Machine-Learning-Based Thermal Conductivity Prediction for Additively Manufactured Alloys

IF 3.3 Q2 ENGINEERING, MANUFACTURING
U. Bhandari, Yehong Chen, H. Ding, Congyuan Zeng, Selami Emanet, P. Gradl, Shengmin Guo
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引用次数: 0

Abstract

Thermal conductivity (TC) is greatly influenced by the working temperature, microstructures, thermal processing (heat treatment) history and the composition of alloys. Due to computational costs and lengthy experimental procedures, obtaining the thermal conductivity for novel alloys, particularly parts made with additive manufacturing, is difficult and it is almost impossible to optimize the compositional space for an absolute targeted value of thermal conductivity. To address these difficulties, a machine learning method is explored to predict the TC of additive manufactured alloys. To accomplish this, an extensive thermal conductivity dataset for additively manufactured alloys was generated for several AM alloy families (nickel, copper, iron, cobalt-based) over various temperatures (300–1273 K). This unique dataset was used in training and validating machine learning models. Among the five different regression machine learning models trained with the dataset, extreme gradient boosting performs the best as compared with other models with an R2 score of 0.99. Furthermore, the accuracy of this model was tested using Inconel 718 and GRCop-42 fabricated with laser powder bed fusion-based additive manufacture, which have never been observed by the extreme gradient boosting model, and a good match between the experimental results and machine learning prediction was observed. The average mean error in predicting the thermal conductivity of Inconel 718 and GRCop-42 at different temperatures was 3.9% and 2.08%, respectively. This paper demonstrates that the thermal conductivity of novel AM alloys could be predicted quickly based on the dataset and the ML model.
基于机器学习的增材制造合金导热系数预测
热导率(TC)很大程度上受工作温度、显微组织、热处理历史和合金成分的影响。由于计算成本和漫长的实验过程,获得新型合金的导热系数,特别是用增材制造制造的零件,是困难的,并且几乎不可能优化成分空间以获得导热系数的绝对目标值。为了解决这些困难,探索了一种机器学习方法来预测增材制造合金的TC。为了实现这一目标,我们为几个增材制造合金家族(镍、铜、铁、钴基)在不同温度(300-1273 K)下生成了广泛的导热数据集。这个独特的数据集用于训练和验证机器学习模型。在使用该数据集训练的五种不同的回归机器学习模型中,极端梯度增强与其他模型相比表现最好,R2得分为0.99。利用基于激光粉末床熔融增材制造的Inconel 718和GRCop-42两种极端梯度助推模型对模型的精度进行了测试,实验结果与机器学习预测结果吻合较好。预测Inconel 718和GRCop-42在不同温度下导热系数的平均误差分别为3.9%和2.08%。本文证明了基于数据集和ML模型可以快速预测新型AM合金的导热系数。
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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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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