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A Boundary Integral-based Neural Operator for Mesh Deformation

Zhengyu Wu, Jun Liu, Wei Wang
arXiv:2602.23703v1
Originality Highly original
AI Analysis

This provides a reliable new paradigm for parametric mesh generation and shape optimization in engineering, addressing efficiency and boundary condition limitations.

The paper tackles the computational cost of traditional mesh deformation methods by introducing a boundary integral-based neural operator that expresses internal displacements solely as a function of boundary displacements, achieving high accuracy and strict adherence to linearity principles in numerical experiments with flexible beams and NACA airfoils.

This paper presents an efficient mesh deformation method based on boundary integration and neural operators, formulating the problem as a linear elasticity boundary value problem (BVP). To overcome the high computational cost of traditional finite element methods and the limitations of existing neural operators in handling Dirichlet boundary conditions for vector fields, we introduce a direct boundary integral representation using a Dirichlet-type Green's tensor. This formulation expresses the internal displacement field solely as a function of boundary displacements, eliminating the need to solve for unknown tractions. Building on this, we design a Boundary-Integral-based Neural Operator (BINO) that learns the geometry- and material-aware Green's traction kernel. A key technical advantage of our framework is the mathematical decoupling of the physical integration process from the geometric representation via geometric descriptors. While this study primarily demonstrates robust generalization across diverse boundary conditions, the architecture inherently possesses potential for cross-geometry adaptation. Numerical experiments, including large deformations of flexible beams and rigid-body motions of NACA airfoils, confirm the model's high accuracy and strict adherence to the principles of linearity and superposition. The results demonstrate that the proposed framework ensures mesh quality and computational efficiency, providing a reliable new paradigm for parametric mesh generation and shape optimization in engineering.

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