Quality Prediction and Classification of Process Parameterization for Multi-Material Jetting by Means of Computer Vision and Machine Learning

IF 3.3 Q2 ENGINEERING, MANUFACTURING Journal of Manufacturing and Materials Processing Pub Date : 2024-01-01 DOI:10.3390/jmmp8010008
Armin Reckert, Valentin Lang, Steven Weingarten, Robert Johne, Jan-Hendrik Klein, Steffen Ihlenfeldt
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Abstract

Multi-Material Jetting (MMJ) is an additive manufacturing process empowering the printing of ceramics and hard metals with the highest precision. Given great advantages, it also poses challenges in ensuring the repeatability of part quality due to an inherent broader choice of built strategies. The addition of advanced quality assurance methods can therefore benefit the repeatability of part quality for widespread adoption. In particular, quality defects caused by improperly configured droplet overlap parameterizations, despite droplets themselves being well parameterized, constitute a major challenge for stable process control. This publication deals with the automated classification of the adequacy of process parameterization on green parts based on in-line surface measurements and their processing with machine learning methods, in particular the training of convolutional neural networks. To generate the training data, a demo part structure with eight layers was printed with different overlap settings, scanned, and labeled by process engineers. In particular, models with two convolutional layers and a pooling size of (6, 6) appeared to yield the best accuracies. Models trained only with images of the first layer and without the infill edge obtained validation accuracies of 90%. Consequently, an arbitrary section of the first layer is sufficient to deliver a prediction about the quality of the subsequently printed layers.
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利用计算机视觉和机器学习对多材料喷射工艺参数化进行质量预测和分类
多材料喷射(MMJ)是一种快速成型制造工艺,能够以最高精度打印陶瓷和硬金属。虽然它具有很大的优势,但由于其固有的制造策略选择范围更广,因此也给确保零件质量的可重复性带来了挑战。因此,增加先进的质量保证方法有利于提高零件质量的可重复性,从而实现广泛应用。特别是,尽管液滴本身的参数设置良好,但由于液滴重叠参数配置不当而导致的质量缺陷,对稳定的过程控制构成了重大挑战。本刊物介绍了基于在线表面测量和机器学习方法(特别是卷积神经网络的训练)对绿色部件工艺参数化的适当性进行自动分类的方法。为了生成训练数据,我们使用不同的重叠设置打印了一个具有八层结构的演示零件,对其进行了扫描,并由工艺工程师进行了标注。其中,具有两个卷积层和池化大小为(6,6)的模型似乎产生了最好的准确度。仅使用第一层图像且不使用填充边缘的模型可获得 90% 的验证准确率。因此,第一层的任意部分都足以预测后续印刷层的质量。
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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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