In-situ Controller Autotuning by Bayesian Optimization for Closed-loop Feedback Control of Laser Powder Bed Fusion Process
Baris Kavas, Efe C. Balta, Michael R. Tucker, Raamadaas Krishnadas,, Alisa Rupenyan, John Lygeros, Markus Bambach

TL;DR
This paper introduces Bayesian Optimization for automatic in-layer controller tuning in laser powder bed fusion, improving process stability and reducing overheating by optimizing controller parameters during manufacturing.
Contribution
It presents novel online and offline Bayesian Optimization methods for in-layer controller tuning in LPBF, demonstrating their effectiveness in experimental setups.
Findings
BO effectively tunes controllers, reducing overheating.
Partial porosity issues linked to laser power control.
First microstructural analysis of printed parts with in-layer control.
Abstract
Open-loop control of laser powder bed fusion (LPBF) additive manufacturing (AM) has enabled the production of complex, high-criticality parts for various industries. This method relies on static parameter sets from extensive experimentation and simulations, hoping they remain stable and defect-free in production. Closed-loop control of LPBF can further enhance process stability and reduce defects despite complex thermal histories, process noise, hardware drift, and unexpected perturbations. Controller performance depends on parameter tuning, traditionally a manual, expertise-driven process with no guarantee of optimal performance and limited transferability between systems. This study proposes Bayesian Optimization (BO) to automate in-layer controller tuning by leveraging LPBF's layer-to-layer repetitive nature. Two approaches are introduced: online tuning, adjusting parameters…
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Taxonomy
TopicsAdditive Manufacturing Materials and Processes
