In a finite element analysis, using a large number of grids is important to obtain accurate results, but is a resource-consuming task. Aiming to real-time simulation and optimization, it is desired to obtain fine grid analysis results within a limited resource. This paper proposes a super-resolution method that predicts a stress tensor field in a high-resolution from low-resolution contour plots by utilizing a U-Net-based neural network which is called PI-UNet. In addition, the proposed model minimizes the residual of the equilibrium constraints so that it outputs a physically reasonable solution. The proposed network is trained with FEM results of simple shapes, and is validated with a complicated realistic shape to evaluate generalization capability. Although ESRGAN is a standard model for image super-resolution, the proposed U-Net based model outperforms ESRGAN model in the stress tensor prediction task.
翻译:在有限要素分析中,使用大量网格对于取得准确的结果很重要,但是一项耗费资源的任务。为了实时模拟和优化,希望能在有限的资源范围内获得精细的网格分析结果。本文件提出一种超级分辨率方法,利用一个称为PI-UNet的基于U-Net的神经网络,预测低分辨率等深层地块的高分辨率应力阵列。此外,拟议的模型尽可能减少均衡限制的残余,从而产生一种实际合理的解决办法。拟议的网络通过以简单形状的FEM结果进行训练,并以复杂现实的形状加以验证,以评价一般化能力。虽然ESRGAN是图像超分辨率的标准模型,但拟议的基于U-Net的模型在压力高压预测任务中优于ESRGAN模型。