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首页> 外文期刊>Journal of Mechanical Science and Technology >Design of T-shaped tube hydroforming using finite element and artificial neural network modeling
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Design of T-shaped tube hydroforming using finite element and artificial neural network modeling

机译:用有限元和人工神经网络造型设计T形管液的设计

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摘要

Tube hydroforming (THF) is a frequently used manufacturing method in the industry, especially on automotive and aircraft industries. Compared with other manufacturing processes, THF provides parts with better quality and lower production costs. This paper proposes a design approach to estimate the T-shaped THF parameters, such as counter force, axial feed, and internal pressure, through finite element (FE) and artificial neural network (ANN) modeling. A numerical database is built through Taguchi's L27 orthogonal array of experiments to train the ANN. The micromechanical damage model of Gurson-Tvergaard-Needleman is used with an elastoplastic approach to describe the material behavior. This study aims to find the combinations of THF parameters that maximize the bulge ratio and minimize the thinning ratio and wrinkling. The numerical results obtained by the FE model show good correlation with the results predicted by the ANN.
机译:管液压素(THF)是业内常用的制造方法,尤其是汽车和飞机行业。 与其他制造工艺相比,THF提供具有更高质量和降低生产成本的零件。 本文提出了一种设计方法来估计T形THF参数,例如反力,轴向进料和内压,通过有限元(FE)和人工神经网络(ANN)建模。 通过Taguchi的L27正交实验构建了一个数字数据库,以培训ANN。 Gurson-Tvergaard-Greastleman的微机械损伤模型用于塑造方法来描述材料行为。 本研究旨在找到最大化凸起比率的THF参数的组合,并最大限度地减少稀释比和皱纹。 通过FE模型获得的数值结果与ANN预测的结果显示出良好的相关性。

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