Jatti Vijaykumar S, Saiyathibrahim A, Yadav Arvind, R Murali Krishnan, Jayaprakash B, Kaushal Sumit, Jatti Vinaykumar S, Jatti Ashwini V, Jatti Savita V, Kumar Abhinav, Gouadria Soumaya, Bonyah Ebenezer
Department of Mechanical Engineering, School of Engineering and Applied Sciences, Bennett University, India.
University Centre for Research and Development, Chandigarh University, Mohali, Punjab, India.
PLoS One. 2025 Jun 2;20(6):e0324049. doi: 10.1371/journal.pone.0324049. eCollection 2025.
In this study, the ability of machine learning algorithms to predict tensile properties of both heat-treated and non-heat treated LPBFed AlSi10Mg alloy is investigated. The data was analyzed using various Machine Learning Regression (MLR) models such as Linear Regression (LR), Gaussian Process Regression (GPR), Random Forest Regression (RFR), and Decision Tree (DT). The AlSi10Mg alloys, heat-treated and non heat-treated, had different tensile characteristics. The tensile characteristics were forecasted using trained and evaluated MLR models. Because the performance of various MLR models has been verified by several performance indicators, such as Root Mean Square Error (RMSE), R2 (coefficient of determination), Mean Square Error (MSE), and Mean Absolute Error (MAE). Moreover, scatter plots were made for checking the accuracy of the forecast. The GPR model demonstrated better prediction performance than the other three models, i.e., higher R2 values and lower error values for the heat-treated samples. For predicting the UTS value of non-heat treated samples, the LR model performs very well with R2 of 1.000. In that case, GPR has the better predictive performance for the other tensile features in non-heat treated samples. Summing up, it is obvious that GPR is well capable of predicting tensile properties of AlSi10Mg alloy with high precision. This indicates how important GPR is to additive manufacturing to achieve great quality.
在本研究中,研究了机器学习算法预测热处理和未热处理的激光粉末床熔融(LPBF)AlSi10Mg合金拉伸性能的能力。使用各种机器学习回归(MLR)模型对数据进行分析,如线性回归(LR)、高斯过程回归(GPR)、随机森林回归(RFR)和决策树(DT)。热处理和未热处理的AlSi10Mg合金具有不同的拉伸特性。使用经过训练和评估的MLR模型预测拉伸特性。因为各种MLR模型的性能已经通过几个性能指标得到验证,如均方根误差(RMSE)、R2(决定系数)、均方误差(MSE)和平均绝对误差(MAE)。此外,还制作了散点图以检查预测的准确性。GPR模型显示出比其他三个模型更好的预测性能,即对于热处理样品具有更高的R2值和更低的误差值。对于预测未热处理样品的极限抗拉强度(UTS)值,LR模型表现非常出色,R2为1.000。在这种情况下,GPR对于未热处理样品的其他拉伸特征具有更好的预测性能。总之,很明显GPR能够高精度地预测AlSi10Mg合金的拉伸性能。这表明GPR对于增材制造实现高质量是多么重要。