通过机器学习研究短碳纤维对熔丝制造部件粗糙度的影响。

IF 2.3 4区 工程技术 Q3 ENGINEERING, MANUFACTURING 3D Printing and Additive Manufacturing Pub Date : 2023-12-01 Epub Date: 2023-12-11 DOI:10.1089/3dp.2021.0304
Alberto García-Collado, Pablo Eduardo Romero-Carrillo, Rubén Dorado-Vicente, Munish Kumar Gupta
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引用次数: 0

摘要

除了特有的阶梯效应外,短碳纤维被添加到熔融长丝制造部件中进行加固,也会显著恶化所产生的表面光洁度。关于这一主题,本研究旨在通过分析以下六个工艺参数的不同组合所对应的 2400 个算术平均粗糙度 Ra 测量值来完善现有知识:聚对苯二甲酸乙二酯(PETG)长丝中短碳纤维的重量含量 f、层高 h、表面成型角 θ、壁数 w、印刷速度 s 和挤出机直径 d。此外,在碳纤维含量达到 12% 时,粗糙度主要受阶梯效应的影响。因此,有可能获得粗糙度与非强化部件相似的强化部件。为了提取更多信息,还测试了不同的机器学习方法。使用随机森林算法建立的 Ra 预测模型的相关系数为 0.94,平均绝对误差为 2.026 μm。相比之下,J48 算法确定了一个参数组合(h = 0.1 mm、d = 0.6 mm 和 s = 30 mm/s),该组合与构建角度无关,在使用 20% 碳纤维 PETG 长丝时,Ra < 25 μm。为了检查模型,我们打印并测量了一个示例零件。结果,J48 算法正确地对粗糙度低(Ra < 25 μm)的表面进行了分类,而随机森林算法预测的 Ra 值平均相对误差小于 8%。
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Studying the Effect of Short Carbon Fiber on Fused Filament Fabrication Parts Roughness via Machine Learning.

Along with the characteristic staircase effect, short carbon fibers, added to reinforce Fused Filament Fabrication parts, can significantly worsen the resulting surface finishing. Concerning this topic, the present work intends to improve the existing knowledge by analyzing 2400 measurements of arithmetic mean roughness Ra corresponding to different combinations of six process parameters: the content by weight of short carbon fibers in polyethylene terephthalate glycol (PETG) filaments f, layer height h, surface build angle θ, number of walls w, printing speed s, and extruder diameter d. The collected measurements were represented by dispersion and main effect plots. These representations indicate that the most critical parameters are θ, f, and h. Besides, up to a carbon fiber content of 12%, roughness is mainly affected by the staircase effect. Hence, it would be likely to obtain reinforced parts with similar roughness to unreinforced ones. Different machine learning methods were also tested to extract more information. The prediction model of Ra using the Random Forest algorithm showed a correlation coefficient equal to 0.94 and a mean absolute error equal to 2.026 μm. In contrast, the J48 algorithm identified a combination of parameters (h = 0.1 mm, d = 0.6 mm, and s = 30 mm/s) that, independent of the build angle, provides a Ra < 25 μm when using a 20% carbon fiber PETG filament. An example part was printed and measured to check the models. As a result, the J48 algorithm correctly classified surfaces with low roughness (Ra < 25 μm), and the Random Forest algorithm predicted the Ra value with an average relative error of less than 8%.

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来源期刊
3D Printing and Additive Manufacturing
3D Printing and Additive Manufacturing Materials Science-Materials Science (miscellaneous)
CiteScore
6.00
自引率
6.50%
发文量
126
期刊介绍: 3D Printing and Additive Manufacturing is a peer-reviewed journal that provides a forum for world-class research in additive manufacturing and related technologies. The Journal explores emerging challenges and opportunities ranging from new developments of processes and materials, to new simulation and design tools, and informative applications and case studies. Novel applications in new areas, such as medicine, education, bio-printing, food printing, art and architecture, are also encouraged. The Journal addresses the important questions surrounding this powerful and growing field, including issues in policy and law, intellectual property, data standards, safety and liability, environmental impact, social, economic, and humanitarian implications, and emerging business models at the industrial and consumer scales.
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