Computational models for simulating physical phenomena during laser-based powder bed fusion additive manufacturing (L-PBF AM) processes are essential for enhancing our understanding of these phenomena, enable process optimization, and accelerate qualification and certification of AM materials and parts. It is a well-known fact that such models typically involve multiple sources of uncertainty that originate from different sources such as model parameters uncertainty, or model/code inadequacy, among many others. Uncertainty quantification (UQ) is a broad field that focuses on characterizing such uncertainties in order to maximize the benefit of these models. Although UQ has been a center theme in computational models associated with diverse fields such as computational fluid dynamics and macro-economics, it has not yet been fully exploited with computational models for advanced manufacturing. The current study presents one among the first efforts to conduct uncertainty propagation (UP) analysis in the context of L-PBF AM. More specifically, we present a generalized polynomial chaos expansions (gPCE) framework to assess the distributions of melt pool dimensions due to uncertainty in input model parameters. We develop the methodology and then employ it to validate model predictions, both through benchmarking them against Monte Carlo (MC) methods and against experimental data acquired from an experimental testbed.
Skip Nav Destination
Article navigation
December 2018
Research-Article
Uncertainty Propagation Analysis of Computational Models in Laser Powder Bed Fusion Additive Manufacturing Using Polynomial Chaos Expansions
Gustavo Tapia,
Gustavo Tapia
Industrial and Systems Engineering Department,
Texas A&M University,
College Station, TX 77843
e-mail: gtapia@tamu.edu
Texas A&M University,
College Station, TX 77843
e-mail: gtapia@tamu.edu
Search for other works by this author on:
Wayne King,
Wayne King
Physical and Life Sciences Directorate,
Lawrence Livermore National Laboratory,
Livermore, CA 94550
e-mail: weking@llnl.gov
Lawrence Livermore National Laboratory,
Livermore, CA 94550
e-mail: weking@llnl.gov
Search for other works by this author on:
Luke Johnson,
Luke Johnson
Materials Science and Engineering Department,
Texas A&M University,
College Station, TX 77843
Texas A&M University,
College Station, TX 77843
Search for other works by this author on:
Raymundo Arroyave,
Raymundo Arroyave
Materials Science and Engineering Department,
Texas A&M University,
College Station, TX 77843
Texas A&M University,
College Station, TX 77843
Search for other works by this author on:
Ibrahim Karaman,
Ibrahim Karaman
Materials Science and Engineering Department,
Texas A&M University,
College Station, TX 77843
Texas A&M University,
College Station, TX 77843
Search for other works by this author on:
Alaa Elwany
Alaa Elwany
Industrial and Systems Engineering Department,
Texas A&M University,
College Station 77843, TX
e-mail: elwany@tamu.edu
Texas A&M University,
College Station 77843, TX
e-mail: elwany@tamu.edu
Search for other works by this author on:
Gustavo Tapia
Industrial and Systems Engineering Department,
Texas A&M University,
College Station, TX 77843
e-mail: gtapia@tamu.edu
Texas A&M University,
College Station, TX 77843
e-mail: gtapia@tamu.edu
Wayne King
Physical and Life Sciences Directorate,
Lawrence Livermore National Laboratory,
Livermore, CA 94550
e-mail: weking@llnl.gov
Lawrence Livermore National Laboratory,
Livermore, CA 94550
e-mail: weking@llnl.gov
Luke Johnson
Materials Science and Engineering Department,
Texas A&M University,
College Station, TX 77843
Texas A&M University,
College Station, TX 77843
Raymundo Arroyave
Materials Science and Engineering Department,
Texas A&M University,
College Station, TX 77843
Texas A&M University,
College Station, TX 77843
Ibrahim Karaman
Materials Science and Engineering Department,
Texas A&M University,
College Station, TX 77843
Texas A&M University,
College Station, TX 77843
Alaa Elwany
Industrial and Systems Engineering Department,
Texas A&M University,
College Station 77843, TX
e-mail: elwany@tamu.edu
Texas A&M University,
College Station 77843, TX
e-mail: elwany@tamu.edu
1Corresponding author.
Manuscript received November 8, 2017; final manuscript received July 30, 2018; published online October 5, 2018. Assoc. Editor: Sam Anand.
J. Manuf. Sci. Eng. Dec 2018, 140(12): 121006 (12 pages)
Published Online: October 5, 2018
Article history
Received:
November 8, 2017
Revised:
July 30, 2018
Citation
Tapia, G., King, W., Johnson, L., Arroyave, R., Karaman, I., and Elwany, A. (October 5, 2018). "Uncertainty Propagation Analysis of Computational Models in Laser Powder Bed Fusion Additive Manufacturing Using Polynomial Chaos Expansions." ASME. J. Manuf. Sci. Eng. December 2018; 140(12): 121006. https://doi.org/10.1115/1.4041179
Download citation file:
Get Email Alerts
Cited By
Related Articles
Nonlinear Energy Sink With Uncertain Parameters
J. Comput. Nonlinear Dynam (July,2006)
A Polynomial Chaos-Based Kalman Filter Approach for Parameter Estimation of Mechanical Systems
J. Dyn. Sys., Meas., Control (November,2010)
State Uncertainty Propagation in the Presence of Parametric Uncertainty and Additive White Noise
J. Dyn. Sys., Meas., Control (September,2011)
Probabilistic Modeling of Flow Over Rough Terrain
J. Fluids Eng (March,2002)
Related Proceedings Papers
Related Chapters
The Applications of the Cloud Theory in the Spatial DMKD
International Conference on Electronics, Information and Communication Engineering (EICE 2012)
A Case for Agile
Fundamentals of Agile Project Management: An Overview
Ultra High-Speed Microbridge Chaos Domain
Intelligent Engineering Systems Through Artificial Neural Networks, Volume 17