Deep-Learned Generators of Porosity Distributions Produced During Metal Additive Manufacturing

33 Pages Posted: 15 May 2022

See all articles by Odinakachukwu Francis Ogoke

Odinakachukwu Francis Ogoke

Carnegie Mellon University

Kyle Johnson

Sandia National Laboratories

Michael Glinsky

Sandia National Laboratories

Christopher Martin Laursen

Sandia National Laboratories

Sharlotte Kramer

Sandia National Laboratories

Amir Barati Farimani

Carnegie Mellon University

Abstract

Laser Powder Bed Fusion has become a widely adopted method for metal Additive Manufacturing (AM) due to its ability to mass produce complex parts with increased local control. However, AM produced parts can be subject to undesirable porosity, negatively influencing the properties of printed components. Thus, controlling porosity is integral for creating effective parts. A precise understanding of the porosity distribution is crucial for accurately simulating potential fatigue and failure zones. Previous research on generating synthetic porous microstructures have succeeded in generating parts with high density, isotropic porosity distributions but are often inapplicable to cases with sparser, boundary-dependent pore distributions. Our work bridges this gap by providing a method that considers these constraints by deconstructing the generation problem into its constitutive parts. A framework is introduced that combines Generative Adversarial Networks with Mallat Scattering Transform-based autocorrelation methods to construct novel realizations of the individual pore geometries and surface roughness, then stochastically reconstruct them to form realizations of a porous printed part. The generated parts are compared to the existing experimental porosity distributions based on statistical and dimensional metrics, such as nearest neighbor distances, pore volumes, pore anisotropies and scattering transform based auto-correlations.

Keywords: Deep learning, Microstructural analysis, Generative Adversarial Networks, Porosity

Suggested Citation

Ogoke, Odinakachukwu Francis and Johnson, Kyle and Glinsky, Michael and Laursen, Christopher Martin and Kramer, Sharlotte and Barati Farimani, Amir, Deep-Learned Generators of Porosity Distributions Produced During Metal Additive Manufacturing. Available at SSRN: https://ssrn.com/abstract=4110396 or http://dx.doi.org/10.2139/ssrn.4110396

Odinakachukwu Francis Ogoke

Carnegie Mellon University ( email )

Pittsburgh, PA 15213-3890
United States

Kyle Johnson

Sandia National Laboratories ( email )

P.O. Box 969
Livermore, CA 94551
United States

Michael Glinsky

Sandia National Laboratories ( email )

P.O. Box 969
Livermore, CA 94551
United States

Christopher Martin Laursen

Sandia National Laboratories ( email )

P.O. Box 969
Livermore, CA 94551
United States

Sharlotte Kramer

Sandia National Laboratories ( email )

P.O. Box 969
Livermore, CA 94551
United States

Amir Barati Farimani (Contact Author)

Carnegie Mellon University ( email )

Pittsburgh, PA 15213-3890
United States

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