Virtual and Physical Prototyping (Jan 2023)

Virtual surface morphology generation of Ti-6Al-4V directed energy deposition via conditional generative adversarial network

  • Taekyeong Kim,
  • Jung Gi Kim,
  • Sangeun Park,
  • Hyoung Seop Kim,
  • Namhun Kim,
  • Hyunjong Ha,
  • Seung-Kyum Choi,
  • Conrad Tucker,
  • Hyokyung Sung,
  • Im Doo Jung

DOI
https://doi.org/10.1080/17452759.2022.2124921
Journal volume & issue
Vol. 18, no. 1

Abstract

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The core challenge in directed energy deposition is to obtain high surface quality through process optimisation, which directly affects the mechanical properties of fabricated parts. However, for expensive materials like Ti-6Al-4V, the cost and time required to optimise process parameters can be excessive in inducing good surface quality. To mitigate these challenges, we propose a novel method with artificial intelligence to generate virtual surface morphology of Ti-6Al-4V parts by given process parameters. A high-resolution surface morphology image generation system has been developed by optimising conditional generative adversarial networks. The developed virtual surface matches experimental cases well with an Fréchet inception distance score of 174, in the range of accurate matching. Microstructural analysis with parts fabricated with artificial intelligence guidance exhibited less textured microstructural behaviour on the surface which reduces the anisotropy in the columnar structure. This artificial intelligence guidance of virtual surface morphology can help to obtain high-quality parts cost-effectively.

Keywords