2022-Sustainable Industrial Processing Summit
SIPS2022 Volume 3 Horstemeyer Intl.Symp. Multiscale Materials Mechanics & Applications

Editors:F. Kongoli,E. Aifantis, A, Konstantinidis, D, Bammann, J. Boumgardner, K, Johnson, N, Morgan, R. Prabhu, A. Rajendran
Publisher:Flogen Star OUTREACH
Publication Year:2022
Pages:382 pages
ISBN:978-1-989820-38-4(CD)
ISSN:2291-1227 (Metals and Materials Processing in a Clean Environment Series)
CD-SIPS2022_Volume1
CD shopping page

    A physics-informed data-driven model for uncertainty quantification and reduction in metal additive manufacturing

    Lei Chen1;
    1UNIVERSITY OF MICHIGAN-DEARBORN, Dearborn, United States;
    Type of Paper: Regular
    Id Paper: 250
    Topic: 1

    Abstract:

    Uncertainty quantification (UQ) in metallic additive manufacturing (AM) has attracted tremendous interests in order to dramatically improve product reliability. Model-based UQ, which relies on the validity of a computational model, has been widely explored as a potential substitute for the time-consuming and expensive UQ solely based on experiments. However, its adoption in practical AM process requires the overcoming of two main challenges: (1) the inaccurate knowledge of uncertainty sources and (2) the intrinsic uncertainty associated with the computational model. Here we propose a novel data-driven framework to tackle these two challenges by combining high throughput physical simulations and limited experimental data. We first construct a machine learning (ML) model trained by high throughput physical simulations, for predicting the three-dimensional (3D) melt pool geometry and its uncertainty with respect to AM parameters and uncertainty sources. We then employ a novel sequential Bayesian calibration method to perform parameter calibration and model correction, by using experimental data from AM-Bench of National Institute of Standards and Technology (NIST). The application of the calibrated melt pool model to UQ of the porosity level, an important quality factor, of AM parts, demonstrates its potential use in AM quality control. The proposed UQ framework can be generally applicable to different AM processes, towards physics-based quality control of AM products.

    Keywords:

    Materials; Metals;

    Cite this article as:

    Chen L. (2022). A physics-informed data-driven model for uncertainty quantification and reduction in metal additive manufacturing. In F. Kongoli,E. Aifantis, A, Konstantinidis, D, Bammann, J. Boumgardner, K, Johnson, N, Morgan, R. Prabhu, A. Rajendran (Eds.), Sustainable Industrial Processing Summit SIPS2022 Volume 3 Horstemeyer Intl.Symp. Multiscale Materials Mechanics & Applications (pp. 167-168). Montreal, Canada: FLOGEN Star Outreach