Authors
Yifu Li, Hongyue Sun, Xinwei Deng, Chuck Zhang, Hsu-Pin Wang, Ran Jin
Publication date
2020/3/3
Journal
IISE Transactions
Volume
52
Issue
3
Pages
321-333
Publisher
Taylor & Francis
Description
Additive manufacturing (AM) has advantages in terms of production cycle time, flexibility, and precision compared with traditional manufacturing. Spatial data, collected from optical cameras or in situ sensors, are widely used in various AM processes to quantify the product quality and reduce variability. However, it is challenging to extract useful information and features from spatial data for modeling, because of the increasing spatial resolutions and feature complexities due to the highly diversified nature of AM processes. Motivated by the aerosol jet® printing process in printed electronics, we propose a smooth spatial variable selection procedure to extract meaningful predictors from spatial contrast information in high-definition microscopic images to model the resistances of printed wires. The proposed method does not rely on extensive feature engineering, and has the generality to be applied to a variety of spatial …
Total citations
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