Mesh generation remains a key technology in many areas where numerical simulations are required. As numerical algorithms become more efficient and computers become more powerful, the percentage of time devoted to mesh generation becomes higher. In this paper, we present an improved structured mesh generation method. The method formulates the meshing problem as a global optimization problem related to a physics-informed neural network. The mesh is obtained by intelligently solving the physical boundary-constrained partial differential equations. To improve the prediction accuracy of the neural network, we also introduce a novel auxiliary line strategy and an efficient network model during meshing. The strategy first employs a priori auxiliary lines to provide ground truth data and then uses these data to construct a loss term to better constrain the convergence of the subsequent training. The experimental results indicate that the proposed method is effective and robust. It can accurately approximate the mapping (transformation) from the computational domain to the physical domain and enable fast high-quality structured mesh generation.
翻译:网络生成仍然是许多需要数字模拟的领域的关键技术。 随着数字算法变得更加高效,计算机变得更加强大,用于网络生成的时间比例也越来越高。 在本文中,我们提出了一个结构化的网络生成方法。该方法将网状问题表述为与物理知情神经网络有关的全球优化问题。该网状是通过智能解决物理边界限制的局部差异方程式获得的。为了提高神经网络的预测准确性,我们还引入了一个新的辅助线策略和高效网络模型。该战略首先使用前置辅助线提供地面真实数据,然后使用这些数据构建一个损失术语,以更好地限制后续培训的趋同。实验结果显示,该拟议方法是有效和稳健的。它可以精确地将绘图(转换)从计算域到物理域,并能够实现快速的高质量结构网状生成。