ADDOPT: AN ADDITIVE MANUFACTURING OPTIMAL CONTROL FRAMEWORK DEMONSTRATED IN MINIMIZING LAYER-LEVEL THERMAL VARIANCE IN ELECTRON BEAM POWDER BED FUSION

The large temporal and spatial variations in temperature that can occur in layer-wise metal additive manufacturing (AM) lead to thermal excursions, resulting in property variations and defects. These variations cannot always be fully mitigated by simple static parameter search. To address this chall...

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Veröffentlicht in:Journal of manufacturing science and engineering 2024-12, p.1-13
Hauptverfasser: Khrenov, Mikhail, Frieden Templeton, William, Prabha Narra, Sneha
Format: Artikel
Sprache:eng
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Zusammenfassung:The large temporal and spatial variations in temperature that can occur in layer-wise metal additive manufacturing (AM) lead to thermal excursions, resulting in property variations and defects. These variations cannot always be fully mitigated by simple static parameter search. To address this challenge, we propose a general approach based on modeling AM processes on the part-scale in state-space and framing AM process planning as a numerical optimal control problem. We demonstrate this approach on the problem of minimizing thermal variation in a given layer in the electron beam powder bed fusion (EB-PBF) AM process, and are able to compute globally optimal dynamic process plans. These optimized process plans are then evaluated in simulation, achieving an 87% and 86% reduction in cumulative variance compared to random spot melting and a uniform power field respectively, and are further validated in experiment. This one-shot feedforward planning approach expands the capabilities of AM technology by minimizing the need for iterative experiments and simulations to achieve process optimization. Further, this work opens the possibility for the application of optimal control theory to part-scale optimization and control in AM.
ISSN:1087-1357
DOI:10.1115/1.4067325