Lifting the Winding Number: Precise Representation of Complex Cuts in Subspace Physics Simulations
Journal:
arXiv
Published Date:
Feb 2, 2025
Abstract
Cutting thin-walled deformable structures is common in daily life, but poses
significant challenges for simulation due to the introduced spatial
discontinuities. Traditional methods rely on mesh-based domain representations,
which require frequent remeshing and refinement to accurately capture evolving
discontinuities. These challenges are further compounded in reduced-space
simulations, where the basis functions are inherently geometry- and
mesh-dependent, making it difficult or even impossible for the basis to
represent the diverse family of discontinuities introduced by cuts.
Recent advances in representing basis functions with neural fields offer a
promising alternative, leveraging their discretization-agnostic nature to
represent deformations across varying geometries. However, the inherent
continuity of neural fields is an obstruction to generalization, particularly
if discontinuities are encoded in neural network weights.
We present Wind Lifter, a novel neural representation designed to accurately
model complex cuts in thin-walled deformable structures. Our approach
constructs neural fields that reproduce discontinuities precisely at specified
locations, without baking in the position of the cut line. Crucially, our
approach does not embed the discontinuity in the neural network's weights,
opening avenues to generalization of cut placement.
Our method achieves real-time simulation speeds and supports dynamic updates
to cut line geometry during the simulation. Moreover, the explicit
representation of discontinuities makes our neural field intuitive to control
and edit, offering a significant advantage over traditional neural fields,
where discontinuities are embedded within the network's weights, and enabling
new applications that rely on general cut placement.