive due to high-order derivatives and strong nonlinearities. By advancing data-driven methods, this work could significantly enhance our understanding of these complex systems, making it a noteworthy development in the field of science.
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