研究用于预测增材制造中印刷部件机械性能的集合机器学习技术

Jayanta Bhusan Deb , Shilpa Chowdhury , Nur Mohammad Ali
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引用次数: 0

摘要

本研究采用集合机器学习模型来预测三维打印聚乳酸(PLA)试样的机械性能。我们研究了构建方向、填充角度、层厚度、打印速度和喷嘴温度等五个工艺参数对打印部件抗拉强度和表面粗糙度的影响。利用从打印的 27 个试样中收集到的实验数据开发了机器学习模型。在机器学习建模阶段,开发了梯度提升回归、极端梯度提升回归、自适应提升回归、随机森林回归和极端随机树回归模型,用于预测印刷部件的表面粗糙度和拉伸强度。这项研究证明了极随机树回归模型在准确预测拉伸强度方面的有效性,其均方根误差(RMSE)为 1.03,平均绝对误差(MAE)为 0.82,平均绝对百分比误差(MAPE)为 2.20%。同样,随机森林回归模型在预测表面粗糙度方面显示出更好的准确性,其 RMSE 为 0.408,MAE 为 0.31,MAPE 为 9.28%。此外,比较研究还证实,在预测印刷部件的表面粗糙度和抗拉强度方面,集合机器学习技术比传统的支持向量和 K 近邻机器学习模型更有用。研究结果凸显了利用集合机器学习模型识别数据集中复杂关联的新方法,为通过调整工艺参数组合改进产品设计和优化机械性能奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An investigation of the ensemble machine learning techniques for predicting mechanical properties of printed parts in additive manufacturing

This study investigates the ensemble machine learning models to predict the mechanical properties of the 3D-printed Polylactic Acid (PLA) specimens. We studied the effects of five process parameters, including the build orientation, infill angle, layer thickness, printing speed, and nozzle temperature, on the printed parts tensile strength and surface roughness. Machine learning models are developed using the experimental data collected from the printed 27 specimens. Gradient Boosting Regression, Extreme Gradient Boosting Regression, Adaptive Boosting Regression, Random Forest Regression, and Extremely Randomized Tree Regression models were developed during the machine learning modeling stage to predict the surface roughness and tensile strength of the printed parts. This research demonstrates the effectiveness of Extremely Randomized Tree Regression model in providing accurate tensile strength predictions with root mean square error (RMSE) of 1.03, mean absolute error (MAE) of 0.82, and mean absolute percentage error (MAPE) of 2.20%. Similarly, Random Forest Regression model shows better accuracy in predicting surface roughness having RMSE of 0.408, MAE of 0.31, and MAPE of 9.28%. Moreover, the comparative study confirms that ensemble machine learning techniques are more useful than the traditional support vector and k-nearest neighbor machine learning models for predicting the surface roughness and tensile strength of the printed parts. The results highlight a novel approach of using ensemble machine learning models in identifying complex correlations in the dataset, establishing the foundation for improved product design and mechanical property optimization through adjustment of the process parameters combination.

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