Era Israt Zarin, Grandhi Manikanta, Liu Zhichao
Department of Industrial and Management Systems Engineering, West Virginia University, Morgantown, WV 26506 USA.
Int J Adv Manuf Technol. 2022;121(3-4):2445-2459. doi: 10.1007/s00170-022-09509-1. Epub 2022 Jun 11.
Laser-based directed energy deposition (L-DED) is a rising field in the arena of metal additive manufacturing and has extensive applications in aerospace, medical, and rapid prototyping. The process parameters, such as laser power, scanning speed, and layer thickness, play an important role in controlling and affecting the properties of DED fabricated parts. Nevertheless, both experimental and simulation methods have shown constraints and limited ability to generate accurate and efficient computational predictions on the correlations between the process parameters and the final part quality. In this paper, two data-driven machine learning algorithms, Extreme Gradient Boosting (XGBoost) and Random Forest (RF), were applied to predict the tensile behaviors including yield strength, ultimate tensile strength, and elongation (%) of the stainless steel 316L parts by DED. The results suggest that both models successfully predicted the tensile properties of the fabricated parts. The performance of the proposed methods was evaluated and compared with the Ridge Regression by the root mean squared error (RMSE), relative error (RE), and coefficient of determination (R). XGBoost outperformed both Ridge Regression and Random Forest in terms of prediction accuracy.
基于激光的定向能量沉积(L-DED)是金属增材制造领域中一个新兴的领域,在航空航天、医疗和快速成型等方面有着广泛的应用。诸如激光功率、扫描速度和层厚等工艺参数在控制和影响DED制造零件的性能方面起着重要作用。然而,实验和模拟方法都显示出了局限性,在生成关于工艺参数与最终零件质量之间相关性的准确且高效的计算预测方面能力有限。在本文中,两种数据驱动的机器学习算法,极端梯度提升(XGBoost)和随机森林(RF),被用于预测通过DED制造的316L不锈钢零件的拉伸行为,包括屈服强度、极限抗拉强度和伸长率(%)。结果表明,两个模型都成功地预测了制造零件的拉伸性能。通过均方根误差(RMSE)、相对误差(RE)和决定系数(R)对所提出方法的性能进行了评估,并与岭回归进行了比较。在预测准确性方面,XGBoost优于岭回归和随机森林。