基于变压器神经网络的自上而下大桶光聚合过程实时监控和直接可视化

IF 10.3 1区 工程技术 Q1 ENGINEERING, MANUFACTURING
Tangsiyuan Zhang, Xinyu Cao, Shuming Zhang, Yuhang Chen, YeTing Huang, Min Yu, Xiaoyu Han
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引用次数: 0

摘要

自上而下大桶光聚合(TVPP)技术以其成本低、速度快、精度高的特点,在各行各业的新产品开发和制造中得到迅速发展。TVPP 在大尺寸、高度定制化和中批量生产方面的强大能力使其成为当今最流行的增材制造技术之一。一种有效的实时过程监控方法可以及时反馈零件缺陷,尤其是在打印失败的情况下。大型三维物体通常被分割成较小的部件,以降低故障风险和材料浪费,从而在牺牲部件完整性的同时增加了制造的复杂性。在此,我们构建了基于变压器神经网络的实时可视化过程监控(TransRV),作为提高制造性能和质量的有效方法。针对从液体光刻胶周围可视化捕捉实时制造层这一挑战,我们初步构建了一个实时数据集,其中包括原位标准参考图像和实时掩膜制造层。在数据集的基础上,我们开发了一种新型神经网络模型,通过引入多重注意机制和采用 Swin Transformer 的架构,对捕捉到的图像进行有效分割。实验结果表明,通过我们设计的神经网络模型,可以对印刷过程中实时拍摄的图像进行准确分割。mIoU 是平均交集与联合的比值,被认为是测试集中的主要评价指标。mIoU 的值高达 96.14 %。在此基础上,我们进一步构建了用于 TVPP 过程质量评估和缺陷检测的多重质量监测指标。实践证明,该指标可实现实时准确识别和及时反馈。通常在 TVPP 过程中出现的典型缺陷,如印刷部件整体塌陷和部分缺失,都会被及时发现并停止印刷。显然,这项工作中开发的方法为有效消除材料浪费和大幅提高生产率提供了一种可行的策略。最重要的是,所提出的实时过程监控器为广泛应用的 TVPP 生产过程中的质量控制和缺陷检测提供了巨大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transformer neural network based real-time process monitoring and direct visualization of top-down vat photopolymerization
Top-down vat photopolymerization (TVPP) technology is rapidly developing to all of the industries for new products development and manufacturing due to its low cost, fast speed and high precision. The powerful capability of TVPP for large size, highly customized and medium batch production renders it one of the most popular additive manufacturing techniques today. An effective real-time process monitoring method providing timely feedback for part defects, especially in case of print failure, is highly desirable but still rarely reported for TVPP 3D printing. Large 3D objects are normally segmented into smaller parts to reduce the risk of failure and materials waste, resulting in the complexity of building while sacrificing component integrity. Herein, a transformer neural network based real-time and visualized process monitoring (TransRV) was constructed as an effective method to enhance the manufacturing performance and quality. Upon the challenge of visualizing and capturing the real-time fabricated layer from the around liquid photoresin, a real-time dataset including in-situ standard reference images and real-time mask fabricated layers was initially constructed. Based on the dataset foundation, we then developed a novel neural network model for effective segmentation of captured images by introducing multiple attention mechanisms and adopting the architecture of Swin Transformer. The experimental results showed that the real-time taken images during the printing process could be accurately segmented through our designed neural network model. The mIoU, which is the ratio of mean intersection over union, was considered as the main evaluation index in the test set. And the value of mIoU could achieve as high as 96.14 %. On the basis of this result, we further constructed a multiple quality monitoring indicator for quality assessment and defect detection of TVPP process. It was proved that this indicator enabled real-time accurate recognition and in time feedback. The typical defects such as overall collapse and partial missing of the printed parts that usually occur during TVPP process would be timely detected and subsequently stopped printing. Apparently, the methods developed in this work provide a promising strategy to effectively eliminate the material waste and highly improve the productivity. Most importantly, the presented real-time process monitor holds the great potential for quality control and defect detection of widespread TVPP manufacturing.
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来源期刊
Additive manufacturing
Additive manufacturing Materials Science-General Materials Science
CiteScore
19.80
自引率
12.70%
发文量
648
审稿时长
35 days
期刊介绍: Additive Manufacturing stands as a peer-reviewed journal dedicated to delivering high-quality research papers and reviews in the field of additive manufacturing, serving both academia and industry leaders. The journal's objective is to recognize the innovative essence of additive manufacturing and its diverse applications, providing a comprehensive overview of current developments and future prospects. The transformative potential of additive manufacturing technologies in product design and manufacturing is poised to disrupt traditional approaches. In response to this paradigm shift, a distinctive and comprehensive publication outlet was essential. Additive Manufacturing fulfills this need, offering a platform for engineers, materials scientists, and practitioners across academia and various industries to document and share innovations in these evolving technologies.
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