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Improving Long-Range Interactions in Graph Neural Simulators via Hamiltonian Dynamics

Hoang, Tai ORCID iD icon 1; Trenta, Alessandro; Gravina, Alessio; Freymuth, Niklas 1; Becker, Philipp 1; Bacciu, Davide; Neumann, Gerhard 1
1 Institut für Anthropomatik und Robotik (IAR), Karlsruher Institut für Technologie (KIT)

Abstract:

Learning to simulate complex physical systems from data has emerged as a promising way to overcome the limitations of traditional numerical solvers, which often require prohibitive computational costs for high-fidelity solutions. Recent Graph Neural Simulators (GNSs) accelerate simulations by learning dynamics on graph-structured data, yet often struggle to capture long-range interactions and suffer from error accumulation under autoregressive rollouts. To address these challenges, we propose Information-preserving Graph Neural Simulators (IGNS), a graph-based neural simulator built on the principles of Hamiltonian dynamics. This structure guarantees preservation of information across the graph, while extending to port-Hamiltonian systems allows the model to capture a broader class of dynamics, including non-conservative effects. IGNS further incorporates a warmup phase to initialize global context, geometric encoding to handle irregular meshes, and a multi-step training objective that facilitates PDE matching, where the trajectory produced by integrating the port-Hamiltonian core aligns with the ground-truth trajectory, thereby reducing rollout error. ... mehr


Verlagsausgabe §
DOI: 10.5445/IR/1000192177
Veröffentlicht am 14.04.2026
Cover der Publikation
Zugehörige Institution(en) am KIT Institut für Anthropomatik und Robotik (IAR)
Publikationstyp Proceedingsbeitrag
Publikationsjahr 2026
Sprache Englisch
Identifikator KITopen-ID: 1000192177
Erschienen in The Fourteenth International Conference on Learning Representations
Veranstaltung 14th International Conference on Learning Representations (1016), Rio de Janeiro, Brasilien, 23.04.2026 – 27.04.2026
Vorab online veröffentlicht am 26.01.2026
Externe Relationen Abstract/Volltext
Schlagwörter Graph Neural Simulators, Long-range interactions, Learning Simulators, AI4Science
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