Reduced order modeling via PGD for highly transient thermal evolutions in additive manufacturing
In this paper, a highly performing model order reduction technique called Proper Generalized Decomposition (PGD) is applied to the numerical modeling of highly transient non-linear thermal phenomena associated with additive manufacturing (AM) powder bed fabrication (PBF) processes. The manufacturing...
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Veröffentlicht in: | Computer methods in applied mechanics and engineering 2019-06, Vol.349, p.405-430 |
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Sprache: | eng |
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Zusammenfassung: | In this paper, a highly performing model order reduction technique called Proper Generalized Decomposition (PGD) is applied to the numerical modeling of highly transient non-linear thermal phenomena associated with additive manufacturing (AM) powder bed fabrication (PBF) processes. The manufacturing process allows for unprecedented design freedom but fabricated parts often suffer from lower quality mechanical properties associated with the fast transients and high temperature gradients during the localized melting-solidification process. For this reason, an accurate numerical model for the thermal evolutions is a major necessity. This work focuses on providing a low-cost/high accuracy prediction of the high gradient thermal field occurring in a material under the action of a concentrated moving laser source, while accounting for phase changes, material non-linearities and time and space-dependent boundary conditions. An extensive numerical simulation campaign shows that the use of PGD in this context enables a remarkable reduction in the total number of global matrix inversions (5 times less or better) compared to standard techniques when simulating realistic AM PBF scenarios.
•Numerical modeling of highly transient non-linear thermal phenomena.•Towards an effective numerical modeling of additive manufacturing.•Model Order Reduction enables low-cost/high accuracy predictions.•At least one order of magnitude faster than standard techniques.•Several and complex non-linearities are included. |
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ISSN: | 0045-7825 1879-2138 |
DOI: | 10.1016/j.cma.2019.02.033 |