Graph Neural Network-based Surrogate Models for Finite Element Analysis

Meduri Venkata Shivaditya, J. Alves, Francesca Bugiotti, F. Magoulès
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引用次数: 2

Abstract

Current simulation of metal forging processes use advanced finite element methods. Such methods consist of solving mathematical equations, which takes a significant amount of time for the simulation to complete. Computational time can be prohibitive for parametric response surface exploration tasks. In this paper, we propose as an alternative, a Graph Neural Network-based graph prediction model to act as a surrogate model for parameters search space exploration and which exhibits a time cost reduced by an order of magnitude. Numerical experiments show that this new model outperforms the Point-Net model and the Dynamic Graph Convolutional Neural Net model.
基于图神经网络的有限元分析代理模型
目前的金属锻造过程模拟采用了先进的有限元方法。这些方法包括求解数学方程,这需要大量的时间来完成模拟。对于参数响应面勘探任务,计算时间可能是令人望而却步的。在本文中,我们提出了一种替代方案,基于图神经网络的图预测模型作为参数搜索空间探索的替代模型,该模型的时间成本降低了一个数量级。数值实验表明,该模型优于点网模型和动态图卷积神经网络模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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