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Learning the dynamics of particle-based systems with Lagrangian graph neural networks
Physical systems are commonly represented as a combination of particles, the individual dynamics of which govern the system dynamics. However, traditional approaches require the knowledge of several abstract quantities such as the energy or force to infer the dynamics of these particles. Here, we pr...
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Published in: | Machine learning: science and technology 2023-03, Vol.4 (1), p.15003 |
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Main Authors: | , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | Physical systems are commonly represented as a combination of particles, the individual dynamics of which govern the system dynamics. However, traditional approaches require the knowledge of several abstract quantities such as the energy or force to infer the dynamics of these particles. Here, we present a framework, namely, Lagrangian graph neural network (
LGnn
), that provides a strong inductive bias to learn the Lagrangian of a particle-based system directly from the trajectory. We test our approach on challenging systems with constraints and drag—
LGnn
outperforms baselines such as feed-forward Lagrangian neural network (
Lnn
) with improved performance. We also show the
zero-shot
generalizability of the system by simulating systems two orders of magnitude larger than the trained one and also hybrid systems that are unseen by the model, a unique feature. The graph architecture of
LGnn
significantly simplifies the learning in comparison to
Lnn
with ∼25 times better performance on ∼20 times smaller amounts of data. Finally, we show the interpretability of
LGnn
, which directly provides physical insights on drag and constraint forces learned by the model.
LGnn
can thus provide a fillip toward understanding the dynamics of physical systems purely from observable quantities. |
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ISSN: | 2632-2153 2632-2153 |
DOI: | 10.1088/2632-2153/acb03e |