srl辅助AFM:基于监督和强化学习辅助推进前沿法生成平面非结构化四边形网格

Huai-Shui Tong, Kuanren Qian, Eni Halilaj, Y. Zhang
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摘要

高质量的网格生成是精确有限元分析的基础。由于内部顶点搜索空间巨大,初始边界复杂,复杂域的网格生成需要大量的人工处理,一直被认为是整个建模和分析过程中最具挑战性和最耗时的瓶颈。在本文中,我们提出了一种名为“srl辅助AFM”的新型计算框架,该框架将推进前沿方法与神经网络相结合,使用“策略网络”选择参考顶点并更新前沿边界。这些深度神经网络使用独特的管道进行训练,该管道将监督学习与强化学习相结合,以迭代地提高网格质量。首先,我们通过在正方形域中随机采样点并将其顺序连接来生成不同的初始边界。这些边界用于在监督学习模块中获取输入网格和提取训练数据集。然后,我们使用针对特殊要求设计的奖励函数迭代改进强化学习模型的性能,例如提高网格质量和控制异常点的数量和分布。我们提出的监督学习神经网络在预测商业软件上的准确率高于98%。最后的强化学习神经网络自动生成具有尖锐特征和边界层的复杂平面域的高质量四边形网格。
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SRL-Assisted AFM: Generating Planar Unstructured Quadrilateral Meshes with Supervised and Reinforcement Learning-Assisted Advancing Front Method
High-quality mesh generation is the foundation of accurate finite element analysis. Due to the vast interior vertices search space and complex initial boundaries, mesh generation for complicated domains requires substantial manual processing and has long been considered the most challenging and time-consuming bottleneck of the entire modeling and analysis process. In this paper, we present a novel computational framework named ``SRL-assisted AFM"for meshing planar geometries by combining the advancing front method with neural networks that select reference vertices and update the front boundary using ``policy networks."These deep neural networks are trained using a unique pipeline that combines supervised learning with reinforcement learning to iteratively improve mesh quality. First, we generate different initial boundaries by randomly sampling points in a square domain and connecting them sequentially. These boundaries are used for obtaining input meshes and extracting training datasets in the supervised learning module. We then iteratively improve the reinforcement learning model performance with reward functions designed for special requirements, such as improving the mesh quality and controlling the number and distribution of extraordinary points. Our proposed supervised learning neural networks achieve an accuracy higher than 98% on predicting commercial software. The final reinforcement learning neural networks automatically generate high-quality quadrilateral meshes for complex planar domains with sharp features and boundary layers.
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