Prediction of stress concentration at fillets using a neural network for efficient finite element analysis

Taichiro Yamaguchi, H. Okuda
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引用次数: 1

Abstract

In finite element analysis, small fillets make mesh generation difficult and accurate evaluation of stress concentration at fillets requires refined meshes. Simplified analysis is often performed using a corner model where the fillets are removed. In the analysis using a corner model, mesh division becomes easier and the number of elements is reduced, which shortens the calculation time. However, the stress concentrations cannot be evaluated, and stress singularities occur at corners. We have developed a method for predicting the stress at a fillet based on the simulation of a simplified corner model and the use of a neural network. We use the stress distribution at a corner as the neural network input such that the method can be applied to arbitrary object shapes, loading, and boundary conditions. We trained and validated the neural network using simple corner and fillet models. It was shown that stress distribution at a corner can express the difference in loading conditions. In addition, we found that the method can predict stress at fillets of models that were not used for the neural network training. These results show the possibility that the method enables efficient stress concentration evaluation in finite element analysis.
利用神经网络预测圆角处的应力集中,进行有效的有限元分析
在有限元分析中,小圆角使网格生成困难,准确评估圆角处的应力集中需要精细的网格。简化分析通常使用角模型执行,其中去除圆角。在角点模型分析中,网格划分容易,单元数量减少,从而缩短了计算时间。然而,应力集中无法评估,应力奇点出现在角落。我们开发了一种基于简化角模型模拟和使用神经网络来预测圆角处应力的方法。我们使用拐角处的应力分布作为神经网络输入,使得该方法可以应用于任意物体形状、载荷和边界条件。我们使用简单的角和圆角模型来训练和验证神经网络。结果表明,角部处的应力分布可以表示加载条件的差异。此外,我们发现该方法可以预测未用于神经网络训练的模型的圆角处的应力。这些结果表明,该方法有可能在有限元分析中实现有效的应力集中评估。
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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