Point-Cloud-based Deep Learning Models for Finite Element Analysis

Meduri Venkata Shivaditya, Francesca Bugiotti, F. Magoulès
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Abstract

In this paper, we explore point-cloud based deep learning models to analyze numerical simulations arising from finite element analysis. The objective is to classify automatically the results of the simulations without tedious human intervention. Two models are here presented: the Point-Net classification model and the Dynamic Graph Convolutional Neural Net model. Both trained point-cloud deep learning models performed well on experiments with finite element analysis arising from automotive industry. The proposed models show promise in automatizing the analysis process of finite element simulations. An accuracy of 79.17% and 94.5% is obtained for the Point-Net and the Dynamic Graph Convolutional Neural Net model respectively.
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基于点云的有限元分析深度学习模型
在本文中,我们探索基于点云的深度学习模型来分析由有限元分析产生的数值模拟。目标是在没有繁琐的人工干预的情况下对模拟结果进行自动分类。本文提出了两种模型:点网分类模型和动态图卷积神经网络模型。经过训练的点云深度学习模型在汽车行业的有限元分析实验中表现良好。所提出的模型在有限元仿真分析过程的自动化方面显示出良好的前景。Point-Net和Dynamic Graph Convolutional Neural Net模型的准确率分别为79.17%和94.5%。
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