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用于预测选择性激光熔化制造的Ti-6Al-4V零件相对密度的小数据集优化XGBoost模型

Optimized XGBoost Model with Small Dataset for Predicting Relative Density of Ti-6Al-4V Parts Manufactured by Selective Laser Melting.

作者信息

Zou Miao, Jiang Wu-Gui, Qin Qing-Hua, Liu Yu-Cheng, Li Mao-Lin

机构信息

School of Aeronautical Manufacturing Engineering, Nanchang Hangkong University, Nanchang 330063, China.

Department of Materials Science, Shenzhen MSU-BIT University, Shenzhen 518172, China.

出版信息

Materials (Basel). 2022 Aug 1;15(15):5298. doi: 10.3390/ma15155298.

Abstract

Determining the quality of Ti-6Al-4V parts fabricated by selective laser melting (SLM) remains a challenge due to the high cost of SLM and the need for expertise in processes and materials. In order to understand the correspondence of the relative density of SLMed Ti-6Al-4V parts with process parameters, an optimized extreme gradient boosting (XGBoost) decision tree model was developed in the present paper using hyperparameter optimization with the GridsearchCV method. In particular, the effect of the size of the dataset for model training and testing on model prediction accuracy was examined. The results show that with the reduction in dataset size, the prediction accuracy of the proposed model decreases, but the overall accuracy can be maintained within a relatively high accuracy range, showing good agreement with the experimental results. Based on a small dataset, the prediction accuracy of the optimized XGBoost model was also compared with that of artificial neural network (ANN) and support vector regression (SVR) models, and it was found that the optimized XGBoost model has better evaluation indicators such as mean absolute error, root mean square error, and the coefficient of determination. In addition, the optimized XGBoost model can be easily extended to the prediction of mechanical properties of more metal materials manufactured by SLM processes.

摘要

由于选择性激光熔化(SLM)成本高昂,且需要工艺和材料方面的专业知识,因此确定通过SLM制造的Ti-6Al-4V零件的质量仍然是一项挑战。为了了解SLM Ti-6Al-4V零件的相对密度与工艺参数之间的对应关系,本文采用GridsearchCV方法进行超参数优化,开发了一种优化的极端梯度提升(XGBoost)决策树模型。特别地,研究了用于模型训练和测试的数据集大小对模型预测精度的影响。结果表明,随着数据集大小的减小,所提出模型的预测精度降低,但总体精度可保持在相对较高的精度范围内,与实验结果显示出良好的一致性。基于小数据集,还将优化后的XGBoost模型的预测精度与人工神经网络(ANN)和支持向量回归(SVR)模型进行了比较,发现优化后的XGBoost模型具有更好的评估指标,如平均绝对误差、均方根误差和决定系数。此外,优化后的XGBoost模型可以很容易地扩展到预测通过SLM工艺制造的更多金属材料的力学性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/450a/9369844/01abfaed75de/materials-15-05298-g001.jpg

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