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Learning Lagrangian Interaction Dynamics with Sampling-Based Model Order Reduction

About

Simulating physical systems governed by Lagrangian dynamics often entails solving partial differential equations (PDEs) over high-resolution spatial domains, leading to significant computational expense. Reduced-order modeling (ROM) mitigates this cost by evolving low-dimensional latent representations of the underlying system. While neural ROMs enable querying solutions from latent states at arbitrary spatial points, their latent states typically represent the global domain and struggle to capture localized, highly dynamic behaviors such as fluids. We propose a sampling-based reduction framework that evolves Lagrangian systems directly in physical space over the particles themselves, reducing the number of active degrees of freedom via data-driven neural PDE operators. To enable querying at arbitrary spatial locations, we introduce a learnable kernel parameterization that uses local spatial information from time-evolved sample particles to infer the underlying solution manifold. Empirically, our approach achieves a 6.6x to 32x reduction in input dimensionality while maintaining high-fidelity evaluations across diverse Lagrangian regimes, including fluid flows, granular media, and elastoplastic dynamics. We refer to this framework as GIOROM (Geometry-Informed Reduced-Order Modeling). All code and data are available at: https://github.com/HrishikeshVish/GIOROM

Hrishikesh Viswanath, Yue Chang, Aleksey Panas, Julius Berner, Peter Yichen Chen, Aniket Bera• 2024

Related benchmarks

TaskDatasetResultRank
3D Dynamic Simulation ReconstructionPLASTICINE-3D
Relative L2 Error1.98
8
3D Dynamic Simulation ReconstructionSAND-3D
Relative L2 Error2.68
8
3D Dynamic Simulation ReconstructionWATER-3D
Relative L2 Error9.24
8
3D Dynamic Simulation ReconstructionELASTICITY-3D
Relative L2 Error (%)2.04
8
Physical System SimulationWATER-3D
One-Step MSE (x e-9)5.23
2
Physical System SimulationWATER-2D
One-Step MSE (x e-9)0.524
2
Physical System SimulationGOOP-2D
One-Step MSE (1e-9)1.31
2
Physical System SimulationPLASTICINE
One-Step MSE0.974
2
Physical System SimulationSAND-3D
One-Step MSE4.87e-9
2
Physical System SimulationSAND-2D
One-Step MSE8.5
2
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