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A novel approach to calibrate the Drucker-Prager Cap model for A17075 powder

机译:校准A17075粉末的Drucker-Prager帽模型的新方法

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Determination of the parameters of modified Drucker-Prager Cap (DPC) constitutive model for Al7075 powder is investigated in this work. The parameters are normally identified by experiment which is time consuming, tedious and expensive. In this study, the constants of DPC model are identified by conducting only a simple uniaxial powder compaction test, using finite element (FE) simulations in ABAQUS/standard, and utilizing artificial neural networks (ANN). The relation between the Young's modulus (E) and relative density of the powder was incorporated in ABAQUS code using a USDFLD user-defined subroutine. In the proposed approach, the neural networks are trained to predict the DPC parameters in a way to minimize the differences between experimental and FE curves of uniaxial powder compaction. The input parameters of the ANN were features of uniaxial powder compaction load-displacement curve. A reasonable agreement was observed between the experimental and numerical load-displacement curves of the powder compaction for the DPC parameters predicted by ANN. Moreover, the accuracy of this DPC model was verified again in compaction of a bush-type sample.
机译:本文研究了Al7075粉末的改良Drucker-Prager Cap(DPC)本构模型的参数确定。通常通过实验来识别参数,这是耗时,繁琐且昂贵的。在这项研究中,仅通过进行简单的单轴粉末压实测试,使用ABAQUS / standard中的有限元(FE)模拟并利用人工神经网络(ANN)来识别DPC模型的常数。杨氏模量(E)和粉末相对密度之间的关系使用USDFLD用户定义的子例程并入了ABAQUS代码中。在提出的方法中,训练神经网络以最小化单轴粉末压实的实验曲线和FE曲线之间的差异的方式来预测DPC参数。人工神经网络的输入参数是单轴粉末压实载荷-位移曲线的特征。对于由ANN预测的DPC参数,粉末压实的实验和数值荷载-位移曲线之间观察到合理的一致性。此外,该DPC模型的准确性在灌木型样品的压实中再次得到验证。

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