利用传感器和机器学习预测熔丝加工零件的性能

IF 3.3 Q2 ENGINEERING, MANUFACTURING
Zijie Liu, Gerardo A. Mazzei Capote, Evan Grubis, Apoorv Pandey, Juan C. Blanco Campos, Graydon R. Hegge, Tim A. Osswald
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引用次数: 0

摘要

熔融长丝制造(FFF),俗称3d打印,由于其适合生产具有复杂几何形状的高度定制产品,已逐渐从实验室扩展到工业和家庭领域。然而,由于大量的打印参数组合已被证明对零件的最终结构完整性有重大影响,因此很难评估通过这种增材制造(AM)方法生产的样品的机械性能。这意味着使用通过破坏性测试获得的实验数据并不总是可行的。在这项研究中,提出了基于快速预测打印部件所需的挤压力和机械性能的预测模型,选择打印过程中最具代表性的打印参数子集作为感兴趣的域。从配备在线传感器的3D打印机获得的数据用于训练几个不同的预测模型。通过比较响应面法(RSM)和五种不同机器学习模型的决定系数(R2),发现支持向量回归器(SVR)在该数据量情况下具有最佳性能。最终,在这项工作中开发的ML资源可以潜在地支持AM技术在通过模拟评估零件结构完整性中的应用,并且还可以集成到控制回路中,如果预期的长丝力-速度对拖到ML预测的公差区域之外,则可以暂停甚至纠正失败的打印。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Properties of Fused Filament Fabrication Parts through Sensors and Machine Learning
Fused filament fabrication (FFF), colloquially known as 3D-printing, has gradually expanded from the laboratory to the industrial and household realms due to its suitability for producing highly customized products with complex geometries. However, it is difficult to evaluate the mechanical performance of samples produced by this method of additive manufacturing (AM) due to the high number of combinations of printing parameters, which have been shown to significantly impact the final structural integrity of the part. This implies that using experimental data attained through destructive testing is not always viable. In this study, predictive models based on the rapid prediction of the required extrusion force and mechanical properties of printed parts are proposed, selecting a subset of the most representative printing parameters during the printing process as the domain of interest. Data obtained from the in-line sensor-equipped 3D printers were used to train several different predictive models. By comparing the coefficient of determination (R2) of the response surface method (RSM) and five different machine learning models, it is found that the support vector regressor (SVR) has the best performance in this data volume case. Ultimately, the ML resources developed in this work can potentially support the application of AM technology in the assessment of part structural integrity through simulation and can also be integrated into a control loop that can pause or even correct a failing print if the expected filament force-speed pairing is trailing outside a tolerance zone stemming from ML predictions.
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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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