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    Chen Xinhai, Peng Jiaming, Qiao Peng, Jia Menghan, Wang Qinglin, Zhang Xiang, Yang Bo, Liu Jie. An Intelligent Parallel Structured Mesh Generation Framework Based on Unsupervised LearningJ. Journal of Computer Research and Development. DOI: 10.7544/issn1000-1239.202550134
    Citation: Chen Xinhai, Peng Jiaming, Qiao Peng, Jia Menghan, Wang Qinglin, Zhang Xiang, Yang Bo, Liu Jie. An Intelligent Parallel Structured Mesh Generation Framework Based on Unsupervised LearningJ. Journal of Computer Research and Development. DOI: 10.7544/issn1000-1239.202550134

    An Intelligent Parallel Structured Mesh Generation Framework Based on Unsupervised Learning

    • With the rapid development of high-performance computing technologies, the complexity and scale of scientific computing problems have significantly increased. As a critical input for scientific computing, mesh generation has emerged as an important research direction in high-performance computing. To address challenges such as low computational efficiency and complex human-machine interaction in large-scale mesh generation, intelligent mesh generation methods have attracted increasing attention. However, achieving a deep integration of high-performance computing and artificial intelligence in mesh generation remains a critical challenge. To overcome these challenges, an intelligent parallel mesh generation framework based on unsupervised learning is proposed, enabling the efficient generation of large-scale multi-block structured meshes. The framework integrates a block partitioning method based on cross-fields, a Fourier Kolmogorov-Arnold network model, and a mesh alignment technique. It employs an unsupervised learning approach to adaptively learn high-quality mesh partitioning rules, effectively overcoming the limitations of existing intelligent methods in handling complex geometries. Additionally, a novel parallel transfer learning mechanism is introduced, significantly enhancing model convergence efficiency by transferring task similarity features across different processes. Experimental results demonstrate that the proposed framework achieves up to a 10-fold improvement in efficiency over traditional mesh generation methods for hundred-million-scale tasks. Furthermore, it outperforms existing intelligent mesh generation methods across five different quality metrics, achieving state-of-the-art performance.
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