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Artificial Neural Networks-Based Material Parameter Identification for Numerical Simulations of Additively Manufactured Parts by Material Extrusion

机译:基于人工神经网络的材料参数识别用于材料挤出的瘾制造部件的数值模拟

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摘要

To be able to use finite element (FE) simulations in structural component development, experimental investigations for the characterization of the material properties are required to subsequently calibrate suitable material cards. In contrast to the commonly used computational and time-consuming method of parameter identification (PI) by using analytical and numerical optimizations with internal or commercial software, a more time-efficient method based on machine learning (ML) is presented. This method is applied to simulate the material behavior of additively manufactured specimens made of acrylonitrile butadiene styrene (ABS) under uniaxial stress in a structural simulation. By using feedforward artificial neural networks (FFANN) for the ML-based direct inverse PI process, various investigations were carried out on the influence of sampling strategies, data quantity and data preparation on the prediction accuracy of the NN. Furthermore, the results of hyperparameter (HP) search methods are presented and discussed and their influence on the prediction quality of the FFANN are critically evaluated. The investigations show that the NN-based method is applicable to the present use case and results in material parameters that lead to a lower error between experimental and calculated force-displacement curves than the commonly used optimization-based method.
机译:为了能够在结构部件开发中使用有限元(Fe)模拟,需要对材料性质表征进行实验研究,以便随后校准合适的材料卡。与使用内部或商业软件的分析和数值优化使用分析和数值优化的参数识别(PI)的常用计算和耗费方法相反,提出了一种基于机器学习(ML)的更多时间有效的方法。应用该方法以模拟在结构模拟中的单轴应力下在单轴应力下由丙烯腈丁二烯苯乙烯(ABS)制成的加丙烯腈丁二烯苯乙烯(ABS)的材料行为。通过使用基于ML的直接逆PI过程的前馈人工神经网络(FFANN),对采样策略,数据量和数据准备对NN预测准确性的影响进行了各种研究。此外,呈现和讨论了HyperParameter(HP)搜索方法的结果,并且它们对FFANN的预测质量的影响是重大评估的。该研究表明,基于NN的方法适用于本用例,并导致材料参数,导致实验和计算的力 - 位移曲线之间的误差比常用的基于优化的方法。

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