Model reduction for the material point method via an implicit neural representation of the deformation map
Peter Yichen Chen, Maurizio M. Chiaramonte, Eitan Grinspun, Kevin, Carlberg

TL;DR
This paper introduces a novel model reduction technique for the material point method using implicit neural representations to approximate deformation maps, enabling real-time simulations with significant computational savings.
Contribution
It proposes an implicit neural representation-based approach for continuous deformation maps in the material point method, supporting dynamic discretizations and real-time computation.
Findings
Achieves an order of magnitude computational speedup.
Supports dynamic resolution changes during simulations.
Enables real-time large-scale simulations with negligible errors.
Abstract
This work proposes a model-reduction approach for the material point method on nonlinear manifolds. Our technique approximates the by approximating the deformation map using an implicit neural representation that restricts deformation trajectories to reside on a low-dimensional manifold. By explicitly approximating the deformation map, its spatiotemporal gradients -- in particular the deformation gradient and the velocity -- can be computed via analytical differentiation. In contrast to typical model-reduction techniques that construct a linear or nonlinear manifold to approximate the (finite number of) degrees of freedom characterizing a given spatial discretization, the use of an implicit neural representation enables the proposed method to approximate the deformation map. This allows the kinematic approximation to remain agnostic to the…
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Taxonomy
TopicsFluid Dynamics Simulations and Interactions · Model Reduction and Neural Networks · Lattice Boltzmann Simulation Studies
