Uncertainty Quantification in Metallic Additive Manufacturing Through Physics-Informed Data-Driven Modeling

被引:0
|
作者
Zhuo Wang
Pengwei Liu
Yanzhou Ji
Sankaran Mahadevan
Mark F. Horstemeyer
Zhen Hu
Lei Chen
Long-Qing Chen
机构
[1] Mississippi State University,Department of Mechanical Engineering
[2] Hunan University,State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body
[3] The Pennsylvania State University,Department of Materials Science and Engineering
[4] Vanderbilt University,Department of Civil and Environmental Engineering
[5] University of Michigan-Dearborn,Department of Industrial and Manufacturing Systems Engineering
[6] University of Michigan-Dearborn,Department of Mechanical Engineering
来源
JOM | 2019年 / 71卷
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摘要
The complicated metal-based additive manufacturing (AM) process involves various sources of uncertainty, leading to variability in AM products. For comprehensive uncertainty quantification (UQ) of AM processes, we present a physics-informed data-driven modeling framework, in which multilevel data-driven surrogate models are constructed based on extensive computational data obtained by multiscale multiphysics AM models. It starts with computationally inexpensive surrogate models for which the uncertainty can be readily quantified, followed by global sensitivity analysis for comprehensive UQ study. Using AM-fabricated Ti-6Al-4V components as examples, this study demonstrates the capability of the proposed data-driven UQ framework for efficient investigation of uncertainty propagation from process parameters to material microstructures, then to macrolevel mechanical properties through a combination of advanced AM multiphysics simulations and data-driven surrogate modeling. Model correction and parameter calibration for the constructed surrogate models using limited amounts of experimental data are discussed.
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页码:2625 / 2634
页数:9
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