NANAMay 27

An efficient and stable diffusion generated method for quadrilateral mesh generation in general domains

arXiv:2605.2785461.6h-index: 2
Predicted impact top 4% in NA · last 90 daysOriginality Incremental advance
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It provides a more efficient and theoretically sound approach to quadrilateral mesh generation for scientific computing applications, eliminating common bottlenecks.

This paper presents a novel method for quadrilateral mesh generation on general 2D domains that avoids intermediate triangular meshes and complex nonlinear optimization, using FFT-based linear diffusion and point-wise normalization. The method achieves robust, high-quality meshes with significant computational efficiency.

This paper introduces a novel, robust, and computationally efficient framework for high-quality quadrilateral mesh generation on general two-dimensional domains. The core of the proposed approach is a novel method for computing cross fields by minimizing a modified and relaxed Ginzburg--Landau-type energy functional. A key innovation is the extension of the problem from the original, potentially complex domain to a larger regular computational domain. This extension transforms the central computational procedure into an iterative scheme that requires only two straightforward and efficient operations: linear diffusion solved globally via the Fast Fourier Transform (FFT) and point-wise normalization. Notably, our method eliminates the conventional need for generating an intermediate triangular mesh or solving complex nonlinear optimization problems on the irregular domain. We provide a rigorous theoretical analysis, proving that the proposed iterative algorithm guarantees unconditional monotonic decay of the objective functional. Comprehensive numerical experiments demonstrate the method's robustness across a wide range of complex geometries, its significant computational efficiency afforded by the FFT-based diffusion, and its consistent generation of high-quality quadrilateral meshes. This work presents a reliable and theoretically sound alternative to existing mesh generation techniques, with strong potential for practical applications in scientific computing.

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