Journal of Manufacturing and Materials Processing (Jun 2024)

Enriching Laser Powder Bed Fusion Part Data Using Category Theory

  • Yuchu Qin,
  • Shubhavardhan Ramadurga Narasimharaju,
  • Qunfen Qi,
  • Shan Lou,
  • Wenhan Zeng,
  • Paul J. Scott,
  • Xiangqian Jiang

DOI
https://doi.org/10.3390/jmmp8040130
Journal volume & issue
Vol. 8, no. 4
p. 130

Abstract

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Laser powder bed fusion (LPBF) is a promising metal additive manufacturing technology for producing functional components. However, there are still a lot of obstacles to overcome before this technology is considered mature and trustworthy for wider industrial applications. One of the biggest obstacles is the difficulty in ensuring the repeatability of process and the reproducibility of products. To tackle this challenge, a prerequisite is to represent and communicate the data from the part realisation process in an unambiguous and rigorous manner. In this paper, a semantically enriched LPBF part data model is developed using a category theory-based modelling approach. Firstly, a set of objects and morphisms are created to construct categories for design, process planning, part build, post-processing, and qualification. Twenty functors are then established to communicate these categories. Finally, an application of the developed model is illustrated via the realisation of an LPBF truncheon.

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