基于机器学习的Ti6Al4V激光粉末床熔合工艺优化数据输入策略

G. D. Goh, Xi Huang, Sheng Huang, Jia Li Janessa Thong, Jia Jun Seah, W. Yeong
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引用次数: 1

摘要

连接增材制造工艺参数和材料特性的数据库可以根据工艺参数确定材料的性能,这在产品的设计和制造阶段是有用的。然而,这些数据往往是不完整的,因为每个单独的研究工作都集中在某些工艺参数和材料特性上,这是由于可用的变量范围很广。因此,需要输入缺失的数据来完成素材库。在这项工作中,我们试图整理Ti6Al4V的数据,Ti6Al4V是一种用于航空航天和生物医学工业的流行合金,使用粉末床熔合或通常称为选择性激光熔化(SLM)制造。本文研究了SLM Ti6Al4V数据集缺失数据的k-最近邻(kNN)、链式方程多元归算和图归算神经网络(GINN)等多种归算技术。观察到,kNN在输入与工艺参数相关的变量时表现更好,而GINN在输入与材料性能相关的变量时表现更好。为了进一步提高imputation的质量,一种使用从三个模型中获得的imputation值的中位数的策略在相对均方误差方面取得了显著的改善。采用自组织图将工艺参数与材料性能之间的关系可视化。
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Data imputation strategies for process optimization of laser powder bed fusion of Ti6Al4V using machine learning
A database linking process parameters and material properties for additive manufacturing enables the performance of the material to be determined based on the process parameters, which are useful in the design and fabrication stage of a product. The data, however, are often incomplete as each individual research work focused on certain process parameters and material properties due to the wide range of variables available. Imputation of missing data is thus required to complete the material library. In this work, we attempt to collate the data of Ti6Al4V, a popular alloy used in aerospace and biomedical industries, fabricated using powder bed fusion, or commonly known as selective laser melting (SLM). Various imputation techniques of missing data of the SLM Ti6Al4V dataset, such as the k-nearest neighbor (kNN), multivariate imputation by chained equations, and graph imputation neural network (GINN) are investigated in this article. It was observed that kNN performed better in imputing variables related to process parameters, whereas GINN performed better in variables related to material properties. To further improve the quality of imputation, a strategy to use the median of the imputed values obtained from the three models has resulted in significant improvement in terms of the relative mean square error. Self-organizing map was used to visualize the relationship among the process parameters and the material properties.
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