PAMF: An LLM-driven framework for automated mesh generation in mechanical simulation and CAE workflows.

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Bibliographic Details
Title: PAMF: An LLM-driven framework for automated mesh generation in mechanical simulation and CAE workflows.
Authors: Pan, Feiyang1 (AUTHOR), Yin, Chunyan1 (AUTHOR), Dou, Guangbin1 (AUTHOR) gdou@seu.edu.cn
Source: Journal of Mechanical Science & Technology. Jun2026, Vol. 40 Issue 6, p4497-4507. 11p.
Subjects: Numerical grid generation (Numerical analysis), Computer-aided engineering, Engineering simulations, Finite element method, Detectors, Language models, Error analysis in mathematics
Abstract: Finite element method (FEM) is pivotal in mechanical engineering, particularly for sensor design and reliability analysis, where high-quality meshing critically impacts computational accuracy and efficiency. However, generating adaptive meshes for complex geometries in traditional FEM relies heavily on computationally expensive posterior error estimation and iterative refinement. To address this, we propose the predictive adaptive meshing framework (PAMF) leveraging two fine-tuned LLM agents for a priori mesh generation and error prediction. By feeding predicted errors back to the mesh generator, PAMF actively refines meshes, significantly improving success rates. For validation, we developed an APDL code library with 100 mechanical models, featuring representative sensor geometries, under fixed constraints and force loads. Experiments show PAMF achieves 88.4 % mesh success rate, with 66.8 % of meshes yielding below 10 % error (Zienkiewicz-Zhu estimation), accelerating generation by 3.69 times versus traditional methods. This framework demonstrates LLMs' potential to revolutionize efficiency in mechanical simulation. To ensure full transparency and reproducibility, the complete dataset, all prompts, and related code for this study are publicly available at: https://github.com/2002-Pan/PAMF. [ABSTRACT FROM AUTHOR]
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Database: Engineering Source
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