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可编程热响应自变形结构的设计与性能

Programmable Thermo-Responsive Self-Morphing Structures Design and Performance.

作者信息

Pandeya Surya Prakash, Zou Sheng, Roh Byeong-Min, Xiao Xinyi

机构信息

Mechanical and Manufacturing Engineering Department, Miami University, Oxford, OH 45056, USA.

School of Transportation and Logistics Engineering, Wuhan University of Technology, Wuhan 430063, China.

出版信息

Materials (Basel). 2022 Dec 8;15(24):8775. doi: 10.3390/ma15248775.

Abstract

Additive manufacturing (AM), also known as 3D printing, was introduced to design complicated structures/geometries that overcome the manufacturability limitations of traditional manufacturing processes. However, like any other manufacturing technique, AM also has its limitations, such as the need of support structures for overhangs, long build time etc. To overcome these limitations of 3D printing, 4D printing was introduced, which utilizes smart materials and processes to create shapeshifting structures with the external stimuli, such as temperature, humidity, magnetism, etc. The state-of-the-art 4D printing technology focuses on the "" of the 4D prints through the multi-material variability. However, the quantitative morphing analysis is largely absent in the existing literature on 4D printing. In this research, the inherited material anisotropic behaviors from the AM processes are utilized to drive the morphing behaviors. In addition, the quantitative morphing analysis is performed for designing and controlling the shapeshifting. A material-process-performance 4D printing prediction framework has been developed through a novel dual-way multi-dimensional machine learning model. The morphing evaluation metrics, bending angle and curvature, are obtained and archived at 99% and 93.5% , respectively. Based on the proposed method, the material and production time consumption can be reduced by around 65-90%, which justifies that the proposed method can re-imagine the digital-physical production cycle.

摘要

增材制造(AM),也称为3D打印,被引入用于设计复杂的结构/几何形状,以克服传统制造工艺在可制造性方面的限制。然而,与任何其他制造技术一样,增材制造也有其局限性,例如悬垂部分需要支撑结构、制造时间长等。为了克服3D打印的这些局限性,人们引入了4D打印,它利用智能材料和工艺,通过温度、湿度、磁性等外部刺激来创建可变形结构。最先进的4D打印技术通过多材料可变性专注于4D打印的“ ”。然而,在现有的4D打印文献中,定量变形分析在很大程度上是缺失的。在本研究中,利用增材制造过程中固有的材料各向异性行为来驱动变形行为。此外,还进行了定量变形分析,以设计和控制形状变化。通过一种新颖的双向多维机器学习模型,开发了一个材料-工艺-性能4D打印预测框架。获得了变形评估指标弯曲角度和曲率,其准确率分别为99%和93.5%。基于所提出的方法,材料和生产时间消耗可减少约65-90%,这证明所提出的方法可以重新构想数字物理生产周期。 (原文此处“”内容缺失,无法完整准确翻译)

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d593/9781905/0f97124841d5/materials-15-08775-g001.jpg

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