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Improvement of springback prediction accuracy using material model considering elastoplastic anisotropy and Bauschinger effect

机译:考虑弹塑性各向异性和鲍辛格效应的材料模型提高回弹预测精度

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摘要

Springback prediction is necessary when applying high-strength steel sheets to automotive parts. The accuracy of springback prediction depends on the material model, which describes the deformation behavior of steel sheets. In this research, a material model which considers important material behaviors (Bauschinger effect, average Young's modulus, elastic anisotropy and plastic anisotropy) was developed and implemented in FEM software. Springback analyses were performed for curved hat-shaped parts made of high-strength steel sheets. As a result, the effects of each material behavior on springback were clarified. It was found that not only the Bauschinger effect and average Young's modulus but also elastic anisotropy and plastic anisotropy influenced the results of springback predictions, particularly in the case of anisotropic material. Springback analysis considering all four material behaviors yielded better springback prediction accuracy than those of conventional analyses. (C) 2015 Elsevier B.V. All rights reserved.
机译:将高强度钢板应用于汽车零件时,必须进行回弹预测。回弹预测的准确性取决于材料模型,该模型描述了钢板的变形行为。在这项研究中,建立了考虑重要材料行为(鲍辛格效应,平均杨氏模量,弹性各向异性和塑性各向异性)的材料模型,并在FEM软件中实现了该模型。对由高强度钢板制成的弯曲帽形零件进行了回弹分析。结果,澄清了每种材料行为对回弹的影响。发现不仅鲍辛格效应和平均杨氏模量,而且弹性各向异性和塑性各向异性都影响回弹预测的结果,特别是在各向异性材料的情况下。考虑到所有四种材料行为的回弹分析比传统分析产生了更好的回弹预测精度。 (C)2015 Elsevier B.V.保留所有权利。

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