...
首页> 外文期刊>Procedia Manufacturing >In-situ Droplet Monitoring of Inkjet 3D Printing Process using Image Analysis and Machine Learning Models
【24h】

In-situ Droplet Monitoring of Inkjet 3D Printing Process using Image Analysis and Machine Learning Models

机译:原位喷墨3D打印过程的液滴监控使用图像分析和机器学习模型

获取原文

摘要

Additive manufacturing (AM) has yielded major innovations in the electronics, biomedical and energy domains. One of the AM techniques which has witnessed widespread use is the inkjet 3D printing (IJP). The IJP process fabricates parts by depositing colloidal liquid droplets on substrates. Despite its advantages, variations in input process parameters and fluid properties can have a profound impact on the print quality. This paper aims to address this issue by presenting a novel vision-based approach forin-situmonitoring of droplet formation. Further, a machine learning model was used to study the relationship between droplet attributes and droplet modes. A drop watcher camera was used to capture a sequence of videos obtained from different combinations of voltage and frequency. Custom source code was developed using python libraries to capture variations in droplet attributes (droplet size, velocity, aspect ratio, and presence of satellites) and their impact on the droplet modes (normal, satellite, and no-droplet) using computer vision. A backpropagation neural network mode (BPNN) was applied, with the droplet features as inputs, to classify output droplet modes. The BPNN classified droplet modes with 90% (high) accuracy. This research forms the basis for future development of digital twin model of inkjet 3D printing towards predictive analysis and process optimization.
机译:添加剂制造(AM)在电子,生物医学和能源域中产生了重大创新。目睹广泛使用的AM技术之一是喷墨3D打印(IJP)。 IJP工艺通过在基材上沉积胶体液滴来制造零件。尽管其优点,输入过程参数和流体性能的变化可以对打印质量产生深远的影响。本文旨在通过介绍一种基于视觉的方法托管液滴形成来解决这个问题。此外,机器学习模型用于研究液滴属性和液滴模式之间的关系。落景监视器相机用于捕获从电压和频率的不同组合获得的一系列视频。使用Python库开发自定义源代码,以捕获液滴属性的变化(液滴大小,速度,宽高比和卫星存在的存在)以及使用计算机视觉对液滴模式(正常,卫星和无液滴)的影响。应用BackPropagation神经网络模式(BPNN),液滴功能作为输入,分类输出液滴模式。 BPNN分类为90%(高)精度的液滴模式。本研究构成了喷墨3D印刷数字双胞胎模型的未来发展朝向预测分析和过程优化的基础。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号