Affiliation:
1. State University of New York at Binghamton
Abstract
Additive manufacturing (AM) is a new technology for fabricating products straight from a 3D digital model, which can lower costs, minimize waste, and increase building speed while maintaining acceptable quality. However, it still suffers from low dimensional accuracy and a lack of geometrical quality standards. Moreover, there is a need for a robust AM configuration to perform in-situ inspections during the fabrication. This work established a 3D printing-scanning setup to collect 3D point cloud data of printed parts and then compare them with nominal 3D point cloud data to quantify the deviation in all X, Y, and Z directions. Specifically, this work aims at predicting the anticipated deviation along the Z direction by applying a deep learning-based prediction model. An experiment with regard to a human “Knee” prototype fabricated by Fused Deposition Modeling (FDM) is conducted to show the effectiveness of the proposed methods.
Publisher
Trans Tech Publications, Ltd.
Subject
Mechanical Engineering,Mechanics of Materials,Condensed Matter Physics,General Materials Science
Reference13 articles.
1. Cotteleer, M. and Joyce, J., 2014. 3D opportunity: Additive manufacturing paths to performance, innovation, and growth. Deloitte Review, 14, pp.5-19.
2. Wong, K.V. and Hernandez, A., 2012. A review of additive manufacturing. International scholarly research notices, 2012.
3. Kim, H., Lin, Y. and Tseng, T.L.B., 2018. A review on quality control in additive manufacturing. Rapid Prototyping Journal.
4. Kuan, T., Leong, S., & Wai Yee, Y. (2020). Microstructure modelling for metallic additive manufacturing. Nanyang Technological University, Singapore. Published
5. Parametric error modeling and software error compensation for rapid prototyping;Tong;Rapid Prototyping Journal
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