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基于压电自感应的机器学习方法用于监测喷墨喷射状态。

Machine learning approach to monitor inkjet jetting status based on the piezo self-sensing.

作者信息

Phung Thanh Huy, Park Sang Hyeon, Kim Inyoung, Lee Taik-Min, Kwon Kye-Si

机构信息

Department of Mechatronics, Ho Chi Minh City University of Technology (HCMUT), 268 Ly Thuong Kiet Street, District 10, Ho Chi Minh City, 700000, Vietnam.

Vietnam National University Ho Chi Minh City (VNU-HCM), Linh Trung Ward, Thu Duc, Ho Chi Minh City, 700000, Vietnam.

出版信息

Sci Rep. 2023 Oct 23;13(1):18089. doi: 10.1038/s41598-023-45445-0.

Abstract

One of the advantages of inkjet printing in digital manufacturing is the ability to use multiple nozzles simultaneously to improve the productivity of the processes. However, the use of multiple nozzles makes inkjet status monitoring more difficult. The jetting nozzles must be carefully selected to ensure the quality of printed products, which is challenging for most inkjet processes that use multi-nozzles. In this article, we improved inkjet print head monitoring based on self-sensing signals by using machine learning algorithms. Specifically, supervised machine learning models were used to classify nozzle jetting conditions. For this purpose, the self-sensing signals were acquired, and the feature information was extracted for training. A vision algorithm was developed to label the nozzle status for classification. The trained models showed that the classification accuracy is higher than 99.6% when self-sensing signals are used for monitoring. We also proposed a so-called hybrid monitoring method using trained machine learning models, which divides the feature space into three regions based on predicted jetting probability: certain jetting, certain non-jetting, and doubt regions. Then, the nozzles with uncertain status in the doubt region can be verified by jet visualization to improve the accuracy and efficiency of the monitoring process.

摘要

喷墨打印在数字制造中的优势之一是能够同时使用多个喷嘴来提高工艺的生产率。然而,使用多个喷嘴会使喷墨状态监测变得更加困难。必须仔细选择喷射喷嘴以确保印刷产品的质量,这对于大多数使用多喷嘴的喷墨工艺来说是一项挑战。在本文中,我们通过使用机器学习算法改进了基于自感应信号的喷墨打印头监测。具体而言,使用监督式机器学习模型对喷嘴喷射条件进行分类。为此,获取自感应信号,并提取特征信息进行训练。开发了一种视觉算法来标记喷嘴状态以进行分类。训练后的模型表明,当使用自感应信号进行监测时,分类准确率高于99.6%。我们还提出了一种使用训练后的机器学习模型的所谓混合监测方法,该方法基于预测的喷射概率将特征空间划分为三个区域:确定喷射、确定不喷射和可疑区域。然后,可以通过喷射可视化来验证可疑区域中状态不确定的喷嘴,以提高监测过程的准确性和效率。

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