用机器学习预测粘弹性油墨的喷墨行为

IF 2.8 4区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Seongju Kim, Raphaël Wenger, Olivier Bürgy, G. Balestra, Unyong Jeong, Sungjune Jung
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引用次数: 0

摘要

喷墨打印为增材制造技术提供了巨大的潜力。然而,预测喷射行为是具有挑战性的,因为工业中常用的功能性油墨的流变特性在依赖于Ohnesorge和Weber数字的印刷性图中被忽略了。我们提出了一个基于机器学习的喷射行为预测模型,该模型结合了Deborah数、Ohnesorge数和波形参数。制备了10种粘弹性油墨,测定了它们的存储模量和损耗模量,结果与麦克斯韦理论模型吻合较好。通过对麦克斯韦模型方程的分析,得到粘弹性油墨的弛豫时间,从而计算出粘弹性油墨的狄波拉数。我们利用水滴观测系统收集了各种油墨不同波形的喷射行为数据集。三种不同的机器学习模型被用来建立预测模型。通过对机器学习模型的预测精度进行比较,我们发现多层感知器的预测精度较好。最终的预测模型对基于波形参数的未知油墨具有较高的准确性,并且喷射行为与油墨性能之间的相关性是合理的。最后,通过所提出的粘弹性流体预测模型和所选择的工业打印头,我们开发了一个以Ohnesorge和Deborah数字为特征的打印能力图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting inkjet jetting behavior for viscoelastic inks using machine learning
Inkjet printing offers significant potential for additive manufacturing technology. However, predicting jetting behavior is challenging because the rheological properties of functional inks commonly used in the industry are overlooked in printability maps that rely on the Ohnesorge and Weber numbers. We present a machine learning-based predictive model for jetting behavior that incorporates the Deborah number, the Ohnesorge number, and the waveform parameters. Ten viscoelastic inks have been prepared and their storage modulus and loss modulus measured, showing good agreement with those obtained by the theoretical Maxwell model. With the relaxation time of the viscoelastic ink obtained by analyzing the Maxwell model equations, the Deborah number could be calculated. We collected a large data set of jetting behaviors of each ink with various waveforms using drop watching system. Three distinct machine learning models were employed to build predictive models. After comparing the prediction accuracy of the machine learning models, we found that multilayer perceptron showed outstanding prediction accuracy. The final predictive model exhibited remarkable accuracy for an unknown ink based on waveform parameters, and the correlation between jetting behavior and ink properties was reasonable. Finally, we developed a printability map characterized by the Ohnesorge and Deborah numbers through the proposed predictive model for viscoelastic fluids and the chosen industrial printhead.
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来源期刊
Flexible and Printed Electronics
Flexible and Printed Electronics MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
4.80
自引率
9.70%
发文量
101
期刊介绍: Flexible and Printed Electronics is a multidisciplinary journal publishing cutting edge research articles on electronics that can be either flexible, plastic, stretchable, conformable or printed. Research related to electronic materials, manufacturing techniques, components or systems which meets any one (or more) of the above criteria is suitable for publication in the journal. Subjects included in the journal range from flexible materials and printing techniques, design or modelling of electrical systems and components, advanced fabrication methods and bioelectronics, to the properties of devices and end user applications.
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